Automatic arrival time detection for earthquakes based on fuzzy possibilistic C-Means clustering algorithm

O. Saad, A. Shalaby, M. Sayed
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引用次数: 5

Abstract

Earthquake Early Warning System (EEWS) has a great impact on reducing the harm effects resulting from earthquakes such as human death, nuclear leakage, contamination of water, and properties damage. In this paper, we proposed a new approach to detect the arrival time of the earthquakes which is the main module in the EEWS. The proposed algorithm based on Fuzzy Possibilistic C-Means (FPCM) clustering algorithm. FPCM divide the signal into two groups, seismic noise, and seismic signal. The degrees of membership computed, and a Dual-thresholds system applied as a basis for classification to detect the arrival time accurately. The proposed algorithm has high accuracy on picking the arrival time of the earthquake. It achieved arrival time picking accuracy of 90.7 % with a standard deviation of 0.105 seconds for 407 field seismic waveforms. Also, the results show that the proposed algorithm can detect the arrival time for micro-earthquakes accurately despite the existence of low Signal to Noise ratio (SNR). The proposed algorithm can deal with the seismic signal with SNR as low as −10 dB.
基于模糊可能性c均值聚类算法的地震自动到达时间检测
地震预警系统(EEWS)对减少地震造成的人员死亡、核泄漏、水污染、财产损失等危害影响具有重要作用。本文提出了一种新的地震到达时间检测方法,该方法是EEWS的主要模块。该算法基于模糊可能性c均值(FPCM)聚类算法。FPCM将信号分为地震噪声和地震信号两组。计算隶属度,并采用双阈值系统作为分类基础,准确检测到达时间。该算法在地震到达时间的选取上具有较高的精度。该方法对407种地震波形的到达时间提取精度为90.7%,标准偏差为0.105秒。实验结果表明,在低信噪比条件下,该算法仍能准确地检测出微震的到达时间。该算法可以处理信噪比低至−10 dB的地震信号。
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