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Intelligent Real-Time Earthquake Detection by Recurrent Neural Networks

机译:经常性神经网络智能实时地震检测

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Taiwan that is located at the junction of the Eurasian Plate and the Philippine Sea Plate is one of the most active seismic zones in the world. Devastating earthquakes have occurred around the island and have caused severe damages from time to time. To avoid the severe loss, earthquake early warning (EEW) is of great importance, and one of the most critical issues of EEW is fast and reliable detection for the presence of earthquakes. Traditional methods for earthquake detection usually use criterion-based algorithms to detect the onset of the earthquake waves. Currently, the thresholds for those criteria are usually decided empirically and may result in excessive false alarms. Obviously, false alarms can cause undue panics and diminish the credibility of the system. In this article, the recurrent neural network (RNN) models are adopted to develop a real-time EEW system. The developed system is designed to identify the occurrence of an earthquake event, and the duration of the P-wave and the S-wave. It was trained and tested using the seismograms recorded in Taiwan from 2016 to 2017. From the simulation results, the proposed scheme outperforms the traditional criterion-based schemes in terms of detection accuracy and processing time.
机译:台湾位于欧亚板块的交界处,菲律宾海底是世界上最活跃的地震区之一。岛屿周围发生了毁灭性的地震,并且不时造成严重损害。为了避免严重的损失,地震预警(EEW)具有重要意义,而且EEW最关键的问题之一是对地震的存在的快速可靠。地震检测的传统方法通常使用基于准则的算法来检测地震波的开始。目前,这些标准的阈值通常通常凭经验决定,可能导致过多的误报。显然,误报可能会导致过度的恐慌和减少系统的可信度。在本文中,采用经常性神经网络(RNN)模型来开发实时EEW系统。开发系统旨在识别地震事件的发生以及P波和S波的持续时间。从2016年到2017年,使用台湾记录的地震图进行了培训和测试。从模拟结果,所提出的方案在检测准确性和处理时间方面优于传统的基于标准的方案。

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