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基于统计方法得到的地下水脆弱性图的可靠性。

Reliability of groundwater vulnerability maps obtained through statistical methods.

机构信息

Dipartimento di Scienze della Terra - Ardito Desio, Università degli Studi di Milano, Via Mangiagalli 34, 20133 Milan, Italy.

出版信息

J Environ Manage. 2011 Apr;92(4):1215-24. doi: 10.1016/j.jenvman.2010.12.009. Epub 2011 Jan 5.

Abstract

Statistical methods are widely used in environmental studies to evaluate natural hazards. Within groundwater vulnerability in particular, statistical methods are used to support decisions about environmental planning and management. The production of vulnerability maps obtained by statistical methods can greatly help decision making. One of the key points in all of these studies is the validation of the model outputs, which is performed through the application of various techniques to analyze the quality and reliability of the final results and to evaluate the model having the best performance. In this study, a groundwater vulnerability assessment to nitrate contamination was performed for the shallow aquifer located in the Province of Milan (Italy). The Weights of Evidence modeling technique was used to generate six model outputs, each one with a different number of input predictive factors. Considering that a vulnerability map is meaningful and useful only if it represents the study area through a limited number of classes with different degrees of vulnerability, the spatial agreement of different reclassified maps has been evaluated through the kappa statistics and a series of validation procedures has been proposed and applied to evaluate the reliability of the reclassified maps. Results show that performance is not directly related to the number of input predictor factors and that is possible to identify, among apparently similar maps, those best representing groundwater vulnerability in the study area. Thus, vulnerability maps generated using statistical modeling techniques have to be carefully handled before they are disseminated. Indeed, the results may appear to be excellent and final maps may perform quite well when, in fact, the depicted spatial distribution of vulnerability is greatly different from the actual one. For this reason, it is necessary to carefully evaluate the obtained results using multiple statistical techniques that are capable of providing quantitative insight into the analysis of the results. This evaluation should be done at least to reduce the questionability of the results and so to limit the number of potential choices.

摘要

统计方法广泛应用于环境研究中,以评估自然灾害。特别是在地下水脆弱性方面,统计方法被用于支持环境规划和管理的决策。通过统计方法生成的脆弱性图可以极大地帮助决策。在所有这些研究中,关键点之一是模型输出的验证,这是通过应用各种技术来分析最终结果的质量和可靠性并评估具有最佳性能的模型来实现的。在这项研究中,对位于米兰省(意大利)的浅层含水层的硝酸盐污染地下水脆弱性进行了评估。使用证据权重建模技术生成了六个模型输出,每个模型输出都使用不同数量的输入预测因子。考虑到只有通过具有不同脆弱性程度的有限数量的类别来表示研究区域,脆弱性图才有意义且有用,因此通过kappa 统计评估了不同重分类图的空间一致性,并提出并应用了一系列验证程序来评估重分类图的可靠性。结果表明,性能与输入预测因子的数量没有直接关系,并且可以在看似相似的地图中确定那些最能代表研究区域地下水脆弱性的地图。因此,在传播之前,必须仔细处理使用统计建模技术生成的脆弱性图。事实上,结果可能看起来非常出色,最终地图的表现可能相当不错,而实际上脆弱性的空间分布与实际情况大不相同。因此,有必要使用多种能够提供对结果分析的定量见解的统计技术来仔细评估所获得的结果。至少应进行这种评估,以减少对结果的质疑,从而限制潜在选择的数量。

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