基于神经网络的地震信号异常预测

A. Waibel, A. Alshehri, Soundararajan Ezekiel
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引用次数: 2

摘要

在本文中,我们提出了一种预测观测信号近期异常的鲁棒技术。首先对信号进行小波去噪处理。接下来,峰值查找算法搜索在整个信号中频繁出现的较小异常。然后,将来自寻峰算法的数据输入前馈神经网络,该神经网络预测信号中稍后发生异常事件的可能性。神经网络使用监督学习技术进行训练,数据集由已知异常事件之前的信号和已知无显著异常的信号混合组成。我们的方法提供了一种预测大事件信号的方法,如地震图、脑电图、脑电图和其他非平稳信号。当使用地震信号预测地震时,所提出的技术的准确率达到83%,因此是预测地震事件的有效策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly prediction in seismic signals using neural networks
In this paper, we present a robust technique for predicting anomalies in the near future of an observed signal. First, wavelet de-noising is applied to the signal. Next, peak-finding algorithms search for smaller anomalies that appear frequently throughout the signal. Then the data from the peak-finding algorithm is fed into a feed-forward neural which predicts the likelihood of an anomalous event occurring later in the signal. The neural network is trained using supervised learning techniques with data sets consisting of a mix of signals known to precede anomalous events, and signals known to be free of significant anomalies. Our approach provides a means of predicting large events in signals such as seismograms, EKGs, EEGs, and other non-stationary signals. The proposed technique yielded 83% accuracy when used to predict earthquakes using seismic signals, and so is an effective strategy for predicting seismic events.
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