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Introducing the coupled stepwise areal constraining and Mahalanobis distance: a promising MCDM-based probabilistic model for landfill site selection

机译:介绍耦合的逐步面积约束和Mahalanobis距离:垃圾填埋场选择的基于希望的基于MCDM的概率模型

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This study sets out to propose a new ensemble of probabilistic spatial modeling and multi-criteria decision-making comprised of stepwise areal constraining and Mahalanobis distance algorithms in order to assess areal suitability for landfilling. The Ardak watershed was selected as the study area due to encountering several cases of open garbage dumps and uncontrolled landfills which are one of the main sources of river water pollution in the upstream of the Ardak dam. The results revealed that the proposed algorithm successfully assists in inventory-irrespective probabilistic modeling of landfill siting which is mainly indebted to the role of areal constraining in providing training and validation samples for the Mahalanobis distance model. The latter also showed a robust pattern recognition results from which a discernible differentiation of the area was attained while the spatial dependencies between the environmental factors were taken into account. Mahalanobis distance also gave an outstanding performance in terms of goodness of fit (area under the success rate 89.367) and prediction power (area under the success rate 89.252). Based on a five-point scale classification scheme, about 2.7% and 2.6% of the study area, respectively, have high and very high suitability for landfilling, while the remaining area is shared between very low-to-moderate suitability classes. According to the current trail of literature regarding landfill site selection which mostly relies on mere areal filtering, a probabilistic model would give invaluable inferences regarding the pattern of suitability/susceptibility of the area of interest and causative role of the influential factors.
机译:本研究提出了一种新的概率空间建模和由逐步区域约束和Mahalanobis距离算法组成的多标准决策,以评估填埋的面积适宜性。由于遇到几个开放的垃圾垃圾堆和不受控制的垃圾填埋场,因此选择了Ardak流域作为研究领域,这些垃圾填埋场是Ardak大坝上游河水污染的主要来源之一。结果表明,该算法成功地有助于清点 - 无论垃圾填埋场的概率模型,主要感应为Mahalanobis距离模型提供训练和验证样本的体积约束。后者还展示了一种稳健的模式识别结果,其中达到了该区域的可辨别分化,同时考虑了环境因素之间的空间依赖性。 Mahalanobis距离也在适合良好(成功率89.367)和预测权(成功率89.252的面积)方面发出了出色的表现。基于五分比例分类方案,分别为约2.7%和2.6%的研究区域,对填埋场具有高而非常高的适用性,而剩余区域是在非常低于适度的适用性等级之间共用。根据关于垃圾填埋场选择的文献的当前迹线,主要依赖于仅仅造成的区域滤波,概率模型将为有关感兴趣区域的兴趣范围/易感性的适用性/易感性模式提供宝贵的推论。

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