Comparison of DBSCAN and PCA-DBSCAN Algorithm for Grouping Earthquake Area

Mustakim, E. Rahmi, Mediantiwi Rahmawita Mundzir, Said Thaufik Rizaldi, Okfalisa, Idria Maita
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引用次数: 7

Abstract

Geologically, the territory of Indonesia is where the three active tectonic plates meet which are always moving and colliding with each other, resulting in earthquakes, volcanic pathways, and faults. Earthquake is a natural disaster that cannot be avoided or prevented, but the consequences of earthquakes can be minimized. Based on data obtained from Meteorology, Climatology and Geophysics Agency (MCGA), earthquakes often occur in Indonesia. Data obtained from earthquakes can be grouped to map the area of earthquake occurrence and an analysis will be carried out to determine the characteristics of earthquake clustering areas. The clustering in this is study conducted with two experiments, first experiment is Density-Based Spatial Clustering of Applications with Noise (DBSCAN) without dimensional reduction and second experiment is DBSCAN clustering with dimensional reduction using Principal Component Analysis (PCA). The best cluster results can be found by calculating the value of Silhouette Index (SI) of each cluster. From the two experiments, the highest SI value was obtained in experiment using PCA, which was 0.4137. Then the second experiment was used as the best cluster results with the highest Dept and Magnitude features in clusters 19 and 17 which showed the 5 main regions where earthquakes often occur are Sumatra, Banda Sea, Moluccan Sea, Irian Jaya and Sulawesi
DBSCAN算法与PCA-DBSCAN算法在震区分组中的比较
从地质上讲,印度尼西亚的领土是三个活跃的构造板块的交汇处,它们总是相互移动和碰撞,导致地震、火山通道和断层。地震是一种无法避免或预防的自然灾害,但地震的后果可以最小化。根据气象、气候学和地球物理局(MCGA)获得的数据,印度尼西亚经常发生地震。从地震中获得的数据可以分组以绘制地震发生区域图,并进行分析以确定地震聚集区的特征。本研究通过两个实验进行聚类,第一个实验是不降维的基于密度的带噪声应用空间聚类(DBSCAN),第二个实验是使用主成分分析(PCA)进行降维的DBSCAN聚类。通过计算每个聚类的剪影指数(Silhouette Index, SI)值,找到最佳聚类结果。在两个实验中,主成分分析法得到的SI值最高,为0.4137。然后将第2次实验作为最佳聚类结果,在第19和17聚类中具有最高的震级和震级特征,显示出地震多发的5个主要区域是苏门答腊、班达海、摩鹿加海、伊里安查亚和苏拉威西
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