Research on location selection of preset points for emergency supplies based on K-means clustering

Xu Wang, Shougeng Li
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引用次数: 1

Abstract

In order to effectively deal with emergencies and mitigate the possible consequences of various emergencies, this study uses the K-means clustering method to tackle the problems of the indeterminate number, location, and coverage of the existing emergency supplies preset points. Combined with the distribution of demand points, the size of demand, the distribution distance, the location of the reserve and other factors, the 165 demand points in Xuzhou are regionally divided, and the contour coefficient is used as the evaluation index to determine the optimal number of clusters of demand points. Then through python programming, a relocation model is constructed, and the demand weight and distance are used as influencing factors to traverse all demand points in different clustering areas, thereby determining the reserve of each clustering area. The research results can optimize the location of the reserve, reduce the rescue cost, and provide a reference for the location of the reserve for emergency supplies in China.
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基于k均值聚类的应急物资预设点选址研究
为了有效应对突发事件,减轻各种突发事件可能带来的后果,本研究采用k均值聚类方法解决现有应急物资预设点数量、位置、覆盖范围不确定的问题。结合需求点分布、需求规模、分布距离、储备位置等因素,对徐州165个需求点进行区域划分,并以等高线系数作为评价指标,确定需求点最优簇数。然后通过python编程构建重新定位模型,以需求权值和距离作为影响因素遍历不同聚类区域的所有需求点,从而确定每个聚类区域的储备。研究结果可以优化应急物资储备的选址,降低救援成本,为中国应急物资储备的选址提供参考。
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