使用DBSCAN算法对印度尼西亚地区2018-2020年期间地震活动进行聚类

Akrima Amalia, U. Harmoko, G. Yuliyanto
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引用次数: 0

摘要

印度尼西亚位于3个不断运动的大型活动板块的交汇处。因此,印度尼西亚是地震活动风险较高的国家之一。本研究旨在基于坐标数据对印尼地区地震活动数据进行分类,坐标数据包含地震活动发生频率、深度和强度等变量数据。地震活动数据来自BMKG官方网站,使用的数据为2018年至2020年。使用的聚类技术是DBSCAN算法。该算法需要epsilon和MinPts输入参数。然后将使用轮廓系数验证形成的群集的结果。基于坐标数据,在4个扰动下形成4个聚类。基于特征数据,通过5个扰动形成3个聚类。得到的轮廓系数对坐标数据为0.35,对特征数据为0.39。该研究有助于提高丰富的地震活动性信息的利用价值,并可作为减轻地震活动性自然灾害的一项努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering of seismicity in the Indonesian Region for the 2018-2020 Period using the DBSCAN Algorithm
Indonesia is located at the confluence of 3 large, active plates that are constantly moving. Therefore, Indonesia is one of the countries that has a high level of seismicity risk. This study aims to classify seismicity data in the Indonesian region based on coordinate data which contains variable data on frequency of occurrence, depth, and strength of seismicity. Seismicity data was obtained from the BMKG official website using data for the period 2018 to 2020. The clustering technique used was the DBSCAN algorithm. This algorithm requires epsilon and MinPts input parameters. The results of the cluster formed will then be validated using silhouette coefficients. Based on the coordinate data, 4 clusters were formed with 4 disturbances. Based on the characteristic data, 3 clusters were formed with 5 disturbances. The silhouette coefficient obtained was 0.35 for coordinate data and 0.39 for characteristic data. This research is useful for increasing the use value of abundant seismicity information and can be used as an effort to mitigate seismicity natural disasters.
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