基于自动聚类的神经网络地震预测震级分布空间分析

M. Shodiq, D. Kusuma, M. Rifqi, Ali Ridho Barakbah, T. Harsono
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引用次数: 6

摘要

本文基于印度尼西亚所有地区的地震资料,对震级分布进行了空间分析,以确定最优簇数。这些数据是从印度尼西亚气象、气候和地球物理局(BMKG)和美国地质调查局(USGS)获得的。聚类过程包括两个步骤:利用谷跟踪找到全局最优聚类数量和基于分层k均值的数据集聚类。得到的最优簇数为6个簇。采用人工神经网络(ann)模型对所选择的簇进行地震预测。神经网络模型的结构由7个输入、2个隐含层(每个隐含层有32个节点)和1个输出组成。采用反向传播训练方法和s型激活函数。输入值与b值、Bath定律和Omori-Utsu定律有关。人工神经网络的原型在地震发生后的五天内预测等于或大于给定阈值的地震。使用两个阈值(5.5和6)进行了统计检验。人工神经网络的结果表明,所提出的模型对于预测等于或大于6里氏震级的地震具有更好的性能。最后,将所得结果与其他人工神经网络模型进行了比较,显示出较好的定量和定性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial analisys of magnitude distribution for earthquake prediction using neural network based on automatic clustering in Indonesia
A spatial analysis of magnitude distribution is presented in this paper to identify the optimal number of clusters based on seismic data of all region in Indonesia. The data were obtained from Indonesian Agency for Meteorological, Climatological and Geophysics (BMKG) and United States Geological Survey's (USGS). Clustering process consist of two steps: finding the global optimum number of clusters using Valley Tracing and clustering the dataset based on Hierarchical K-means. The optimal number of cluster obtained is 6 cluster. A model of Artificial Neural Networks (ANNs) is implemented for selected cluster to conduct an earthquake prediction. The architecture of the neural network model is composed of seven inputs, two hidden layers with thirty-two nodes each and one output. Back propagation training method and sigmoid activation function are applied. The input values are related to the b-value, the Bath's law, and the Omori-Utsu's law. The ANNs prototype predicts earthquake which is equal or larger than the given threshold magnitude during the next five days after an earthquake occurrence. Statistical tests are provided using two threshold values (5.5 and 6). The ANNs result showed that the proposed model gave better performance to predict earthquake that equal or larger than 6 Richter's scale magnitude. Finally, the result were compared to other ANNs model showing quantitatively and qualitatively better results.
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