使用无监督k-均值聚类确定自然灾害缓解水平

Abdurrakhman Prasetyadi, Budi Nugroho, Merios Gusan Putra
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引用次数: 0

摘要

这项工作旨在使用无监督聚类方法生成决策支持系统,根据其缓解工作对地区/城市的数量进行分类。利用数据挖掘技术和k-均值聚类算法,可以解决涉及基于自然灾害缓解措施的地区/城市数量数据的问题。Ms. Excel用于估计三个集群的质心值:高期望水平集群(C1),中等期望水平集群(C2)和低期望水平集群(C3) (C3)。我们的试验突出了根据自然灾害准备工作对地区/城市进行分类的结果,其中两个高水平地区/城市,即明打威群岛县和南楠榜县,47个中等水平的县/城市,32个其他地区/城市,包括低水平集群。研究结果可作为区/市政府的建议,以改善区/市的设施和基础设施,以适应基于集群的自然灾害减灾工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining Natural Disaster Mitigation Level using Unsupervised k-means Clustering
This work intends to categorize the number of districts/cities based on their mitigation efforts using unsupervised clustering approaches to generate decision support systems. Using data mining techniques and k-means clustering algorithms, it is possible to address problems involving data on the number of districts/cities based on natural disaster mitigation measures. Ms. Excel is used to estimate the value of the centroid for three clusters: the high expectation level cluster (C1), the medium anticipation level cluster (C2), and the low anticipation level cluster (C3) (C3). Our trials highlighted the outcomes of categorizing districts/cities based on their natural disaster preparedness efforts with two high-level districts/cities, namely Mentawai Islands Regency and South Lampung Regency, 47 regencies/cities at medium level 32 other districts/cities including low-level clusters. The results can be adopted as a recommendation for the district/city government to improve facilities and infrastructure in the district/city conforming to the efforts of natural disaster mitigation based on the clusters.
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