| Literature DB >> 24740617 |
Daniel Wurster1, Martina Artmann.
Abstract
Determining the performance of ecosystem services at the city or regional level cannot accurately take into account the fine differences between green or gray structures. The supply of regulating ecosystem services in, for instance, parks can differ as parks vary in their land cover composition. A comprehensive ecosystem service assessment approach also needs to reflect land use to consider the demands placed on ecosystem services, which are mostly neglected by current research yet important for urban planning. For instance, if a sealed surface is no longer used, it could be unsealed to improve ecosystem service supply. Because of these scientific shortcomings, this article argues for a conceptual framework for the non-monetary assessment of urban ecosystem services at the site scale. This paper introduces a standardized method for selecting representative sites and evaluating their supply of and demand on ecosystem services. The conceptual design is supplemented by examples of Salzburg, Austria.Entities:
Mesh:
Year: 2014 PMID: 24740617 PMCID: PMC3989515 DOI: 10.1007/s13280-014-0502-2
Source DB: PubMed Journal: Ambio ISSN: 0044-7447 Impact factor: 5.129
Fig. 1Multi-scale conceptualization for site selection for mapping and assessing ecosystem service provision. SPE Service Providing Elements and SRE Service Reducing Elements. The bold arrows show the vertical and horizontal scales. The dashed arrows indicate the compilation of USS by SPEs and SREs which determine whether a USS is a SPU or SRU
Data and methods for selection urban structural units by geo-informational data
| Characteristics of relevance | Data format/source | Use | Method |
|---|---|---|---|
| Cubic index, scales BMZ: till 3.5/3.51–4.1/4.11–6/>6); Green Index GI (degree of green area per grid in %), scales GI: 0–5/>5–25/>25–50/>50–75/>75–95/>95 | Shape file cubic index and shape file green index/Regional Development Concept (REK) Salzburg | Define urban structural units of low- and high-density commercial areas and low and high share of green Selection of urban structural units | Putting a grid over map (100 m by 100 m) Intersect cubic index and GI Selection (1) High and low green index in low commercial density (BMZ < 3.5/GI > 75 %; <25 %) (2) Low and high green index in high commercial density (BMZ > 6/GI < 25 %; >75 %) |
| Floor-space index, SPI (dimensionless), scales: till 0.5/0.51–0.7/0.71–1.1/>1.1); green index (GI) (degree of green area per grid in %), scales: 0–5/>5–25/>25–50/>50–75/>75–95/> | Shape file floor-space index and shape file green index/Regional Development Concept (REK) Salzburg | Define urban structural units of low- and high-density residential areas and low and high share of green Selection of urban structural units | Putting a grid over map (100 m by 100 m) Intersect floor-space and green index Selection (1) High and low green index in low residential density (SPI till 0.5/GI > 75 %; <25 %) (2) Low and high green index in high residential density (SPI > 1/GI < 25 %; >75 %) |
| Degree of structural diversity in forests (cultivated land use types): beech and mixed woodland, coniferous forests, tree rows and hedges, pedunculate oak and oak-hornbeam forest, pine forests, pioneer and moorland wood, deciduous and commercial forest, commercial wood, and commercial wood addition | Shape file cultivated land use type/Regional Development Concept (REK) Salzburg | Calculation of richness factor for selection of forest plots | Putting a grid over map (400 m by 400 m) Calculating the richness factor per grid via GIS Selection of grids with high and low richness factor |
| Degree of structural diversity in agricultural areas (cultivated land use types): vegetable fields, horticulture, cereal fields, fodder meadow, root crop, rich pasture, maize fields, bedding meadow, and dry grassland | Shape file cultivated land use type/Regional Development Concept (REK) Salzburg | Calculation of richness factor for selection of agricultural areas | Putting a grid over map (400 m by 400 m) Calculating the richness factor per grid via GIS Selection of grids with high and low richness factor |
Fig. 2Low dense commercial area with low green index
Range of structures for pre-mapping
| Green structures | Blue structures | Recreational structures | |
|---|---|---|---|
| Single trees (>3 species, deciduous/conifers, young/old, with brushwood and tree seedlings) | Lake/fountain (diverse lakeshore yes/no) | Benches | Cafés |
| Group of trees (>3 species, deciduous/conifers, young/old, with brushwood and tree seedlings) | River/stream/canal (diverse lakeshore yes/no) | Boat rental | Toilets |
| Forest elements (<3 species/>3 species, coeval, various ages, coniferous, deciduous, and undergrowth) | Playground | bbq-area | |
| Hedges/shrubs (cut/non-cut; <3 species/>3 species) | Dog-place | Open-air cinema | |
| Grassland/lawn (intensive/extensive) | Skate ground | Swimming places | |
| Flowerbed | Bike paths | Others | |
| Lawn | |||
Fig. 3Map of land use and land cover of SSEs of a high density and high green residential area
Fig. 4Selection, mapping, and assessment process including possible trade-offs or synergies between different ecosystem services or levels of mapping within an urban structural unit, using the approach of SPEs and service reducing elements (SREs)
Example of how to calculate normative values for different SSEs using the example of microclimate regulation in a high density and highly green urban structural unit
| SSEs | SSEs cluster | Factor | Area (m2) | Value |
|---|---|---|---|---|
| Swimming pool | Water bodies | 1 | 925.88 | 925.88 |
| River without diverse river shore | ||||
| Main building, flat roof, without greening | Buildings without greening | −1 | 3097.75 | −3097.75 |
| Main building, without flat roof, without greening | ||||
| Adjacent building, with flat roof, without greening | ||||
| Adjacent building, without flat roof, without greening | ||||
| Concrete and asphalt | Sealed surfaces | −1 | 3275.75 | −3275.75 |
| Cobble-stone pavement | Semi-permeable surfaces | −0.5 | 1067.19 | −533.60 |
| Water-bound surface | ||||
| Gravel | ||||
| Grassland intensive | Grassland intensive | 0.2 | 3443.79 | 688.76 |
| Grassland extensive, less than 10 species | Grassland extensive | 0.3 | 34.98 | 10.49 |
| Flowerbed | Flowerbed | 0.3 | 100.31 | |
| Deciduous old single trees, without understory | Deciduous old single trees, without understory | 0.7 | 106.85 | 74.80 |
| Deciduous old single trees, with understory | Deciduous young single trees, without understory | 0.5 | 53.16 | 26.58 |
| Deciduous young single trees, with understory | Deciduous young single trees, with understory | 0.6 | 20.85 | 12.51 |
| Hedges, diverse, extensively managed | Hedges | 0.5 | 1263.07 | 631.54 |
| Hedges, mono, extensively managed | ||||
| Hedges, mono, intensively managed | ||||
| Single standing shrubs, intensively managed | Shrubs | 0.5 | 403.38 | 201.69 |
| Group of trees, diverse, old without understory | Group of trees, diverse, old without understory | 0.9 | 81.95 | 73.75 |
| Group of trees, diverse, old with understory | Group of trees, diverse, old with understory | 1 | 629.40 | 629.40 |
| Group of trees, diverse, mixed old/young with understory | Group of trees, diverse, mixed old/young with understory | 0.8 | 2617.40 | 2093.92 |
| Group of trees, coniferous, mono, old without understory | Group of trees, coniferous, mono, old without understory | 0.9 | 118.33 | 106.50 |
| Other | Other | 0 | 102.13 | 0.00 |
| Sum | 17 342.17 | −1431.29 | ||
| Value USU (ratio value and area) | −0.08 |