基于环境污染案例的k - mediids算法在印尼省分中的应用

Muh. Hizbul Zainul Muttaqim, Ruliana Ruliana, Zulkifli Rais
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引用次数: 0

摘要

聚类分析是一种对具有相同特征的对象进行分组的方法。聚类分析中用于分组数据的方法之一是k - medioids方法。本研究采用K-Medoids方法对印尼各省进行环境污染分类。使用的变量是:遭受工厂废弃物水污染的街道/村庄数量、遭受生活废弃物水污染的街道/村庄数量、遭受工厂废弃物土壤污染的街道/村庄数量、遭受生活废弃物土壤污染的街道/村庄数量;受到工厂废物污染的街道/村庄数目,以及受到生活废物污染的街道/村庄数目。根据Davies Bouldin指数,得到了环境污染程度较低的31个省区和环境污染程度较高的3个省区组成的2个最佳集聚区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of K-Medoids Algorithm in Provincial Grouping in Indonesia Based On Case of Environmental Pollution
Cluster analysis is a method for grouping objects that have the same characteristics. One of the methods in cluster analysis used to group data is the K-Medoids method. In this study the K-Medoids method was applied to classify provinces in Indonesia based on environmental pollution. The variables used are: the number of sub-districts/villages that experience water pollution from factory waste, the number of sub-districts/villages that experience water pollution from household waste, the number of sub-districts/villages that experience soil pollution from factory waste, the number of sub-districts/villages that experience soil pollution from household waste, the number of sub-districts/villages that experience air pollution from factory waste and the number of sub-districts/villages that experience air pollution from household waste. Based on the Davies Bouldin Index, the 2 best clusters were obtained where the first cluster consisted of 31 provinces which had low environmental pollution and the second cluster consisted of 3 provinces which had high environmental pollution.
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