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Comparative Analysis of K-Means and Isodata Algorithms for Clustering of Fire Point Data in Sumatra Region

机译:苏门答腊地区火点数据群体k型施用和ISODATA算法的比较分析

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Forest, land, or residential fire is a familiar phenomenon in Indonesia for last decade. The high number of fire incidents in Indonesia requires attention from the government so that any natural disasters such as forest fires can be resolved. These fire incidents can be analyzed since the data has already been obtained and recorded from satellite. Unfortunately, the data is too large to be analyzed as it was. Based on data obtained from the EOSDIS website, recorded as many as 289,256 fire spots occur in the region of Sumatra in the timeframe between 2001 and 2014. It needs an algorithm to segment the data or clusters the data so that large data can be processed into good information for the user. In this study, a comparative study of clustering algorithms between the K-Means and the Isodata was conducted. Both algorithms used in this study were assessed based on the quality of the clusters produced, which is calculated using Silhouette Coefficient (SC). The final result value of Silhouette Coefficient the K-Means method is 0.999997187, and the Isodata method is 0.999957161. so in this case, K-Means algorithm has a higher SC value compared to the Isodata algorithm in clustering the data of fire spots with a small SC value difference.
机译:森林,土地或住宅火灾是过去十年印度尼西亚的熟悉现象。印度尼西亚的大量火灾事件需要政府的关注,以便可以解决任何自然灾害等自然灾害。可以分析这些火灾事件,因为已经从卫星获得并记录了数据。不幸的是,数据太大而无法分析。基于从EOSDIS网站获得的数据,在2001年和2014年之间的时间帧中录制了多达289,256的火灾点。它需要一种算法来分割数据或群集数据,以便可以处理大数据用户的良好信息。在该研究中,进行了K均值与ISODATA之间的聚类算法的比较研究。本研究中使用的这两种算法基于产生的簇的质量来评估,其使用轮廓系数(SC)计算。剪影系数的最终结果值K-means方法为0.999997187,ISODATA方法为0.999957161。因此,在这种情况下,K-Means算法与群体算法与小SC值差异集聚的ISODATA算法相比具有更高的SC值。

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