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Upscaling ecosystem service maps to administrative levels: beyond scale mismatches

机译:升级生态系统服务映射到管理级别:超越规模不匹配

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As EcosystemServices (ES) are the products of complex socio-ecological systems, their mapping requires a deep understanding of the spatial relationships and pattern that underpin ES provision. Upscaling ES maps is often carried out to avoid mismatches between the scale of ES assessment and that of their level of management. However, so far only a few efforts have been made to quantify how information loss occurs as data are aggregated to coarser scales. In the present study this was analyzed for three distinct case studies in the eastern Alps by comparing ES maps of outdoor recreation at the municipality level and at finer scales, i.e. high-resolution grids. Specifically, we adopt an innovative and flexible methodology based on Exploratory Spatial Data Analysis (ESDA), to disentangle the problem of the scale from the perspective of different levels of jurisdiction, by assessing in an iterative process how ES patterns change when upscaling high-resolution maps. Furthermore, we assess the sensitivity to the modifiable areal unit problem (MAUP) by calculating global statistics over three grid displacements. Our results demonstrate that spatial clusters tend to disappear when their extent becomes smaller than the features to which values are upscaled, leading to substantial information loss. Moreover, cross-comparison among grids and the municipality level highlights local anomalies that global spatial autocorrelation indicators fail to detect, revealing hidden clusters and inconsistencies among multiple scales. We conclude that, whenever ES maps are aggregated to a coarser scale, our methodology represents a suitable and flexible approach to explore clustering trends, shape and position of upscaling units, through graphs and maps showing spatial autocorrelation statistics. This can be crucial to finding the best compromise among scale mismatches, information loss and statistical bias that can directly affect the targeted ES mapping. (C) 2019 The Authors. Published by Elsevier B.V.
机译:由于生态系统服务(ES)是复杂的社会生态系统的产品,因此其映射要求对支撑ES提供的空间关系和模式有深入的了解。为了避免ES评估规模与其管理水平不匹配,通常会进行ES映射的升级。但是,到目前为止,仅进行了很少的努力来量化在将数据聚合到较粗规模时如何发生信息丢失。在本研究中,通过在市政级别和更小尺度(即高分辨率网格)上比较户外休闲的ES地图,对东部阿尔卑斯山的三个不同的案例研究进行了分析。具体来说,我们采用基于探索性空间数据分析(ESDA)的创新,灵活的方法,通过在迭代过程中评估高分辨率升级时ES模式的变化,从不同管辖级别的角度解决规模问题。地图。此外,我们通过计算三个网格位移的全局统计量来评估对可修改面积单位问题(MAUP)的敏感性。我们的结果表明,当空间聚类的范围变得小于值按比例放大的特征时,空间聚类往往会消失,从而导致大量信息丢失。此外,网格和市政级别之间的交叉比较突出了全局空间自相关指标未能检测到的局部异常,从而揭示了隐藏的簇和多个尺度之间的不一致。我们得出的结论是,每当ES映射汇总到较粗的规模时,我们的方法就代表一种合适且灵活的方法,通过显示空间自相关统计量的图和图来探索聚类趋势,升迁单位的形状和位置。这对于在规模不匹配,信息丢失和统计偏差之间找到最佳折衷方案至关重要,这可以直接影响目标ES映射。 (C)2019作者。由Elsevier B.V.发布

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