Uncertainty in ecosystem services maps: the case of carbon stocks in the Brazilian Amazon forest using regression analysis

IF 1.8 Q3 ECOLOGY
S. L. Clec'h, S. Dufour, Janic Bucheli, M. Grimaldi, R. Huber, I. Miranda, D. Mitja, Luiz Gonzaga Silva Costa, J. Oszwald
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引用次数: 3

Abstract

Ecosystem Service (ES) mapping has become a key tool in scientific assessments of human-nature interactions and is being increasingly used in environmental planning and policy-making. However, the associated epistemic uncertainty underlying these maps often is not systematically considered. This paper proposes a basic procedure to present areas with lower statistical reliability in a map of an ES indicator, the vegetation carbon stock, when extrapolating field data to larger case study regions. To illustrate our approach, we use regression analyses to model the spatial distribution of vegetation carbon stock in the Brazilian Amazon forest in the State of Pará. In our analysis, we used field data measurements for the carbon stock in three study sites as the response variable and various land characteristics derived from remote sensing as explanatory variables for the ES indicator. We performed regression methods to map the carbon stocks and calculated three indicators of reliability: RMSE-Root-mean-square-error, R2-coefficient of determination - from an out-of-sample validation and prediction intervals. We obtained a map of carbon stocks and made explicit its associated uncertainty using a general indicator of reliability and a map presenting the areas where our prediction is the most uncertain. Finally, we highlighted the role of environmental factors on the range of uncertainty. The results have two implications. (1) Mapping prediction interval indicates areas where the map's reliability is the highest. This information increases the usefulness of ES maps in environmental planning and governance. (2) In the case of the studied indicator, the reliability of our prediction is very dependent on land cover type, on the site location and its biophysical, socioeconomic and political characteristics. A better understanding of the relationship between carbon stock and land-use classes would increase the reliability of the maps. Results of our analysis help to direct future research and fieldwork and to prevent decision-making based on unreliable maps.
生态系统服务地图的不确定性:使用回归分析的巴西亚马逊森林碳储量案例
生态系统服务地图已成为科学评估人类与自然相互作用的关键工具,并越来越多地用于环境规划和决策。然而,这些地图背后的相关认知不确定性往往没有得到系统的考虑。本文提出了一种基本程序,在将实地数据外推到更大的案例研究区域时,在ES指标(植被碳储量)的地图中显示统计可靠性较低的区域。为了说明我们的方法,我们使用回归分析对帕拉州巴西亚马逊森林中植被碳储量的空间分布进行了建模。在我们的分析中,我们使用了三个研究地点碳储量的实地数据测量作为响应变量,并使用遥感得出的各种土地特征作为ES指标的解释变量。我们使用回归方法绘制了碳储量图,并计算了三个可靠性指标:RMSE均方根误差、R2决定系数——来自样本外验证和预测区间。我们获得了一张碳储量地图,并使用一个通用的可靠性指标和一张地图明确了其相关的不确定性,该地图显示了我们的预测最不确定的领域。最后,我们强调了环境因素对不确定性范围的作用。结果有两个含义。(1) 映射预测间隔指示地图的可靠性最高的区域。这些信息增加了ES地图在环境规划和治理中的有用性。(2) 就所研究的指标而言,我们预测的可靠性在很大程度上取决于土地覆盖类型、场地位置及其生物物理、社会经济和政治特征。更好地了解碳储量和土地利用类别之间的关系将提高地图的可靠性。我们的分析结果有助于指导未来的研究和实地调查,并防止基于不可靠地图的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
One Ecosystem
One Ecosystem Environmental Science-Nature and Landscape Conservation
CiteScore
4.60
自引率
0.00%
发文量
26
审稿时长
12 weeks
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