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ateam - Potsdam Institute for Climate Impact Research

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ATEAM final report Section 5 and 6 (2001-2004) 54<br />

summaries can be made <strong>for</strong> the changes in ecosystem services (Figure 43). Such summaries by<br />

Environmental Zone (13 in total), or even by Environmental class (84 in total) can be linked to other data<br />

sources or studies. Furthermore, the proposed classification can be used at different aggregation levels,<br />

and can be linked to global biome classifications. As a result, the vulnerability assessment framework is<br />

in principle applicable <strong>for</strong> many ecological studies (including field studies, modelling exercises and<br />

satellite monitoring), from local to global scales.<br />

6.2.5.3 Vulnerability maps<br />

Initially, the ATEAM project was designed to achieve a state-of-the-art potential impact assessment,<br />

using <strong>for</strong> the first time ever a consistent set of multiple global change drivers and multiple plausible<br />

future scenarios of these on a high spatial resolution to drive a framework of state-of-the-art ecosystem<br />

models. Owing to the new conceptual development from the beginning of the project, ATEAMers saw<br />

that this toolkit was two steps short of a global change vulnerability assessment. First, we lacked an<br />

indicator of the other essential constituent of vulnerability, namely adaptive capacity. And second, it was<br />

unclear how to combine changes in the potential impact indicators with adaptive capacity to obtain a<br />

measure of vulnerability. For both steps no ready made methodologies were available – the discipline of<br />

vulnerability assessment is so young that it finds or develops tools as it moves along. However,<br />

ATEAMers were determined to move beyond a mere impact assessment, toward an integrated<br />

vulnerability assessment of Europe with the tools that were at hand and those that we were able to<br />

develop during the project life-time. There<strong>for</strong>e we have expanded our research commitment and have<br />

gone two steps further than originally planned. How we took the first step, characterising adaptive<br />

capacity, is described above (section Modelling adaptive capacity). In this section we describe the<br />

second essential step: how to combine anticipated changes in potential impacts with adaptive capacity<br />

to obtain a measure of vulnerability.<br />

Empirical and theoretical evidence of how potential impacts and adaptive capacity can be combined into<br />

measures of vulnerability is very limited. Furthermore, as discussed above, the adaptive capacity index<br />

developed is preliminary. It represents regional, but not individual or national adaptive capacity. The<br />

adaptive capacity model used, unlike the ecosystem models, was not validated against observed data,<br />

because this is currently impossible. There<strong>for</strong>e, we created a visual combination of changes in potential<br />

impact (∆PI) and adaptive capacity (AC) without quantifying a specific relationship. The resulting<br />

vulnerability maps illustrate which areas are vulnerable in terms of high anticipated potential impacts<br />

and limited adaptive capacity. For further analytical purposes the constituents of vulnerability, the<br />

changes in potential impact and the adaptive capacity index have to be viewed separately.<br />

Trends in vulnerability follow the trend in potential impact: when ecosystem service supply decreases,<br />

humans relying on that particular ecosystem service become more vulnerable in that region.<br />

Alternatively vulnerability decreases when ecosystem service supply increases. Adaptive capacity<br />

lowers vulnerability. In regions with similar changes in potential impact, the region with a high AC will be<br />

less vulnerable than the region with a low AC. The Hue Saturation Value (HSV) colour scheme is used<br />

to combine ∆PI and AC. The ∆PI determined the Hue, ranging from red (decreasing stratified<br />

ecosystem service supply; highest negative potential impact: ∆PI = -1) via yellow (no change in<br />

ecosystem service supply; no potential impact: ∆PI = 0) to green (increase in stratified ecosystem<br />

service supply; highest positive potential impact: ∆PI = 1). Note that it is possible that while the<br />

modelled potential impact stays unchanged, the stratified potential impact increases or decreased due<br />

to changes in the highest value of ecosystem service supply in the environmental class (ESref). Thus,<br />

when the environment changes this is reflected in a change in potential impact.<br />

Colour Saturation is determined by the AC and ranges from 50% to 100% depending on the level of the<br />

AC. When the ∆PI becomes more negative, a higher AC will lower the vulnerability, there<strong>for</strong>e a higher<br />

AC value gets a lower saturation, resulting in a less bright shade of red. Alternatively, when ecosystem<br />

service supply increases (∆PI > 0), a higher AC value will get a higher saturation, resulting in a brighter<br />

shade of green. Inversely, in areas of negative impact, low AC gives brighter red, whereas in areas of

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