Using spatial aggregation of soil multifunctionality maps to support uncertainty-aware planning decisions

IF 4 2区 农林科学 Q2 SOIL SCIENCE
Léa Courteille, Philippe Lagacherie, Nadia Boukhelifa, Evelyne Lutton, Léa Tardieu
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引用次数: 0

Abstract

To ensure soil preservation, it is essential to incorporate the soil's ability to provide ecosystem services into the spatial planning process. For well-informed planning decisions, stakeholders need spatially explicit information on the state of the soils and the functions they fulfil, with sufficient spatial resolution and quantified uncertainty. It has been shown that Digital Soil Mapping (DSM) products can provide such information. However, in some cases, fine spatial resolution coupled with high levels of uncertainty may lead stakeholders to overlook the inherent uncertainties in the information. Spatial aggregation of DSM products opens up a promising avenue for obtaining maps that are more tailored to the users' scales of decision making while facilitating uncertainty communication. In this perspective, we propose a new spatial aggregation approach relying on spatially constrained agglomerative clustering (AC). The spatial aggregation approach is applied to a 25-m-resolution soil potential multifunctionality index (SPMI) map developed for the coastal plain of the Occitanie Region. This DSM product was increasingly aggregated to obtain SPMI maps of different resolutions displaying two distinct areal metrics: proportions of area above a given threshold of SPMI, and mean SPMI. Each map was evaluated through a set of indicators selected for their potential impact on user decision making: mean spatial resolution, overall predicted uncertainty, quantity of information and mean within-unit variability. The maps were compared with respect to these indicators to other maps obtained with alternative aggregation methods employed in DSM literature (maps aggregated according to some administrative units and QuadMaps). We show that all the tested aggregation methods produced a substantial decrease of the map uncertainty with moderate loss of spatial resolution. However, only AC preserved the fine spatial pattern of the initial DSM product while enabling fine tuning of the uncertainty displayed to end-users. We show that AC can simplify the identification of extensive regions characterized by low uncertainty without losing information regarding soil multifunctionality, thereby facilitating and enhancing the efficiency of planning decisions.

利用土壤多功能性地图的空间聚合来支持具有不确定性意识的规划决策
为确保土壤保护,必须将土壤提供生态系统服务的能力纳入空间规划过程。为了在充分知情的情况下做出规划决策,利益相关者需要关于土壤状况及其功能的明确空间信息,并具有足够的空间分辨率和量化的不确定性。事实证明,数字土壤制图(DSM)产品可以提供此类信息。然而,在某些情况下,精细的空间分辨率和高度的不确定性可能会导致利益相关者忽视信息中固有的不确定性。DSM 产品的空间聚合为获取更适合用户决策规模的地图开辟了一条前景广阔的途径,同时也有利于不确定性的交流。从这个角度出发,我们提出了一种新的空间聚合方法,它依赖于空间约束聚类(AC)。这种空间聚合方法适用于为奥西塔尼大区沿海平原绘制的 25 米分辨率土壤潜力多功能指数(SPMI)地图。对该 DSM 产品进行了越来越多的聚合,以获得不同分辨率的 SPMI 地图,显示两个不同的面积指标:SPMI 超过给定阈值的面积比例和平均 SPMI。每张地图都通过一组指标进行评估,这些指标是根据其对用户决策的潜在影响而选定的:平均空间分辨率、总体预测不确定性、信息量和单位内平均变异性。在这些指标方面,我们将这些地图与 DSM 文献中采用其他聚合方法(根据某些行政单位聚合的地图和 QuadMaps)获得的其他地图进行了比较。我们发现,所有测试过的聚合方法都大大降低了地图的不确定性,同时适度降低了空间分辨率。然而,只有 AC 可以在保留初始 DSM 产品的精细空间模式的同时,对显示给最终用户的不确定性进行微调。我们的研究表明,AC 可以简化以低不确定性为特征的大面积区域的识别,而不会丢失有关土壤多功能性的信息,从而促进和提高规划决策的效率。
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
European Journal of Soil Science
European Journal of Soil Science 农林科学-土壤科学
CiteScore
8.20
自引率
4.80%
发文量
117
审稿时长
5 months
期刊介绍: The EJSS is an international journal that publishes outstanding papers in soil science that advance the theoretical and mechanistic understanding of physical, chemical and biological processes and their interactions in soils acting from molecular to continental scales in natural and managed environments.
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