An analysis of natural disaster data by using K-means and K-medoids algorithm of data mining techniques

Prihandoko, Bertalya, Muhammad Iqbal Ramadhan
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引用次数: 13

Abstract

Indonesia is one of the countries with diverse morphology of the lands, high mountains, and the tropical climates of frequent high rainfall. This condition often causes natural disasters in some areas of the country, which sometimes are so terrible that make a lot of people are missing and suffering. In order to reduce the impact of natural disasters to the people and environment, a research was conducted by capturing data showing the occurrence of the disasters and data about the weather conditions for the last five years. Data is obtained from the official sites of Indonesian National Board for Disaster Management (BNPB) and Indonesian Agency for Meteorological, Climatological, and Geophysics (BMKG). This data is then analyzed by using clustering data mining techniques i.e. k-means algorithm and k-medoids algorithm. The two methods are frequently used to make some analysis of data to find some hidden information. The result shows that weather is not the only factor causing natural disaster. By using the result, the government can make some plans for natural disaster mitigations.
利用数据挖掘技术中的K-means和k - medioids算法对自然灾害数据进行分析
印度尼西亚是一个土地形态多样、高山林立、热带气候频繁降雨的国家。这种情况经常在该国的一些地区造成自然灾害,有时是如此可怕,使许多人失踪和痛苦。为了减少自然灾害对人类和环境的影响,通过收集显示灾害发生的数据和过去五年的天气条件数据进行了一项研究。数据来自印度尼西亚国家灾害管理委员会(BNPB)和印度尼西亚气象、气候和地球物理机构(BMKG)的官方网站。然后使用聚类数据挖掘技术(即k-means算法和k-medoids算法)对这些数据进行分析。这两种方法经常用于对数据进行一些分析,以发现一些隐藏的信息。结果表明,天气并不是造成自然灾害的唯一因素。通过使用这些结果,政府可以制定一些减轻自然灾害的计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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