reports of the ministry of the environment 14en | 2015 ISBN 978-952-11-4439-4 (PDF) ISSN 1796-170X (verkkoj.) MINISTRY OF THE ENVIRONMENT ESGreenBelt A preliminary study on spatial data and analysis methods for assessing the ecosystem services and connectivity of the protected areas network of the Green Belt of Fennoscandia ES G re e n B e lt MINISTRY OF THE ENVIRONMENT Pekka Itkonen, Arto Viinikka, Vuokko Heikinheimo and Leena Kopperoinen Et dipit lummodit veliquisl etum nostinim ver si. Rud delissit ut pratue modio exerat nulputatet nullandrem delestrud magna aliquat wiscidunt utat. Quipsumsan hendrer iustrud magna feuissequam nulputat diat. It accum volenit nostie molore mincidunt nos elent la facincip euismod olorem vel ulla ad duisit lore min exeraesequat delit nummodignibh exerat aci blam, susto estio cor augait accum num delit ing erciliquis nostin et, corem vulputet lut praesequam, quam, velesed mod te veliqui blan vel ing elenis alis esent dolobore ea at. Equat. 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Dunt nonsendre consectem quip et, vel utat augue ming ea facipsummy nosto do del ilisi. reports of the ministry of the environment 14en | 2015 ESGreenBelt A preliminary study on spatial data and analysis methods for assessing the ecosystem services and connectivity of the protected areas network of the Green Belt of Fennoscandia Helsinki 2015 MINISTRY OF THE ENVIRONMENT Pekka Itkonen, Arto Viinikka, Vuokko Heikinheimo and Leena Kopperoinen Reports of the Ministry of the Environment 14en | 2015 Ministry of the Environment Department of the Natural Environment Layout: Government Administration Department / Marianne Laune The publication is available on the internet: www.ym.fi/julkaisut Helsinki 2015 ISBN 978-952-11-4439-4 (PDF) ISSN 1796-170X (online) 3Reports of the Ministry of the Environment 14en | 2015 Contents 1 Introduction.............................................................................................. 5 2 Methods for assessing ecosystem services and connectivity ............. 7 2.1 Ecosystem services – concepts and definitions............................................7 2.2 Analyzing the supply of ecosystem services...............................................9 2.3 Analyzing the demand for ecosystem services.........................................11 2.4 Connectivity – concepts and definitions.....................................................13 2.5 Analyzing connectivity – a review of methods......................................... 16 2.5.1 Analyzing structural connectivity...................................................... 16 2.5.2 Analyzing potential connectivity....................................................... 18 2.5.3 Analyzing actual connectivity ........................................................... 20 2.6 Landscape prioritization from the perspective of biodiversity (Zonation)..........................................................................................................21 2.7 Summary of methods.....................................................................................22 3 S patial data for assessing ecosystem services, biodiversity and connectivity............................................................................................ 26 3.1 Background.......................................................................................................26 3.2 Reviewed cross-border datasets...................................................................27 3.3 Reviewed Finnish datasets............................................................................29 3.4 Reviewed Russian datasets...........................................................................39 3.5 Reviewed Norwegian datasets.....................................................................41 3.6 Reviewed regional datasets – case Kainuu................................................41 3.7 List of contacted people..................................................................................42 4 O utline and recommendations for conducting a full-scale assessment of the Green Belt of Fennoscandia ................................ 44 5 References .............................................................................................. 51 Appendix: The reviewed datasets..........................................................................54 Documentation Page ..................................................................................................66 Kuvailulehti.......................................................................................................................67 4 Reports of the Ministry of the Environment 14en | 2015 5Reports of the Ministry of the Environment 14en | 2015 1 Introduction Extending from the Barents Sea to the Baltic Sea, the Green Belt of Fennoscandia (GBF) forms an ecological network located in the territory of three neighbouring countries: Finland, Norway and Russia. The core of the GBF consists of the established and planned protected areas along the border areas. The GBF is the northernmost part of the European Green Belt, a Pan-European ecological network that connects the Barents region to the Balkans. A Memorandum of Understanding between Finland, Norway and Russia was signed in 2010 to facilitate sustainable trans-boundary co- operation and development considering the GBF. The GBF has the potential to become an international model area of successful cross-border nature conservation. Lots of valuable information exists on the protect- ed areas and their biodiversity that can be used for the further development of the conservation area network. The core structure of the GBF consists of the conservation sites and other high value nature areas. In order to safeguard biodiversity, also other parts of the green infrastructure such as the areas between the protected areas are of a high importance. In addition to its conservation value, the GBF is valuable for the provision of many ecosystem services on a local, regional and global scale. The region provides many possibilities also for sustainable economic activities – especially for tourism where the local nature and local cultures play a vital role in attracting visitors into the area. The ecosystem service approach provides a framework for observing multiple natural resources in a holistic way. A holistic approach is needed in order to supple- ment the existing knowledge base on the green infrastructure of the region. A broader knowledge base enables the development of the GBF as a whole so that the multi- ple social, economic and ecological benefits are accessible to people in and around the border zone. For example, sustainable industrial and commercial activities can be developed while safeguarding biodiversity and the multiple ecosystem services within the region. Multiple aspects of the Green Belt of Fennoscandia can be studied with the help of spatially explicit data, geographic information systems (GIS) and related methods. Scientific knowledge in this field of study is continuously increasing, and there is currently no single established method for the study of ecosystem services and con- nectivity. The choice of method is affected by the scale of observation, the goals and information requirements of a specific project, and most restrictively by data availabil- ity. In order to deliver a concise assessment of the whole Green Belt of Fennoscandia, consistent data of sufficient quality is needed across the whole study area. In addition, to conduct a good quality assessment of the GBF, international cooperation among different organizations and experts is needed. The goal of this study is to give insight on the existing and suitable sources of spatial data and the appropriate methods for analysing ecosystem services of the GBF and the connectivity of the protected area network. In addition, recommendations are given 6 Reports of the Ministry of the Environment 14en | 2015 and a suggestive outline is drafted for a full scale assessment of the whole region. In Section 2 of this report, the concepts of ecosystem services and connectivity are introduced and suitable methods for analysing ecosystem services and connectivity are reviewed. In Section 3, sources of spatial data are specified. Section 4 contains recommendations for suitable data and methods for analysing the connectivity and ecosystem services of the Green Belt of Fennoscandia. 7Reports of the Ministry of the Environment 14en | 2015 2 Methods for assessing ecosystem services and connectivity In this part, the concepts of 1) ecosystem services and 2) connectivity are clarified and appropriate existing methods for assessing these aspects of the GBF are reviewed. The review is based on results from recent reports and relevant scientific literature. Based on the results of this part, further recommendations for the most suitable methods for assessing the GBF are made in the concluding section of this report. 2.1 Ecosystem services – concepts and definitions Ecosystem services are the various direct and indirect contributions to human well-be- ing by ecosystems. According to the Common International Classification of Ecosys- tem Services (CICES) (Haines-Young and Potschin, 2013), there are three broad cat- egories of ecosystem services: provisioning services, regulating and maintenance services and cultural ecosystem services. Provisioning services are the tangible material goods that ecosystems provide, such as food, water and raw materials. Regulating and maintenance services refer to ecosystem processes that are crucial for human life and well-being: carbon sequestration, water cycle and pollination, for example. Cultural ecosystem services are immaterial and experiential by nature – they provide mental, psychological, spiritual, religious, or some other form of satisfaction through physical activity and/or sensory experiences. Since the Millennium Ecosystem Assessment (MA, 2005) several classifications for ecosystem services have been presented. At the moment, the Common International Classification of Ecosystem Services (CICES) developed for the natural capital accounting in EU Member States is widely used in Europe (Table 1). The ecosystem service cascade model (Haines-Young and Potschin, 2010) is a schematic illustration of how ecosystem services are produced and how the benefits “flow” to people. Figure 1 is based on the five elements of the cascade model: eco- system structure (in the figure: biodiversity), functions, services, benefits (human well-being), and values. The first two components relate to the supply of ecosystem services, while the last two components are linked to the demand for ecosystem ser- vices by people and the society. The ecosystem structure refers to all ecosystems and is thus closely related with the concept of green infrastructure. Green infrastructure is the network of natural and semi-natural areas, features and green spaces in rural and urban, terrestrial, freshwater, coastal and marine ar- eas, which together enhance ecosystem health and resilience, contribute to biodi- versity conservation and benefit human populations through the maintenance and enhancement of ecosystem services (Naumann et al., 2011). In addition, it can be regarded as a conceptual tool for developing a strategically planned network of the 8 Reports of the Ministry of the Environment 14en | 2015 above-mentioned components, specifically designed and managed to deliver a wide range of ecosystem services (European Commission, 2013). In contrast to usually single-purpose grey infrastructure, green infrastructure can offer several benefits simultaneously, that is, it is multifunctional. Table 1. Ecosystem Servicesa Section Ecosystem services group Pr ov is io ni ng Agricultural and aquacultural products Wild plants, animals and their outputs Surface and ground water for drinking Surface and ground water for non-drinking purposes Materials from plants, algae and animals and genetic materials from all biota Biomass-based energy sources (and animal-based mechanical energy) R eg ul at in g an d m ai nt en an ce Mediation of waste and toxics Mediation of smell, noise and visual impacts Mass stabilization and control of erosion rates, buffering and attenuation of mass flows Hydrological cycle and flood protection Mediation of air flows Pollination and seed dispersal Maintenance of nursery populations and habitats, gene pool protection Pest and disease control Soil formation and composition Maintenance of chemical condition of waters Global climate regulation Micro and regional climate regulation C ul tu ra l Recreational use of nature Nature as a site and subject matter for research and of education Aesthetics and cultural heritage Spiritual, sacred, symbolic or emblematic meanings of nature Existence and bequest values of nature aModified from the Common International Classification of Ecosystem Services (CICES) v.4.3 (Haines-Young and Potschin, 2013) by Itkonen & Kopperoinen. Biodiversity is often valued and protected for its own sake; it has an intrinsic value. The ecosystem service approach takes into account humans and their needs by point- ing out the benefits that ecosystems provide for people. Safeguarding biodiversity is seen as crucial for ecosystem resilience and the sustained flow of ecosystem services. However, also areas having lower biodiversity provide ecosystem services, as not all services necessarily depend on diversity of species and biotopes. For example, pervi- ous land surface need not be rich in biodiversity to be able to infiltrate water. All in all, this does not mean that the importance of protecting and enhancing biodiversity in different ecosystems should be neglected. There is no knowledge on a minimum level of biodiversity which would ensure long-term functioning of ecosystems. More diverse ecosystems are more resilient and therefore have better adaptive capacity when facing disturbance and change caused by nature itself or people. 9Reports of the Ministry of the Environment 14en | 2015 Policy and decision-making b BIODIVERSITY • Genotypes • Species • Communities • Functional diversity FUNCTIONS The capacity of ecosystems to supply services ECOSYSTEM SERVICES HUMAN WELLBEING VALUE BIOPHYSICAL value-domain ECOSYSTEM (Supply-side) SOCIO-CULTURAL value-domain MONETARY value-domain SOCIAL SYSTEM (Demand-side) The importance people attach to ecosytem services Total Economic Value (use and non-use values) Figure 1. Methodological framework for assessing ecosystem services (Martín-López et al., 2014, p.222). Figure 1. Methodological framework for assessing ecosystem services (Martín-López et al., 2014, p.222). 2.2 Analyzing the supply of ecosystem services Ecosystem service provision potential means the perceived potential of an area to pro- duce ecosystem services (Kopperoinen et al., 2014). A close concept of potential supply of ecosystem services, on the other hand, has been used as a synonym for the hypothet- ical maximum yield of selected ecosystem services. The pure word supply of ecosystem services has referred to the quantified actual used set of ecosystem services (Burkhard et al., 2012) or to actual provision which means that part of ecosystem service provision which is used or can be made use of (Kopperoinen et al., 2014). All the above-men- tioned concepts have to be separated from sustainable supply of ecosystem services, which is that amount of ecosystem services which can be benefited from sustainably, not exceeding the limits that would lead to deterioration of the ecosystem and a diminishing flow of benefits. Various methods to assess and map the ecosystem service provision have been developed. Quantification of ecosystem service supply is usually based on some kind of a model, such as carbon sequestration models (e.g. soil carbon model Yasso). Other examples of software and model assemblages for assessing the supply and/or benefits of selected ecosystem services are InVEST (http://www.naturalcapitalpro- ject.org/InVEST.html), ARIES (http://www.ariesonline.org/about/approach.html), and TESSA toolkit (http://www.birdlife.org/worldwide/ science/assessing-ecosys- tem-services-tessa). Quantifying the supply of all ecosystem services is extremely laborious and time consuming, which has led to the development of other more easily applicable meth- ods for practical use. Such methods include various matrix-type methods based on expert scoring of land use and land cover data (e.g. Burkhard et al., 2009), biotope data (Vihervaara et al., 2012), or a wide spectrum of spatial datasets (Kopperoinen et al., 2014) according to their potential to describe the relative ecosystem service pro- vision potential. These methods are relatively straightforward to use, and experience has shown that they can produce valid results. It has to be acknowledged, however, that in order to ensure the applicability and validity of the results, compiling and http://www.syke.fi/en-US/Research__Development/Research_and_development_projects/Projects/Soil_carbon_model_Yasso/Soil_carbon_model__Yasso(3113) http://www.naturalcapitalproject.org/InVEST.html http://www.naturalcapitalproject.org/InVEST.html http://www.ariesonline.org/about/approach.html http://www.birdlife.org/search-results?qx=worldwide%20science%20assessing%20ecosystem%20services%20tessa http://www.birdlife.org/search-results?qx=worldwide%20science%20assessing%20ecosystem%20services%20tessa 10 Reports of the Ministry of the Environment 14en | 2015 synthesizing the required expert input usually requires considerable effort, such as organizing multiple expert and stakeholder workshops. However, the benefits of these interactive workshops extend beyond mere acquisition of input parameters for the analyses: using participatory methods coupled with expert scoring enables knowledge exchange and important interaction – both between researchers and stakeholders, and between different stakeholders (Kopperoinen et al., 2014). GreenFrame GreenFrame is a semi-quantitative place-based method for detecting key areas of green infrastructure based on their provision potential of various ecosystem services (Kopperoinen et al., 2014). In this context, provision potential means the perceived potential of an area to support the supply of ecosystem services. Areas with high provision potential have qualities that provide a good base for producing specified ecosystem services. GreenFrame has been developed at the Finnish Environmental Institute (SYKE) to serve as an operational and transparent tool for supporting land use planning at different scales. Any classification of ecosystem services can be used when applying matrix ap- proaches, such as GreenFrame. In recent studies, the sections and groups of ecosystem services of the Common International Classification of Ecosystem Services (CICES) have been used as a basis. In GreenFrame, the three sections of ecosystem services in the CICES – (1) provisioning services, (2) regulation and maintenance services and (3) cultural services – are further divided into a set of ecosystem service groups. GreenFrame focuses on identifying spatial differences in the provision potential of ecosystem services based on spatially explicit datasets and expert assessments. The in- put data for the analysis can consist of both quantitative and qualitative datasets. Spatial data on the provision potential of intangible ecosystem services – such as various regu- lation and maintenance services and cultural ecosystem services – is often insufficient or missing. In matrix approaches such as GreenFrame, this information is derived from related thematic datasets and supporting expert assessments. Qualitative assessments are complemented with quantitative spatial data if such data exists. Quantitative data is more often available for provisioning services, such as timber volume. The output maps allow ecosystem services to be observed one by one across the study area, or holistically as syntheses of bundles of ecosystem services. The provision potential of each individual ecosystem service is scaled to a common range [0-1], with value 0 representing the locations within the study area where the relative provision potential for the given ecosystem service is lowest. Similarly, value 1 represents the locations having the highest potential within the study region, and accordingly the values between 0 and 1 are determined in respect to each location’s relative provision potential. Different weights can also be given to selected ecosystem services, or certain ecosystem services can even be omitted from the output, if desired. 11Reports of the Ministry of the Environment 14en | 2015 2.3 Analyzing the demand for ecosystem services The demand for ecosystem services has been defined as the sum of all ecosystem goods and services currently consumed or used in a particular area over a given time period (Burkhard et al., 2012). In some cases this can be called actual demand, but not always. In the case of a shortage of availability of a certain ecosystem service (i.e. shortage of supply), the sum of consumed ecosystem services shows only what is actually consumed, although there is a chance of greater demand that cannot be met. An extreme example of such a case could be an area where there is not enough food to meet the needs of a population; the amount of consumed food does not reflect the actual demand for food. Thus, food (end product of a provisioning service) needs to be imported to the area from elsewhere. For the expected or required level of ecosystem service delivery, demand can be defined according to the environmental standards (Baró et al. manuscript). Using this definition, expected demand is the minimum amount of produced ecosystem service to reach those standards. This definition applies to non-transferrable ecosystem services, such as urban temperature regulation, which cannot be outsourced. We can also assess potential demand which is estimated based on, for example, the number of population within a certain distance from ecosystem service-producing areas, like in the case of recreation. Based on all the above-mentioned aspects, a general definition for the demand for ecosystem services is simply “the amount of service required or desired by society”. Assessment and mapping of ecosystem service demand is important for the sake of the sustainable use of ecosystems and their services. The level of consumption, that is, the realized demand for ecosystem services, cannot exceed the sustainable level of supply without affecting the state and resilience of an ecosystem. Mapping both the supply and demand helps in balancing them. It is also crucial for managing ecosystem services. This can, for example, help in detecting areas where restoration is needed to meet a high demand for a specific ecosystem service or a bundle of them. Restoration may involve building new green infrastructure where, for example, there is need for better flood regulation or access to recreation in green spaces. However, localizing the demand for ecosystem services can be troublesome, and even irrelevant, in some cases. For example, from the perspective of global climate regulation, there is an equal need for carbon sequestration in all areas. For many provisioning services (such as food production and timber) proximity is desirable, but not indispensable – the global markets, production and transport chains make it possible for us to consume also nondomestic provisioning services. Most regulation and maintenance services have regional importance, but mapping the spatial varia- tion in their demand can be quite problematic. Socio-cultural preferences are closely related to ecosystem service demand. There- fore, various participatory methods to assess and map such preferences have been developed. Methods applied in a group setting are called deliberative; they involve interaction between participants that are present, which influences the outcome. A mapping workshop to collect expert knowledge from local stakeholders and research- ers is an example of deliberative methods. The participants can identify on printed or in digital maps, for example, the location and status of various ecosystem services and trends in their use, and the beneficiaries and flows (Palomo et al., 2013). Lately, the use of public participatory GIS (PPGIS) methods via the Internet has gained popularity in assessing the demand for ecosystem services (see e.g. http:// www.landscapevalues.org/) (Brown and Kyttä, 2014). Several platforms to set up a survey questionnaire with maps are available (e.g. http://maptionnaire.com/; https:// www.eharava.fi/en/aboutharava/createasurvey/). The benefit of PPGIS is the large http://www.landscapevalues.org/ http://www.landscapevalues.org/ http://maptionnaire.com/ http://maptionnaire.com/ 12 Reports of the Ministry of the Environment 14en | 2015 volume of observations in terms of the number of people that can be reached, as well as the number of markers placed on maps. The PPGIS method is especially suitable for getting perceptional or experiential knowledge related to the use or need for ecosystem services (valued places, places of conflicts, areas needing development, etc.). However, when using deliberative and participatory mapping methods, it has to be noted that the locations marked on the maps do not reflect only the demand for ecosystem services. For example, the respondents may mark locations where they can actually consume or benefit from a given ecosystem service. In such case, not only the demand, but also the supply is located. In addition, the marked locations of ecosystem service consumption do not necessarily reveal all aspects and locations of ecosystem service demand. Therefore, the design of a PPGIS survey or a deliberative workshop determines the extent to which the supply and/or demand for ecosystem services are covered. Mapping the demand for ecosystem services can also be approached by using matrix-based methods, similarly to the supply (e.g. Burkhard et al., 2012). In these approaches, the relative values for the demand matrices can be derived inter alia from statistics (e.g. Kroll et al., 2012), modeling or interviews, and then allocated to certain land cover types. However, statistical data or appropriate models are not available for all ecosystem services. Potential demand for ecosystem services can also be evaluated by analyzing acces- sibility to different parts of green and blue infrastructure of varying quality. A simple, indicative analysis of spatial accessibility can be based on calculating Euclidian dis- tances from roads or urban centers, for example. An example of a more sophisticated approach is to combine estimates on travel times via the road network with the spatial distribution of a population. These approaches can also be used when estimating the spatial distribution of immediate population pressure from the surrounding areas providing ecosystem services. Accessibility involves other aspects as well, such as land use ownership and the status of the area in question, which might restrict its use. In Finland, everyman’s rights offer people a unique opportunity to enjoy nature independent of who owns the land (with exceptions, such as areas governed by the Finnish Defence Forces). The analyses of accessibility and proximity of areas providing ecosystem services, combined with information on the spatial distribution of a population, can be used in estimating the local and regional aspects of ecosystem service demand. However, as noted above, the relevance of spatial assessments depends on the scale and the given ecosystem service. In the land use planning context, it is useful to map the spatial variation in the residents’ demand for daily use of cultural ecosystem services, such as aesthetics and recreation – based on the location of their residence in relation to areas providing these ecosystem services. Also nature tourism is heavily reliant on the same exact cultural ecosystem services, but the significance of mapping the variation in their demand on the scale of international tourism is questionable. 13Reports of the Ministry of the Environment 14en | 2015 2.4 Connectivity – concepts and definitions A well-connected landscape facilitates the movement of animals and other ecological flows maintaining viable populations and safeguarding biodiversity. Changes in landscape structure reduce connectivity and possibly threaten the viability of species (Fischer and Lindenmayer, 2007) and lower landscape scale resilience, which is the ability of the system to cope with disturbance and to maintain key processes (Car- penter et al., 2001). Connectivity of the landscape promotes the provision potential of many ecosystem services, as connectivity is fundamentally linked to the ecological processes providing these services (Mitchell et al., 2013). On a global scale, landscape modification and landscape fragmentation are rec- ognized as significant threats to biodiversity (Fischer and Lindenmayer, 2007). The degree of fragmentation (patch size and connectedness) has been found to be an important factor determining species survival and distributions. By drawing on the equilibrium theory of island biogeography (MacArthur and Wilson, 1967) and the metapopulation theory (Hanski, 1999), it can be seen that the viability of a population within an ‘island’ or a habitat patch depends on its size and migration possibilities. In practice, maintaining and increasing connectivity between natural and semi-natural areas can be used as a practical planning and management tool for safeguarding and restoring biodiversity. Structural connectivity and functional connectivity In landscape ecology, landscape connectivity is defined as “the degree to which the land- scape facilitates or impedes movement among resource patches” (Moilanen, 2007). Both biotic (the movement of animals and other organisms) and abiotic (e.g. the flow of water and nutrients) movements are included in this definition. Connectivity can be evaluated both in structural and functional terms (Uezu et al., 2005): • Structural connectivity describes the physical composition and configuration of the landscape; for example, the size of habitat patches, distance between the patches and the existence of corridors. • Functional connectivity considers the movement of organisms and matter as a response to the structure of the landscape. Structural connectivity as such does not automatically signify actual functional con- nectivity, which limits the interpretability of observable landscape patterns. However, the mapping of physical connections provides a base for analyzing the dispersal and movement needs of certain species and gives applicable information for land use management and planning (Vogt et al., 2007). Functional connectivity can be further divided into potential connectivity and actual connectivity for measuring connectivity (Calabrese and Fagan, 2004). Potential con- nectivity can be measured by combining the physical attributes of a landscape with limited data on species dispersal based on which connectivity can be predicted. For example, different dispersal thresholds can be included in the analysis for represent- ing the potential movement possibilities of groups of species. Actual connectivity describes the observable movement and flows providing a concrete estimate of the connectedness of the landscape. Information on actual connectivity of multiple spe- cies across large regions is often limited. 14 Reports of the Ministry of the Environment 14en | 2015 Species-oriented and pattern-oriented approaches There are different analytical frameworks for analyzing connectivity and the effect of landscape modification on species and assemblages in a landscape: 1) species-oriented and 2) pattern-oriented approaches (Fischer and Lindenmayer, 2007). Species-oriented approaches focus on individual species’ responses and needs towards the environ- ment. The challenge is to include every single species in the analysis when studying landscape-scale connectivity. In pattern-oriented approaches the focus is on landscape patterns (perceived by humans) that correlate with measures of species occurrence. The risk with pattern-oriented analysis is the oversimplification of complex ecological causalities. Habitat connectivity, landscape connectivity and ecological connectivity For conceptual clarity at different scales, the concepts of habitat connectivity, landscape connectivity, and ecological connectivity can be identified (Fischer and Lindenmayer, 2007). Habitat connectivity is a species-specific notion of connectivity with the focus on the connectedness of habitat for a given species. Landscape connectivity is a pattern-oriented understanding of the connectedness of native vegetation cover in a given landscape. Ecological connectivity refers to the connectedness of ecological processes (e.g. hydro-ecological flows and trophic relationships) at different scales (Fischer and Lindenmayer, 2007). Landscape connectivity (the observed vegetation cover) translates into habitat connectivity for some but not all species, and for some but not all ecological processes (Figure 2). Ecological connectivity: The connectedness of ecological processes at multiple scales Habitat connectivity: The connectedness of habitat patches for a given species Landscape connectivity: The connectedness of vegetation cover within a given landscape Effect will wary between species Effect will wary between species Likely positive relationship Figure 2. The relationship between three different connectivity concepts: 1) Habitat connectivity (single species perspective), 2) landscape connectivity (human-perceived patterns) and 3) ecological connectivity (ecosystem perspective). Modified from Fischer and Lindenmayer (2007). Figure 2. The relationship between three different connectivity concepts: 1) Habitat connectivity (single species perspective), 2) landscape connectivity (human-perceived patterns) and 3) ecologi- cal connectivity (ecosystem perspective). Modified from Fischer and Lindenmayer (2007). 15Reports of the Ministry of the Environment 14en | 2015 Landscape modification and habitat fragmentation Habitat fragmentation is a process where continuous and connected habitat areas are transformed into a set of separated, more isolated smaller patches. The process of fragmentation has three main components: 1) an overall loss of habitat in the land- scape, 2) reduction in the size of remnant habitat patches, and 3) increased isolation of habitats (Bennett, 1998). Fragmentation is usually the result of human modification of land, such as the ex- pansion of urbanized and agricultural areas and transportation networks. As opposed to a connected landscape, a fragmented landscape is marked with a strong contrast between areas of native vegetation and their surroundings. Consequently, fragmen- tation also increases the number of habitat edges between different land cover types (Fischer and Lindenmayer, 2007). Edge effects In a modified (fragmented) landscape, an abrupt change (an ‘edge’) between two habitat types can have a significant influence on the habitat up to a certain degree of penetration. Edge effects are processes that change the environmental conditions and survival possibilities for species on and near the transition zone of two contrasting habitats (Murcia, 1995). For example, in a forest, the presence of an edge increases the number of light, wind and entry points into the forest. The response of species to hab- itat edges together with the suitability of human-modified habitats affect the survival of species in modified landscapes (Zurita et al., 2012). Different factors enhance edge effects in a landscape, such as high contrast in the vegetation structure, high wind speeds and temperature gradients, and the presence of invasive species that benefit from the presence of an abrupt change in vegetation (Fischer and Lindenmayer, 2007). Core areas and connections in the ecological network Core areas (large continuous areas of natural vegetation that provide suitable habitat for many species) are the most integral part of an ecological network in a landscape. Continuous corridors or discrete stepping stones facilitate the movement of species between habitat patches and from one core area to another through a more inhospi- table land use matrix. Corridors can be either natural (such as rivers and natural riparian zones) or man- made (remnant strips of unlogged forest, farm plantations). Also disturbed habitat strips (such as railway lines, transmission line clearings) can be seen as corridors in the landscape. In the relevant literature, habitat corridors are also called ‘wildlife corridors’, ‘dispersal corridors’ and ‘movement corridors’ (Bennett, 1998). Stepping stones are patches that facilitate movement from an isolated patch to another through a more inhospitable and disturbed environment. Stepping stones can be either natural habitat, such as a sequence of wetland patches, or man-made such as a chain of urban green areas. A network of large-enough stepping stones can reduce the isolation of larger habitat patches and facilitate species dispersal over long distances (Saura et al., 2014). 16 Reports of the Ministry of the Environment 14en | 2015 2.5 Analyzing connectivity – a review of methods Measuring connectivity and the choice of method is dependent on the availability of adequate datasets at the scale of observation. There is no consensus on the most applicable connectivity metrics, and the methods differ in data requirements and po- tential to provide adequate information. Spatially explicit dynamic population models can be used for studying the effect of landscape patterns on species distribution and expansion. However, such explicit models are difficult to implement especially in larger-scale studies due to their intensive data requirements and analytical complexity (Calabrese and Fagan, 2004). Following Calabrese and Fagan (2004), three different categories of connectivity metrics are reviewed below according to the level of detail they provide: structural connectivity, potential connectivity and actual connectivity. 2.5.1 Analyzing structural connectivity Landscape metrics as proxies for connectivity Landscape metrics aim at describing the spatial characteristics (composition and/or configuration) of a landscape. Landscape metrics are calculated based on spatially explicit datasets (map layers) at different scales ranging from individual habitat patches to land cover classes up to the level of the whole landscape. A selection of these metrics can be used as proxies for species abundance and richness, as well as species dynamics and interactions (i.e. biodiversity and connectivity). A variety of different landscape metrics exist related to the area, edge (e.g. edge density, m/ha), and shape of a habitat patch. Also different core area metrics (core area percentage of landscape), nearest neighbour metrics (proximity index) and diversity metrics (Simpson’s diversity index) can be calculated. Landscape metrics are not often applicable as exact measures of species occurrence or connectivity, but they are nevertheless useful in assessing general impact of habitat structure on biodiversity. Often, the lack of species-specific data limits the applicabil- ity of these metrics (Levin et al., 2008). For example, nearest-neighbour measures as such have been found to be too simplistic and not suitable proxies for connectivity (Moilanen and Nieminen, 2002). The above-mentioned landscape metrics can be computed with the FRAGSTATS software (McGarigal et al., 2012, McGarigal and Marks, 1995). FRAGSTATS is a “Spatial Pattern Analysis Program for Categorical and Continuous Maps”, developed at the University of Massachusetts. The software and supporting documentation are freely available online. FRAGSTATS can also be run under ArcGIS 10.0 and earlier versions. Running FRAGSTATS under ArcGIS 10.0 requires a valid Spatial Analyst license. Effective mesh size – a landscape metric for measuring landscape fragmentation Effective mesh size is a landscape metric for quantifying landscape fragmentation. Effective mesh size is based on the probability that two randomly selected locations are connected within a landscape (Jaeger, 2000). Effective mesh size can be interpreted as the average area size accessible to an animal that has been randomly placed in a landscape with obstacles that restrict movement. 17Reports of the Ministry of the Environment 14en | 2015 In order to calculate the effective mesh size, the fragmentation geometry has to be defined. Fragmentation geometry includes all elements fragmenting the landscape. Depending on the case-specific definition, these can be, for example, roads, agricultur- al fields and urbanized areas. The result is affected by which elements are regarded as fragmenting the landscape. Effective mesh size is useful when assessing future land use scenarios with multiple fragmenting elements included, such as roads, housing and conversion to agricultural land (Girvetz et al., 2008). Net Landscape Ecological Potential (NLEP) & CORILIS NLEP (Net Landscape Ecological Potential) is an indicator of ecosystem integrity devel- oped at the European Environment Agency (EEA). Ecosystem integrity is understood as the key determinant of the potential provision of ecosystem services. In NLEP, ecosystem potential is described at the macroscale based on the following landscape characteristics (MA, 2005): • Vegetation potential of the territory from land cover classification datasets: Green and non-green areas are identified with the Green Background Landscape Index (GBLI). GBLI is calculated through the aggregation of land cover classes that have been smoothened with the CORILIS methodology (see below). • Scientific and political value given to nature via protected sites: Natura 2000 and other locally designated conservation areas. • Fragmentation by roads and railways: Natural logarithm (ln) of the effective mesh size. The lower the effective mesh size, the higher the fragmentation. NLEP can be implemented, for example, with the ArcGIS software (example output map). In a multi-temporal analysis, a decrease in the NLEP indicates degradation of the ecosystem potential, whereas an increase indicates improvement (MA, 2005). CORILIS is a methodology for generalizing and analyzing land cover data, espe- cially for the smoothening of the CORINE Land Cover dataset. In the context of NLEP, CORILIS is used for generating the input data layers for calculating the GBLI and assessing vegetation potential of a territory. The output is a surface with calculated intensity and probability values ranging from 0 to 100 for a given theme based on the intensity or probability calculations within a defined smoothing radius. Morphological Spatial Pattern Analysis (MSPA) MSPA (Morphological Spatial Pattern Analysis) is an approach for detecting and map- ping corridors and physical connections between habitat patches within a forested landscape (Soille and Vogt, 2009, Vogt et al., 2007). In the output, each pixel belong- ing to the green structure is classified based on morphological image analysis. Nine classes can be identified including core areas, patches, transition zones, corridors, shortcuts and branches. First, a skeleton of the habitat structure is formed based on which the connecting elements are identified. With MSPA it is also possible to differ- entiate between relatively narrow and wide corridors through applying the method at different scales of observation. Input data needs to be in a binary format classified into two mutually exclusive classes (e.g. protected areas or non-protected areas; or green or non-green areas). Also simulated or observed movement data can be used as an input in MSPA (see J-walk below). MSPA analysis can be applied with the Guidos software (Vogt, 2014). Guidos (Graphical User Interface for the Description of Image Objects and their Shapes) is a freeware toolbox for raster image processing and spatial pattern analysis developed at the European Commission Joint Research Center (JRC). http://www.arcgis.com/home/item.html?id=a73796cb89e744d9aee71245cf89e167 http://www.arcgis.com/home/item.html?id=a73796cb89e744d9aee71245cf89e167 http://www.eea.europa.eu/data-and-maps/data/corilis-2000-2 http://forest.jrc.ec.europa.eu/download/software/guidos/ 18 Reports of the Ministry of the Environment 14en | 2015 Landscape permeability analysis The connectivity of protected areas can also be assessed by examining the relative ease of movement (landscape permeability, landscape transparency) or its opposite (landscape resistance) for certain species of interest. In these approaches, the land- scape is usually analyzed by giving relative scores to spatial data (e.g. land cover) in terms of landscape resistance (or permeability) based on scientific literature and/or expert judgment. The resulting data can be used in determining “least-cost” corridors, that is, the optimal routes for the given species between two habitat patches (e.g. Adriaensen et al., 2003; Gurrutxaga et al., 2010; Beier et al., 2011) . It is also possible to take into account the permeability or resistance of the surrounding areas, for example, by using CORILIS smoothing of each pixel in a land cover raster (Peifer, 2009). The permeability or resistance scores may also be applied in estimating the probabilities of movement between habitat patches (see Section 2.5.2 below). Habitat suitability and gap analysis with IDRISI Selva Land Change Modeler IDRISI Selva is commercial software for spatial data analysis and image processing. Tools for habitat suitability and corridor mapping are included in the Land Change Modeler application of the software. According to the software website, “the Habi- tat Assessment panel maps areas into categories of primary and secondary habitat, primary and secondary potential corridor and unsuitable lands based on land cover and habitat suitability. The user specifies parameters such as home range size, buffer widths, and gap crossing distances within range and during dispersal.” The Land Change Modeler is also available as an extension to ArcGIS 10.2 or later. The IDRISI Land Change Modeler includes interfaces to Marxan (software for conservation planning and reserve selection), and MaxEnt (software for species habitat modeling). 2.5.2 Analyzing potential connectivity Graph-theoretical approaches In a graph-theoretical framework, landscape is conceptualized as a network of nodes and links. Habitat patches are represented as the nodes, and movement possibilities between habitat patches are links between the nodes. The potential connectedness of the landscape elements depends on the dispersal ability of a focal species. Patches are considered connected if their properties and distance meet the given requirements, for example, a given distance threshold (Calabrese and Fagan, 2004). Two types of links exist: • binary (a link indicates that the patches are connected or not connected) • probabilistic (the link indicates the probability of movement between habitat patches) Graph-theoretical approaches are useful in identifying key landscape elements for conservation decision-making (Calabrese and Fagan, 2004). For example, methods that simulate the destruction of habitat patches can be used for ranking the patches based on their contribution to the landscape-level connectivity. Similarly, the effect of the establishment of new patches on the connectivity of the network can be examined. Dispersal abilities of different species can be included in the analysis by altering the distance thresholds. In the context of boreal forests, graph-theoretical approaches have been used for studying the effectiveness of existing reserve networks in Sweden and Finland (Bergsten et al., 2013, Laita et al., 2010). Several graph-theoretical connectivity indices exist that can be applied for studying ecological connectivity (Laita et al., 2011, Pascual-Hortal and Saura, 2006). Here, two of such indices are reviewed: 1) the Integral Index of Connectivity (IIC) and 2) Proba- http://clarklabs.org/products/Land-Change-Modeling-IDRISI.cfm http://www.cs.princeton.edu/~schapire/maxent/ 19Reports of the Ministry of the Environment 14en | 2015 bility of Connectivity (PC), as they have been found to be informative and applicable in recent studies of landscape-scale connectivity. IIC and PC are based on the concept of landscape-scale habitat availability (reachability) within a graph-theoretical frame- work (Pascual-Hortal and Saura, 2006, Saura et al., 2011, Saura and Pascual-Hortal, 2007, Saura and Rubio, 2010). In this approach, connectivity is considered to occur also within a patch (intra-patch connectivity) in addition to the linking connections (inter-patch connectivity). Connectivity is measured as the total amount of reachable habitat, regardless of whether such reachable habitat is located within or in between the patches or as a combination of both intra-patch and inter-patch connectivity. IIC is based on binary links between the nodes, whereas PC is based on probabilistic connectivity. The binary approach of IIC is useful in detecting the value of connecting elements (habitat patches or stepping stones), especially with long average inter-patch distances. This is often the case with a protected area network and especially with key woodland habitats in Scandinavia (Bergsten et al., 2013). PC measures the probability that two randomly placed individuals fall into interconnected habitat areas within the network. The probabilistic connection model implemented in PC allows for the modulation of connection strength and dispersal feasibility. Probabilistic measures favour short, direct inter-patch distances, giving more weight to links with large flow potential (Bergsten et al., 2013). In addition to the network connectivity indices, different network centrality meas- ures can be calculated based on the graph-representation of a landscape. Useful meas- ures are, for example, patch importance, degree centrality and betweenness centrality, which were applied in the study of the contribution of woodland key habitats (WKH sites) to the connectivity of the whole reserve network in central Finland (Laita et al., 2010). Patch importance can be determined with node removal analysis, where each patch at a time is removed from the network and the impact of the removal on the recon- structed network is evaluated based on the resulting IIC or PC value. Degree centrality represents the number of direct neighbours and describes the importance of the patch on a local scale. Betweenness centrality is the proportion of shortest paths between all pairs of patches that connect through the node in question. Betweenness centrality is a measure of the contribution of the node to large-scale connectivity and can be useful for identifying critically important patches for landscape-scale connectivity. Both IIC and PC metrics are incorporated into Conefor, which is freely available software for implementing graph-theoretical approaches. Required input files can be generated from vector and raster data formats in other commonly used GIS software. The software can be used non-commercially when citing the software (Saura and Torne, 2009) and the most related references (Pascual-Hortal and Saura, 2006, Saura and Pascual-Hortal, 2007, Saura and Rubio, 2010). FunCon (individual-based simulation model for functional connectivity) FunCon is a spatially explicit individual-based simulation model for assessing how different components of functional connectivity affect the sensitivity of a focal species to landscape structures (Pe’er et al., 2011). The components of functional connectivity that are included in the FunCon model are 1) movement timeframe (everyday home- range movement versus dispersal), 2) movement pattern (random walks versus gap crossing), and 3) response to habitat edges (gradual versus abrupt response, avoid- ance versus penetration). The FunCon model was originally developed for studying the abundance and distribution of birds in the Atlantic rainforest of South America. As input data, the model requires a landscape map and species-specific input param- eters on, for example, habitat requirements and behaviour at edges. The main outputs of the model are 1) abundance of species in the home-range stage, 2) functional connec- tivity due to home-range movements, and 3) functional connectivity due to dispersal. Outputs are provided for individuals, habitat patches and the entire landscape. http://www.conefor.org/ 20 Reports of the Ministry of the Environment 14en | 2015 Related to Funcon, the G-RaFFe-model enables the simulation of landscape frag- mentation that can be used as input in FunCon (Pe’er et al., 2013). The number of roads, size of agricultural fields, and the maximum distance in which disconnected fields can occur are taken into account in the simulation. As outputs, G-RaFFe pro- duces map layers according to the user-defined fragmentation parameters (e.g. a landscape with 60% remaining forest cover with a small number of roads and large agricultural areas). FunCon and the G-RaFFe software can be freely used when citing the authors (Pe’er et al., 2011, Pe’er et al., 2013). J-walk movement simulation J-walk (Gardner and Gustafson, 2004) is a random walk algorithm for simulating dis- persal within a landscape matrix with multiple habitat patches. In Vogt et al. (2009), J-walk was used for creating input movement data for morphological analysis of connectivity. J-walk simulation requires information on land cover and the probabil- ities of movement and mortality for each land cover class. The simulation starts with introducing an individual into the landscape. Simulation of movement continues until the individual dies or moves to another habitat patch. As a result, dispersal corridors between the habitat patches are identified. Combined with the information about habitat locations, the movement data can be used as input for further analysis, such as for MSPA (described above). 2.5.3 Analyzing actual connectivity Surveillance data on species movement Analyzing surveillance data on species movement is the most direct estimate of connectivity. On a landscape scale, two types of animal movement patterns should be identified: 1) frequent home-range movement and 2) less frequent long-range dispersal, which results in the relocation of the home range (Forman, 1995 in Vogt et al., 2009). There are various methods for acquiring surveillance data on species move- ments, for example, by tracking movement pathways or with mark-release-recapture studies (Calabrese and Fagan, 2004). The applicability of direct measurement methods in large-scale studies is limited due to their data-intensive nature (Calabrese and Fagan, 2004). Simulations provide an alternative approach for including species data in the analysis, when direct obser- vation of species’ movement patterns is not feasible (e.g. with the J-walk algorithm described above) (Vogt et al., 2009), or if only limited data is available (e.g. the max- imum-entropy approach for species habitat modeling implemented in the MaxEnt software) (Phillips et al., 2006). 21Reports of the Ministry of the Environment 14en | 2015 2.6 Landscape prioritization from the perspective of biodiversity (Zonation) Zonation is a software tool for conservation area prioritization developed at the Uni- versity of Helsinki (Moilanen et al., 2011). The analysis is focused on evaluating the importance of different locations based on their biodiversity features such as species occurrence and habitat suitability. As a result, the tool creates a prioritization rank- ing for the whole landscape based on conservation value. The ranking is generated through iteratively removing the least valuable cell from the landscape. Connectivity and generalized complementarity of sites can be accounted for in the analysis. For example, the connectedness of most valuable habitats can be prioritized in the analysis and different species-specific penalties can be assigned for habitat boundaries (see detailed explanations in the Zonation user manual). From the output map, different fractions of the landscape can be extracted to in- form planning and decision-making. For example, the top 10% of the landscape can be investigated when the most valuable areas need to be identified for conservation, or the expansion of existing conservation areas. Locating the bottom 10% of the land- scape can help in detecting the least valuable areas to be allocated for other land uses. The prioritization method of Zonation has been applied to, for example, extending the protected area network in southern Finland (Lehtomaki et al., 2009). Zonation analyses have been used in focusing conservation efforts in the forest biodiversity programme METSO. http://www.conefor.org/ 22 Reports of the Ministry of the Environment 14en | 2015 2.7 Summary of methods This section reviewed methods for assessing ecosystem services and connectivity within a landscape. Details of the methods reviewed are summarized in Table 2 over- leaf. The table contains a general description and technical details of the methods, for an in-depth explanation and case examples, see the references provided. Table 2. Reviewed methods CONNECTIVITY Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references MSPA Structural connectivity Guidos Binary raster (1= objects of interest, 0= background) Classification of the landscape according to connectivity (9 MSPA classes) Limitations considering input data size in Guidos (10000x10000 pixels in MS-Windows,’MSPA-tiling’ for larger datasets) European forest connectivity (Esterguil et al. 2012); Mapping landscape cor- ridors – case in Slovakia (Vogt et al. 2007); EVITA case study in Tampere, Finland (Söderman et al., 2014) Landscape metrics Structural connectivity Fragstats Various Proxies for biodiversity, con- nectivity Limited applicability to connectivity analysis. For example, nearest-neigh- bour metrics have been proven to be too simplistic indicators of connecti- vity. Examples in the Nordic context (Levin et al., 2008) Landscape permea-bility Structural con- nectivity, poten- tial connectivity (landscape permea- bility) Calculation in GIS software Land cover or land use data, other data on features restricting movements, e.g. road and rail networks Map of landscape permeability, i.e. the relative changes in the ease of movement through a landscape (species specific) Requires expert judgment on land co- ver – specific resistance to the species of interest. Easy to implement in GIS. Spatial analysis of GI of Europe (EEA, 2014); Regional connectivity in the U.S. (Beier et al., 2011); Least cost modeling in simulated and Belgian landscapes (Adriaensen et al., 2003) Effective mesh size Structural connec- tivity (Landscape fragmenta-tion) Calculation in GIS soft-ware (no existing tool) Fragmentation geometries (roads, railroad, mountain tops, etc.) Degree of landscape fragmenta- tion measured as the effective mesh size across the area (ave- rage accessible area) For comparison between sub-regions within the study areas, between scenarios, studying temporal change, etc. Degree of landscape fragmentation in Switzerland (Jaeger et al., 2008) NLEP Structural connectivity ArcGIS, CORILIS for input data processing Three raster layers: 1) vegetation potential of the terrain 2) protected sites 3) fragmenting elements Map of landscape ecological potential (index value for each pixel) Relatively laborious compared to other reviewed methods of structural con- nectivity. Landscape Ecological Potential of Euro- pe (MA, 2005) IDRISI Habitat assessment Structural connectivity IDRISI Selva Raster format land cover data and habitat suitability data Classification of the landscape into primary and secondary habitats, corridors and unsui- table areas Requires a licence for IDRISI Selva software. A black-box tool which me- ans that all processing steps and calcu- lations cannot be investigated in detail. Suggested method for assessing the ecological network in Southwest Fin- land (Orjala & Käyhkö 2014) Graph- theoretical Potential connectivity Conefor; Conefor inputs for QGIS/ arcGIS/GUIDOS 1) text file containing a list of nodes and 2) text file containing distances between nodes (from vector or raster datasets) Overall network connectivity index (IIC or PC), per patch network centrality measures Input data can be automatically ge- nerated in external software (QGIS, ArcGIS, Guidos). There are limitations for input raster data size in Guidos. Reachability of pine forest patches in Northern Sweden (Bergsten et al., 2013); functional reserve network in Central Finland (Laita et al., 2010); other applications: http://www.conefor. org/applications.html FunCon simulations Potential connectivity FunCon Landscape map (raster), species-specific move- ment properties Abundance of species in the home-range stage, and functio- nal connectivity due to home- range movements and dispersal. Applicability in a broad scale case- study? Results may provide supporting information for using more simplistic landscape metrics. Movement simulations for a hypot- hetical bird species in a fragmented landscape (Pe’er et al. 2011) 23Reports of the Ministry of the Environment 14en | 2015 Table 2. Reviewed methods CONNECTIVITY Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references MSPA Structural connectivity Guidos Binary raster (1= objects of interest, 0= background) Classification of the landscape according to connectivity (9 MSPA classes) Limitations considering input data size in Guidos (10000x10000 pixels in MS-Windows,’MSPA-tiling’ for larger datasets) European forest connectivity (Esterguil et al. 2012); Mapping landscape cor- ridors – case in Slovakia (Vogt et al. 2007); EVITA case study in Tampere, Finland (Söderman et al., 2014) Landscape metrics Structural connectivity Fragstats Various Proxies for biodiversity, con- nectivity Limited applicability to connectivity analysis. For example, nearest-neigh- bour metrics have been proven to be too simplistic indicators of connecti- vity. Examples in the Nordic context (Levin et al., 2008) Landscape permea-bility Structural con- nectivity, poten- tial connectivity (landscape permea- bility) Calculation in GIS software Land cover or land use data, other data on features restricting movements, e.g. road and rail networks Map of landscape permeability, i.e. the relative changes in the ease of movement through a landscape (species specific) Requires expert judgment on land co- ver – specific resistance to the species of interest. Easy to implement in GIS. Spatial analysis of GI of Europe (EEA, 2014); Regional connectivity in the U.S. (Beier et al., 2011); Least cost modeling in simulated and Belgian landscapes (Adriaensen et al., 2003) Effective mesh size Structural connec- tivity (Landscape fragmenta-tion) Calculation in GIS soft-ware (no existing tool) Fragmentation geometries (roads, railroad, mountain tops, etc.) Degree of landscape fragmenta- tion measured as the effective mesh size across the area (ave- rage accessible area) For comparison between sub-regions within the study areas, between scenarios, studying temporal change, etc. Degree of landscape fragmentation in Switzerland (Jaeger et al., 2008) NLEP Structural connectivity ArcGIS, CORILIS for input data processing Three raster layers: 1) vegetation potential of the terrain 2) protected sites 3) fragmenting elements Map of landscape ecological potential (index value for each pixel) Relatively laborious compared to other reviewed methods of structural con- nectivity. Landscape Ecological Potential of Euro- pe (MA, 2005) IDRISI Habitat assessment Structural connectivity IDRISI Selva Raster format land cover data and habitat suitability data Classification of the landscape into primary and secondary habitats, corridors and unsui- table areas Requires a licence for IDRISI Selva software. A black-box tool which me- ans that all processing steps and calcu- lations cannot be investigated in detail. Suggested method for assessing the ecological network in Southwest Fin- land (Orjala & Käyhkö 2014) Graph- theoretical Potential connectivity Conefor; Conefor inputs for QGIS/ arcGIS/GUIDOS 1) text file containing a list of nodes and 2) text file containing distances between nodes (from vector or raster datasets) Overall network connectivity index (IIC or PC), per patch network centrality measures Input data can be automatically ge- nerated in external software (QGIS, ArcGIS, Guidos). There are limitations for input raster data size in Guidos. Reachability of pine forest patches in Northern Sweden (Bergsten et al., 2013); functional reserve network in Central Finland (Laita et al., 2010); other applications: http://www.conefor. org/applications.html FunCon simulations Potential connectivity FunCon Landscape map (raster), species-specific move- ment properties Abundance of species in the home-range stage, and functio- nal connectivity due to home- range movements and dispersal. Applicability in a broad scale case- study? Results may provide supporting information for using more simplistic landscape metrics. Movement simulations for a hypot- hetical bird species in a fragmented landscape (Pe’er et al. 2011) 24 Reports of the Ministry of the Environment 14en | 2015 ECOSYSTEM SERVICES Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references GreenFrame Ecosystem service provision potential ArcGIS or other GIS software Multiple raster layers (qualitative and quantita- tive data) Maps representing the provi- sion potential of one or many ecosystem services Requires the organizing of expert and local stakeholder workshops and focus groups, as well as basic statistical and GIS skills. Gathering and preparing the data for analysis can be very time consuming. Pirkanmaa and Kanta-Häme region (Kopperoinen et al., 2014); Application of GreenFrame in analysing the green infrastructure for the regional plan of the Helsinki-Uusimaa Region (Final re- port of the EkoUuma project, in prep.) Public Participatory GIS (PPGIS) Demand for ecosystem services Place-based input data is collected via interviews, deliberati- ve workshops, Inter- net-based surveys or on mobile platforms. Any common GIS software or statistical software can be used for data analysis. Digital markers (points, lines, polygons); Mar- kings on a paper map - digitizing markings or georeferencing photographed maps; Movable markers on a paper map Maps representing the demand for ecosystem services Requires knowledge on building surve- ys or conducting interviews or facilita- ting workshops, statistical knowledge on handling survey data or qualitative interview or workshop data plus basic GIS skills. Getting a statistically signifi- cant sample of data can be a problem. Perceived residential quality in urban densification (Kyttä et al., 2013); Rese- arch priorities for PPGIS (Brown and Kyttä, 2014) Accessibility analysis Potential demand for ecosystem services; potential pressure of use on ecosystem services ArcGIS or other GIS software Road network, locational population data, target locations Maps representing e.g. (a) are- as achievable within specified timeframes via road networks from a certain point; (b) Num- ber of people that are within a specified distance or a specified timeframe from each pixel; (c) Number of people within a specified buffer from a green area (or green infrastructure) in relation to the area unit of the green area. Does not account for demand for and pressure from long-distance travel. Accessibility analysis of the road net- work can be heavy for the computer. Requires more than basic GIS skills unless only a basic buffer analysis is conducted. GIS-based indicators of recreational accessibility (Skov-Petersen, 2001); Potential population pressure and ac- cessibility of green infrastructure in the Helsinki-Uusimaa Region (Final report of the EkoUuma project, in prep.) BIODIVERSITY Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references Zonation Biodiversity Zonation Multiple raster layers Landscape prioritization map: Conservation prioritization ranking for each pixel (0= low, 1= high)   Zonation analysis related to the forest biodiversity project METSO in Finland (see Lehtomäki et al., 2009); Case study in the Uusimaa region (Helsinki- Uusimaa regional plan project) 25Reports of the Ministry of the Environment 14en | 2015 ECOSYSTEM SERVICES Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references GreenFrame Ecosystem service provision potential ArcGIS or other GIS software Multiple raster layers (qualitative and quantita- tive data) Maps representing the provi- sion potential of one or many ecosystem services Requires the organizing of expert and local stakeholder workshops and focus groups, as well as basic statistical and GIS skills. Gathering and preparing the data for analysis can be very time consuming. Pirkanmaa and Kanta-Häme region (Kopperoinen et al., 2014); Application of GreenFrame in analysing the green infrastructure for the regional plan of the Helsinki-Uusimaa Region (Final re- port of the EkoUuma project, in prep.) Public Participatory GIS (PPGIS) Demand for ecosystem services Place-based input data is collected via interviews, deliberati- ve workshops, Inter- net-based surveys or on mobile platforms. Any common GIS software or statistical software can be used for data analysis. Digital markers (points, lines, polygons); Mar- kings on a paper map - digitizing markings or georeferencing photographed maps; Movable markers on a paper map Maps representing the demand for ecosystem services Requires knowledge on building surve- ys or conducting interviews or facilita- ting workshops, statistical knowledge on handling survey data or qualitative interview or workshop data plus basic GIS skills. Getting a statistically signifi- cant sample of data can be a problem. Perceived residential quality in urban densification (Kyttä et al., 2013); Rese- arch priorities for PPGIS (Brown and Kyttä, 2014) Accessibility analysis Potential demand for ecosystem services; potential pressure of use on ecosystem services ArcGIS or other GIS software Road network, locational population data, target locations Maps representing e.g. (a) are- as achievable within specified timeframes via road networks from a certain point; (b) Num- ber of people that are within a specified distance or a specified timeframe from each pixel; (c) Number of people within a specified buffer from a green area (or green infrastructure) in relation to the area unit of the green area. Does not account for demand for and pressure from long-distance travel. Accessibility analysis of the road net- work can be heavy for the computer. Requires more than basic GIS skills unless only a basic buffer analysis is conducted. GIS-based indicators of recreational accessibility (Skov-Petersen, 2001); Potential population pressure and ac- cessibility of green infrastructure in the Helsinki-Uusimaa Region (Final report of the EkoUuma project, in prep.) BIODIVERSITY Method Focus Software Input data Output Notes on the viability, limitations and workload Examples & references Zonation Biodiversity Zonation Multiple raster layers Landscape prioritization map: Conservation prioritization ranking for each pixel (0= low, 1= high)   Zonation analysis related to the forest biodiversity project METSO in Finland (see Lehtomäki et al., 2009); Case study in the Uusimaa region (Helsinki- Uusimaa regional plan project) 26 Reports of the Ministry of the Environment 14en | 2015 3 Spatial data for assessing ecosystem services, biodiversity and connectivity 3.1 Background For spatial assessments of ecosystem services, biodiversity and connectivity, spatially explicit GIS data is needed. The data should represent different themes of the study area including information, among other things, on the protected areas network, dif- ferent types of land cover and land use, hydrological conditions, culturally valuable sites, and recreational areas. Acquiring such data can be a challenging and laborious task, especially in transboundary studies where data is usually dispersed in various sources, inconsistent and produced at different levels of detail. Therefore, a review of the existing data is needed. The most appropriate spatial data was reviewed by exploring previous and ongoing studies covering the GBF and by interviewing different experts and stakeholders. The main focus was on nationwide and cross-border datasets, but also regional and local datasets were reviewed. In order to gain detailed insight on regional-level data, a case study on the Kainuu Region in Northern Finland was carried out. Local experts and stakeholders were interviewed regarding the available datasets for the assessment of ecosystem services and connectivity of the Green Belt in general, and of the Kainuu Region in particular. It has to be acknowledged that it is not realistic to conduct an all-inclusive review of all possible existing datasets within a brief preliminary study. Nevertheless, an effort was made to cover a wide variety of different themes and da- tasets that are relevant to connectivity and ecosystem services supply and demand. The results of the data review are shown in Appendix 1, including the following information: description of theme, name of the dataset, data type, data source, data producers and contributors, spatial scale, coverage, cost and possible restrictions on data usage. Short de- scriptions and the sources of the datasets reviewed are listed below under the following sections. Some of the important datasets are not available to the public, or they must be purchased or an official data request is needed. Information on possible restrictions on data availability is detailed in Appendix 1 under possible restrictions on data usage. The different experts and stakeholders contacted during the data review are listed in Table 4. Data coverage poses challenges when selecting appropriate datasets for analysis. Most of the data reviewed here cover only the Finnish parts of the GBF. One of the main issues of a possible full-scale analysis of the GBF will be to find harmonized data of similar themes covering the whole study area of the GBF. During the data review the special importance of some datasets was recognized: these should be included to achieve a comprehensive and explicit analysis of the GBF. Establishing important contacts both nationally and internationally is crucial for gaining access to important data sources. Especially cross-border contacts with Rus- sian representatives and experts are necessary to get the best information available. Several contact details for Russian data providers and possible collaborators are listed under the section for Russian datasets. 27Reports of the Ministry of the Environment 14en | 2015 3.2 Reviewed cross-border datasets Theme: Protected areas Barents Region Protected Area Network (BPAN project) The dataset includes information on the existing and planned protected areas in the Barents Region, and other data that has been used for analysis on the representa- tiveness and the connectivity of the protected area network. In addition, data on unprotected high conservation value areas of Northwest Russia was produced in “Gap analysis of Northwest Russia” project. The gap analysis focused on high con- servation value areas, gaps and representativeness of the protected area network in northwest Russia. Some of the data compiled in the project are unrestricted, whereas certain data have been negotiated for BPAN project use only. • Data source: Finnish Environment Institute – BPAN Project • Data description: For more information contact anna.kuhmonen@ymparisto.fi (Finnish Environment Institute) Landscape planning data from Karelia (KARLANDS project) The dataset includes information on the following forest variables of the Karelia re- gion: silent areas, forest age, average forest height, forest volume, volume of spruce, volume of pine, volume of birch, volume of other broadleaved trees, clear cuts and fire risk areas. • Data source: KARLANDS Project • Data description: For more information contact timo.hokkanen@ely-keskus.fi (Centre for Economic Development, Transport and the Environment ) Protected Areas in the Euregion Geodatabase (EUREGIO–Karelia project 2000) The Euregion–Karelia Geodatabase includes information on nature reserves and parks and on national parks (under the theme protected areas) in the Karelia region in the Finnish and Russian territories. The database contains also data on other themes, such as hydrology and the administrative structure of the region, but the data might be outdated. • Data source: National Land Survey of Finland • Data description: For more information contact the Regional Council of Kainuu Theme: Land cover and land use Barents Region land cover data from the BPAN project The land cover data used in the BPAN project. The study utilized CORINE Land Cover data and data produced in the GAP analysis of northwest Russia that focused on high conservation value areas, and gaps and representativeness of the protected area network in northwest Russia. • Data source: Finnish Environment Institute – BPAN Project • Data description: For more information contact the Finnish Environment Institute Hybrid Land Cover of Russia: Land cover classification 300 m The data was produced using geographically weighted regression (GWR) and crowd- sourced validation data from Geo-Wiki to create two hybrid global land cover maps that use medium resolution land cover products as an input. • Data source: International Institute for Applied System Analysis • Data description: Link to article http://www.bpan.fi/en/bpan-project/pilot-projects/ anna.kuhmonen@ymparisto.fi http://karlands.maps.arcgis.com/home/ http://www.bpan.fi/en/bpan-project/pilot-projects/ http://www.iiasa.ac.at/web/home/research/researchPrograms/EcosystemsServicesandManagement/Hybrid-Land-Cover-of-Russia..en.html http://www.sciencedirect.com/science/article/pii/S0924271614001713 28 Reports of the Ministry of the Environment 14en | 2015 Hybrid Land Cover of Russia: Land cover classification 1 km The dataset includes a Russian land cover and land use dataset where data from sta- tistics, remote sensing and in-situ observations are combined. The resulting dataset contains detailed subclasses of land cover at a 1 km resolution. • Data source: International Institute for Applied System Analysis • Data description: Link to article EUREGIO–Karelia project 2000: Land cover areas including glaciers, forests and open wetlands Includes land cover information on the Karelia area from the EUREGIO–Karelia database. • Data source: National Land Survey of Finland • Data description: For more information contact the Regional Council of Kainuu GIT Barents GIT Barents was an EU-funded project active between 1997 and 2008. During this pro- ject, spatial data on the Barents Region was produced covering areas of north-western Russia and the northernmost parts of Finland, Sweden and Norway. According to the project website, the following data should be available: homogenized information on administrative boundaries, transportation, hydrography, land cover and land use, settlements, elevation, protected areas and geographical names. • Data source: GITBarents • Data description: Link to metadata Other land cover data Different commercial and free land cover and land use data are available covering global and regional areas. • Data source: Multiple data sources, for example, USGS Theme: Remote sensing data Landsat 8 – satellite images Landsat provides satellite images for monitoring, understanding and managing the resources needed for human sustainment such as food, water and forests. Landsat 8 measures Earth’s surfaces in the visible, near-infrared, short-wave infrared and ther- mal infrared, with a moderate resolution of 15 to 100 meters, depending on spectral frequency. • Data source: USGS • Data description: Link to metadata 1 km MODIS-based Maximum Green Vegetation Fraction These data describe the annual maximum green vegetation fraction (MGVF), and are based on 12 years (2001-2012) of Collection 5 MOD13A2 normalized difference vegetation index (NDVI) data. Each map shows MGVF for one year (as well as the average, for all years from 2001-2012), based on the annual maximum NDVI and linear mixing models that describe the green vegetation fraction (vs. non-vegetated area) for each land cover class for each year. • Data source: USGS • Data description: Link to metadata http://www.iiasa.ac.at/web/home/research/researchPrograms/EcosystemsServicesandManagement/Hybrid-Land-Cover-of-Russia..en.html http://webarchive.iiasa.ac.at/Research/FOR/forest_cdrom/Articles/Schepaschenko_et_al_2011_JLUS_Land_cover.pdf http://www.gitbarents.com/AboutProjects.aspx http://www.gitbarents.com/Metadata.aspx http://earthexplorer.usgs.gov/ http://landsat.usgs.gov/landsat8.php http://earthexplorer.usgs.gov/ http://landcover.usgs.gov/green_veg.php 29Reports of the Ministry of the Environment 14en | 2015 Earth Observing 1 (EO-1): Hyperion sensor –satellite images The Hyperion instrument provides a new class of Earth observation data for improved Earth surface characterization using hundreds of spectral bands with moderate reso- lution of 30 m. Through these spectral bands, complex land ecosystems can be imaged and accurately classified. • Data source: USGS • Data description: Net Primary Production: Link to article Other commercial remote sensing data • Data source: Multiple data providers with different sensor specifications Theme: Geology and mining Fennoscandian Ore Deposit Database (FODD) The public data from the Fennoscandian Ore Deposit Database (FODD) includes data on more than 900 metal mines, unexploited deposits and significant occurrenc- es within Fennoscandia. The data contains information on, among other things, the location, mining history, tonnage and commodity grades. • Data source: Fennoscandian Ore Deposit Database • Data description: Geological Survey of Finland Report (Eilu et al., 2007) 3.3 Reviewed Finnish datasets Theme: Protected areas Natura 2000 sites The Natura 2000 network ensures the conservation of biotopes and habitats of species requiring the designation of Special Areas of Conservation listed in the annexes of the Habitats Directive. • Data source: Finnish Environment Institute • Data description: Link to metadata Nationally designated nature protection areas and wilderness reserves The nature protection areas and wilderness reserves dataset (Finnish: Luonnonsuojelu- ja erämaa-alueet) includes nationally designated protected areas established on state- owned land in accordance with the Nature Conservation Act or Nature Conservation Decree, and areas established on private lands under a decision of the local Centre for Economic Development, Transport and the Environment. The dataset also includes extensive wilderness areas which are maintained in a natural state and are at least partially managed in a natural state. • Data source: Finnish Environment Institute • Data description: Link to metadata http://earthexplorer.usgs.gov/ http://link.springer.com/article/10.1134%2FS1028334X08060330 http://eo1.usgs.gov/sensors/hyperion http://www.satimagingcorp.com/satellite-sensors/ http://geomaps2.gtk.fi/website/fodd/viewer.htm http://tupa.gtk.fi/julkaisu/tutkimusraportti/tr_168.pdf https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7B385564E1-F944-4BE0-B16E-4CC8DAD411F1%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7b9871C541-9E84-4241-A1E5-51C596A5A4E2%7d 30 Reports of the Ministry of the Environment 14en | 2015 Protected areas included in national conservation programmes The national conservation programme dataset (Finnish: Luonnonsuojeluohjelma-alueet) includes the boundaries of protected areas described in the Finnish conservation programme. The dataset includes data on seven approved nature conservation pro- grammes: national parks and strict nature reserves, mires, bird wetlands, eskers, herb-rich woodland, shores and old-growth forests. • Data source: Finnish Environment Institute • Data description: Link to metadata State-owned real estate reserved for conservation purposes, Metsähallitus The datasets of the real estate owned by Metsähallitus that have been reserved for con- servation purposes show the plot boundaries that are partly or completely located in strict nature reserves, national parks, other state-owned nature reserves, old-growth forest reserves, mire reserves, herb-rich forest reserves, protected areas established by Metsähallitus, areas reserved for protection in nature conservation programme, or wilderness areas. • Data source: Metsähallitus • Metadata: For more information contact Metsähallitus Conservation areas in the national database of regional land use plans The national database of regional land use plans (Finnish: Valtakunnallinen maakun- takaavapaikkatietokanta) includes information on areas reserved for conservation pur- poses in ratified regional land use plans. • Data source: Finnish Environment Institute • Data description: Link to metadata Protected state-owned and privately owned forest patches (SAKTI database) The dataset includes the protected state-owned and privately owned forest patches in Finland. • Data source: Metsähallitus • Metadata: For more information contact Metsähallitus Theme: Areas of valuable landscapes Nationally valuable landscape areas in national conservation programmes Areas in conservation programmes include the geographical boundaries of nationally valuable landscapes. First, a conservation programme and the areas included in it are delineated in a general decision. When a certain area is declared to be protected, the area is delineated at the site. The conservation programme areas and their geo- graphical boundaries are not removed from the database after the decision declaring the site an official protected area. • Data source: Finnish Environment Institute • Data description: Link to metadata Valuable landscape areas in the national database of regional land use plans The national database of regional land use plans (Finnish: Valtakunnallinen maakun- takaavapaikkatietokanta) includes data on valuable landscape areas that have been designated as landscape zones in regional land use plans. • Data source: Finnish Environment Institute • Data description: Link to metadata https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7BA0C487D4-968B-4553-9EFB-870D6D2A728C%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7b2FAA5D6B-C053-465E-812C-119798581F5C%7d https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7bA0C487D4-968B%20%204553-9EFB-870D6D2A728C%7d https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7b2FAA5D6B-C053-465E-812C-119798581F5C%7d 31Reports of the Ministry of the Environment 14en | 2015 Theme: Areas of cultural heritage Nationally valuable built environment The database on the nationally valuable built environment in Finland (Finnish: Rak- ennettu kulttuuriympäristö 1993) is based on the national inventory including regional and temporal diversity of built heritage and central themes in Finnish construction history. • Data source: Finnish National Board of Antiquities • Data description (only in Finnish): Link to metadata Archaeological sites The data include protected archaeological sites (Finnish: muinaisjäännökset) in the archaeological heritage register of the National Board of Antiquities. • Data source: Finnish National Board of Antiquities • Data description (only in Finnish): Link to metadata Protected built heritage areas Protected built heritage areas (Finnish: Suojeltu rakennusperintö) include significant views and buildings that have been protected under the Act on the Protection of the Built Heritage. • Data source: Finnish National Board of Antiquities • Data description (only in Finnish): Link to metadata Theme: Mires Natural mires, drained mires and peatlands in Finland This dataset includes a mire classification of ”undrained mires”, “drained mires” and “peatlands” (Finnish: soiden ojitustilanne). • Data source: Finnish Environment Institute • Data description: For more information contact Finnish Environment Institute Mires in the Finnish Topographic Database The Finnish topographic database (Finnish: maastotietokanta) includes data on mires and organic matter extraction areas in Finland. • Data source: National Land Survey of Finland • Data description (only in Finnish): Link to metadata Theme: Geology and mining Nationally valuable rocky areas The dataset of nationally valuable rocky areas (Finnish: Valtakunnallisesti arvokkaat kalliomuodostumat) includes data on nationally valuable rocky outcrop areas for na- ture and landscape conservation. The dataset includes data on the following areas (situation on 31.12.2011) Uusimaa, Southeast Finland, Southwest Finland, Häme, Päijät-Häme, Pirkanmaa, Central Finland, North Savo, West Finland, North Ostro- bothnia, Kainuu, South Savo and Northern Karelia. • Data source: Finnish Environment Institute • Data description: Link to metadata http://www.nba.fi/fi/tietopalvelut/tietojarjestelmat/kympariston_tietojarjestelma/aineistojen_lataaminen http://www.nba.fi/fi/tietopalvelut/tietojarjestelmat/kympariston_tietojarjestelma/aineistojen_kuvaus http://www.nba.fi/fi/tietopalvelut/tietojarjestelmat/kympariston_tietojarjestelma/aineistojen_kuvaus http://www.nba.fi/fi/tietopalvelut/tietojarjestelmat/kympariston_tietojarjestelma/aineistojen_lataaminen http://www.nba.fi/fi/tietopalvelut/tietojarjestelmat/kympariston_tietojarjestelma/aineistojen_kuvaus https://wwwp2.ymparisto.fi/scripts/oiva.asp https://tiedostopalvelu.maanmittauslaitos.fi/tp/kartta?lang=en http://www.maanmittauslaitos.fi/maastotietokannan-sisalto-teemoittain https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7B2753EE72-1F06-4291-987F-08FA693ED5CA%7D 32 Reports of the Ministry of the Environment 14en | 2015 Nationally valuable moraine formations The dataset of nationally valuable moraine formations (Finnish: Valtakunnallisesti arvokkaat moreenimuodostumat) includes data on inventoried moraine formations in Finland. Exploitation pressures on moraine resources are intensifying because of few- er remaining sources of gravel in eskers. Beside their economic significance, moraine formations hold important ecological, environmental and landscape values. • Data source: Finnish Environment Institute • Data description: Link to metadata Nationally valuable aeolian and beach formations The dataset of nationally valuable aeolian sand and beach formations (Finnish: Arvok- kaat tuuli- ja rantakerrostumat) is based on the final report of the joint inventory project of valuable aeolian sand and beach formations (TUURA) of the Ministry of the En- vironment, the Finnish Environment Institute (SYKE) and the Geological Survey of Finland (GTK). The dataset includes data on 417 aeolian sand and beach formations classified as nationally valuable. • Data source: Finnish Environment Institute • Data description: Link to metadata Superficial deposits of Finland The dataset includes data on the superficial deposits of Finland, produced in various scales. There is data on basal deposits, superficial deposits and Quaternary geological formations. • Data source: Geological Survey of Finland • Data description: Link to metadata Bedrock of Finland The dataset includes unified data on the bedrock all over Finland in various scales. • Data source: Geological Survey of Finland • Data description: Link to metadata Mineral deposits The dataset contains all mineral deposits and their occurrences in Finland. • Data source: Geological Survey of Finland • Data description: Link to metadata Geological map of Finland, pre-Quaternary The bedrock data contains, among others, bedrock observation points and drilling sites, tectonic observations, lithological primary structures and ore minerals. • Data source: Geological Survey of Finland • Data description: Link to metadata Other GIS data and map services of the Geological Survey of Finland The Geological Survey of Finland also has plenty of other data available through its online services: • Hakku data service • Map services • Interface services https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7B0193799E-1F36-4FB9-A0B9-48264860C58C%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7B04399CD4-86CD-453E-B683-5CFF53FA36D0%7D http://hakku.gtk.fi/en/locations/search http://tupa.gtk.fi/paikkatieto/meta/maapera_20_50k.html http://hakku.gtk.fi/en/locations/search http://tupa.gtk.fi/paikkatieto/meta/bedrock_of_finland_200k.html http://hakku.gtk.fi/en/locations/search http://tupa.gtk.fi/paikkatieto/meta/mineral_deposits.html http://hakku.gtk.fi/en/locations/search http://tupa.gtk.fi/paikkatieto/meta/kalliopera_100k.html http://hakku.gtk.fi/en/locations/search http://en.gtk.fi/informationservices/map_services/ http://en.gtk.fi/informationservices/map_services/interfaceservices.html 33Reports of the Ministry of the Environment 14en | 2015 Theme: Groundwater Groundwater formation areas The dataset includes those groundwater areas (Finnish: Pohjavesialueet) that have been assessed and classified for water supply purposes. Groundwater areas have been classified according to their usability and need for protection. • Data source: Finnish Environment Institute • Data description: Link to metadata Chemical condition of groundwater areas The dataset of groundwater areas includes data on the chemical condition of ground- water areas that have been assessed and classified for water supply purposes. • Data source: Finnish Environment Institute • Data description: Link to metadata Volume of groundwater areas The dataset of groundwater areas includes data on the yield of groundwater areas that have been assessed and classified for water supply purposes. • Data source: Finnish Environment Institute • Data description: Link to metadata Theme: Surface waters and drainage basins Water formations according to the EU Water Framework Directive (second planning period): Ecological status of water The dataset of water formations according to the Water Framework Directive (Finnish: Vesipuitedirektiivin mukaiset vesimuodostumat) includes data on inland surface waters (rivers and lakes), transitional waters (estuaries), coastal waters and groundwater. • Data source: Finnish Environment Institute • Data description: Link to metadata; Directive 2000/60/EC Hydromorphological condition of lakes and rivers The dataset includes data on the state of waters, barriers and the structure of the water areas. • Data source: Finnish Environment Institute • Data description: For more information contact Finnish Environment Institute Protected rapids The dataset includes data on rapids, rivers and catchment areas protected in accord- ance with the Act on the Protection of Rapids (Finnish: Koskiensuojelulailla suojellut alueet). • Data source: Finnish Environment Institute • Data description: Link to metadata Agricultural areas with high natural values (HNV) High nature value farmland refers to those areas in Europe where agriculture is a major land use (usually the dominant one) and where agriculture supports or is as- sociated with either a high diversity of species and habitats or the presence of species of European conservation concern or both. • Data source: Finnish Environment Institute • Data description: Link to metadata https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7BFA1742D1-8509-437C-846A-6637B3FF7345%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7BFA1742D1-8509-437C-846A-6637B3FF7345%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7BFA1742D1-8509-437C-846A-6637B3FF7345%7D https://wwwp2.ymparisto.fi/scripts/oiva.asp http://kkgeoportal.env.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7b5CBC7504-83BA-4AB5-B8B6-83EF7D18FA6B%7d http://eur-lex.europa.eu/LexUriServ/LexUriServ.do?uri=CELEX:32000L0060:en:HTML https://wwwp2.ymparisto.fi/scripts/oiva.asp https://wwwp2.ymparisto.fi/scripts/oiva.asp http://metatieto.ymparisto.fi:8080/geoportal/catalog/search/resource/details.page?uuid=%7b9540CC1E-3E98-4C3D-A214-DC26A7DE6953%7d https://wwwp2.ymparisto.fi/scripts/oiva.asp http://www.mmm.fi/attachments/mmm/julkaisut/julkaisusarja/2009/5HZiK6X4l/MMMjulkaisu2009_1.pdf 34 Reports of the Ministry of the Environment 14en | 2015 Theme: Recreation areas Recreation areas in the national database