wiki:mapping_assessment
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- | === Spatial analysis of Ecosystem Services | + | ===== Mapping and assessment ===== |
- | Spatial data analysis(([[https:// | + | === Spatial analysis of Ecosystem Services === |
- | Spatial analysis includes a variety of techniques, developed to derive quantitative indicators as outcomes of algorithms applied to spatial data and in particular to their topological, | + | [[wiki: |
- | In the case of spatial analysis applied to ES, examples are:\\ | + | Spatial data]] analysis(([[https:// |
+ | Spatial analysis includes a variety of techniques, developed to derive quantitative | ||
+ | In the case of spatial analysis applied to [[wiki: | ||
- Cost analysis performed by calculating a proximity (or cost) surface over a friction map, e.g. to map the potential fruition of recreational areas by tourists, or the ecological connectiveness by analysing corridors between habitats.\\ | - Cost analysis performed by calculating a proximity (or cost) surface over a friction map, e.g. to map the potential fruition of recreational areas by tourists, or the ecological connectiveness by analysing corridors between habitats.\\ | ||
- Visibility analysis of landscapes, to determine all areas that can be seen from one or more viewpoints, to determine the recreational values.\\ | - Visibility analysis of landscapes, to determine all areas that can be seen from one or more viewpoints, to determine the recreational values.\\ | ||
- Analysis of watersheds, with calculation of slope, water accumulation, | - Analysis of watersheds, with calculation of slope, water accumulation, | ||
- Spatial models, such as plant (e.g. crop) productivity for the calculation of provisioning services.\\ | - Spatial models, such as plant (e.g. crop) productivity for the calculation of provisioning services.\\ | ||
- | Spatial analyses for the assessment of ESs are typically designed as a sequence of steps applied to input maps in a logical sequence, to produce intermediate and output layers, which are typically maps of supply, flow and demand of ES(([[https:// | + | Spatial analyses for the assessment of ESs are typically designed as a sequence of steps applied to input maps in a logical sequence, to produce intermediate and output layers, which are typically maps of supply, flow and demand of ES(([[https:// |
=== ES Spatial Analysis in the AlpES Project === | === ES Spatial Analysis in the AlpES Project === | ||
- | Biomass production for livestock uses is an ES that strictly depends on local climate and biophysical parameters. Either these spatial data are collected from local institutions or indirectly obtained from remote sensing (RM), they can be used to estimate potential productivity of pastures and grasslands. In the AlpES project, statistical models are applied to quantify kg of production in dry matter per hectare, depending on the length of the growing season. The growing season is a typical proxy used to define the number of vegetation days i.e. the days in which the temperature is sufficiently high to induce biomass accumulation through synthesis of new plant tissues. For fodder production the temperature threshold was set to 5° C. Graph 1 reports the statistical models used to estimate biomass production. These models can be implemented by using simple map algebra tools, usually available in any GIS software, like QGIS and ArcGIS. A vigor factor (VF) has been assigned to each land cover as local productivity is assumed to be different depending on the specific land cover class: for example, alpine pastures have clearly higher biomass productivity compared to moors and heathland. Consequently, | + | [[: |
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+ | In general, land cover data are often used to quantify spatially explicit indicators of ES supply(([[https:// | ||
+ | An example is the hemeroby index i.e. the degree of human influence. It is based on Paracchini and Capitani (2011)(([[http:// | ||
+ | For the same ES, another example is the diversity of landcover, which is based on the assumption that spatial heterogeneity provides high recreational and visual attractiveness(([[http:// | ||
- | <font 10px/ | + | {{:wiki: |
- | In general, land cover data are often used to quantify spatially explicit indicators of ES supply(([[https:// | + | < |
- | An example is the hemeroby index i.e. the degree of human influence. It is based on Paracchini and Capitani (2011)(([[http:// | + | |
- | For the same ES, another example is the diversity of landcover, which is based on the assumption that spatial heterogeneity provides high recreational and visual attractiveness(([[http:// | + | |
- | \\ | + | |
- | < | + | |
- | Accessibility is the proxy of the degree to which people can actually benefit from high recreation potentials(([[http:// | + | [[wiki: |
Whenever an ES is estimated through a portfolio of indicators, a spatial multi-criteria analysis (MCAs) can be applied. For example, this approach has been helpful to display recreation potential hotspots in a relative and easy-to-read manner. In MCA, worth to be mentioned are the steps of normalization and aggregation: | Whenever an ES is estimated through a portfolio of indicators, a spatial multi-criteria analysis (MCAs) can be applied. For example, this approach has been helpful to display recreation potential hotspots in a relative and easy-to-read manner. In MCA, worth to be mentioned are the steps of normalization and aggregation: | ||
- | • normalization(([[https:// | + | • normalization(([[https:// |
- | • once all indicators share a common scale, they can be aggregated in a single meaningful value that is defined by the “contribution” of each indicator to the final estimation of the ES; this contribution can be equal or weighted depending on stakeholder preference structure(([[https:// | + | • once all indicators share a common scale, they can be aggregated in a single meaningful value that is defined by the “contribution” of each indicator to the final estimation of the ES; this contribution can be equal or weighted depending on stakeholder preference structure(([[https:// |
All normalization and aggregation procedures can be easily implemented with map algebra tools of any GIS software.\\ | All normalization and aggregation procedures can be easily implemented with map algebra tools of any GIS software.\\ | ||
- | Recreation supply has to be compared with demand for outdoor activities by using demographic data and available information on tourism overnight stays. Demography, tourism and other data referred to municipalities or different administrative levels (NUTS and LAU) are typically available in vector formats (e.g. ESRI shapefile). In this case, elaborations are carried out in spatial databases connected to IDs of each geometry (points, lines of polygons). Among others, selection of records, creation of attributes and calculations are GIS tasks performed using software-specific expression to manipulate databases and geometries. For example, the potential demand for outdoor recreation activities has been estimated by calculating the “permanent resident equivalents” of tourism occupancy(([[https:// | + | Recreation supply has to be compared with demand for outdoor activities by using demographic data and available information on tourism overnight stays. Demography, tourism and other data referred to municipalities or different administrative levels (NUTS and LAU) are typically available in vector formats (e.g. ESRI shapefile). In this case, elaborations are carried out in spatial databases connected to IDs of each geometry (points, lines of polygons). Among others, selection of records, creation of attributes and calculations are GIS tasks performed using software-specific expression to manipulate databases and geometries. For example, the potential demand for outdoor recreation activities has been estimated by calculating the “permanent resident equivalents” of tourism occupancy(([[https:// |
=== Additional Resources === | === Additional Resources === |
wiki/mapping_assessment.1521133126.txt.gz · Last modified: 2018/03/15 17:58 by cgiuppo