Detection precursor of sumatra earthquake based on ionospheric total electron content anomalies using N-Model Articial Neural Network

B. Aji, Thee Houw Liong, B. Muslim
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引用次数: 6

Abstract

Indonesia is a country located between the Indo-Australian, Euresian and the Pacific plate. Based on these facts, earthquakes are frequent in Indonesia, especially in Sumatra. Therefore, an early detection of an earthquake, also known as an earthquake precursor, is required. At the moment, some research is exploring the earthquake relation with Total Electron Content located in ionospere. Machine learning methods and artificial intelligence are used to detect earthquake precursors. This study focuses on the N-ANN (N-Model Neural Network Model) method for detecting earthquake precursors. In addition, this study uses the Dst (Disturbance Storm Time) Index to subtract the effects of geomagnetic storms from TEC. TEC data uses TEC GIM (Global Ionospheric Maps) at 00:00. The observed earthquakes were the December 2004 to March 2005 earthquakes. The experiments show that N-ANN is more stable with the 5 model ANN, 3 hidden layer and 2 neurons. Earthquake precursors found 3 to 0 days before the earthquake occurred. The experimental results on 16 earthquake events reach 76% accuracy, 81% recall, and 93% precision. It can be concluded that N-ANN can be considered to detect earthquake precursors for early detection of earthquakes as a warning system.
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基于电离层总电子含量异常的n型人工神经网络苏门答腊地震前兆探测
印度尼西亚是一个位于印度-澳大利亚板块、欧洲板块和太平洋板块之间的国家。基于这些事实,印度尼西亚地震频繁,特别是在苏门答腊岛。因此,需要对地震进行早期探测,也称为地震前兆。目前,一些研究正在探索地震与电离层总电子含量的关系。机器学习方法和人工智能被用来探测地震前兆。本文主要研究了N-ANN (N-Model Neural Network Model)地震前兆检测方法。此外,本研究使用Dst(扰动风暴时间)指数从TEC中减去地磁风暴的影响。TEC数据在00:00使用TEC GIM(全球电离层地图)。观测到的地震为2004年12月至2005年3月的地震。实验表明,5个模型、3个隐藏层和2个神经元的N-ANN更稳定。地震发生前3 ~ 0天发现的前兆。在16个地震事件上的实验结果达到了76%的正确率、81%的召回率和93%的精密度。可以认为,N-ANN可以作为一种预警系统,用于地震前兆的早期检测。
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