根据该省的预期/减少努力,对多个村庄/村庄进行了聚合算法的应用

Mhd Gading Sadewo, Agus Perdana Windarto, Anjar Wanto
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引用次数: 45

摘要

自然灾害是对人类产生重大影响的自然事件。印度尼西亚位于环太平洋火山带(一个有许多构造活动的地区),必须继续面临火山爆发、地震、洪水和海啸的风险。聚类算法在基于k均值的省预减灾村数分组中的应用这一研究数据的来源是根据国家统计局编制的载有村庄/克鲁拉汉数量的文件收集的,这些文件是根据自然灾害减轻/减轻工作编制的。本研究使用的数据为省级数据,由34个省份组成。使用了4个变量,分别是自然灾害预警系统、海啸预警系统、安全设备、疏散线。数据将分成3个聚类进行处理,即高预期/缓解水平的聚类、中等预期/缓解水平的聚类和低预期/缓解水平的聚类。从评估过程中获得的结果是根据自然灾害预测/缓解努力的村/克鲁拉汉指数得出的,其中有3个省的预期/缓解程度高,即西爪哇、中爪哇、东爪哇,9个省的预期/缓解程度中等,另外22个省的预期/缓解程度低。根据已开展的基于集群的减轻自然卫生灾害/减灾工作,这可以作为对政府、对村庄/村庄更关注的省份的投入。关键词:数据挖掘,自然灾害,聚类,k均值
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PENERAPAN ALGORITMA CLUSTERING DALAM MENGELOMPOKKAN BANYAKNYA DESA/KELURAHAN MENURUT UPAYA ANTISIPASI/ MITIGASI BENCANA ALAM MENURUT PROVINSI DENGAN K-MEANS
Natural disasters are natural events that have a large impact on the human population. Located on the Pacific Ring of Fire (an area with many tectonic activities), Indonesia must continue to face the risk of volcanic eruptions, earthquakes, floods, tsunamis. Application of Clustering Algorithm in Grouping the Number of Villages / Villages According to Anticipatory / Natural Disaster Mitigation Efforts by Province With K-Means. The source of this research data is collected based on documents that contain the number of villages / kelurahan according to natural disaster mitigation / mitigation efforts produced by the National Statistics Agency. The data used in this study is provincial data consisting of 34 provinces. There are 4 variables used, namely the Natural Disaster Early Warning System, Tsunami Early Warning System, Safety Equipment, Evacuation Line. The data will be processed by clustering in 3 clushter, namely clusther high level of anticipation / mitigation, clusters of moderate anticipation / mitigation levels and low anticipation / mitigation levels. The results obtained from the assessment process are based on the Village / Kelurahan index according to the Natural Disaster Anticipation / Mitigation Efforts with 3 provinces of high anticipation / mitigation levels, namely West Java, Central Java, East Java, 9 provinces of moderate anticipation / mitigation, and 22 other provinces including low anticipation / mitigation. This can be an input to the government, the provinces that are of greater concern to the Village / Village According to the Natural Health Disaster Mitigation / Mitigation Efforts based on the cluster that has been carried out.Keywords: Data Mining, Natural Disaster, Clustering, K-Means
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