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Neural Network Model for Earthquake Prediction Using DMETER Data and Seismic Belt Information

机译:DMETER数据和地震带信息的神经网络地震预测模型

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The mechanism of the earthquake remains to be investigated, though some anomalies associated with earthquakes have been found by DEMETER satellite observations. The next step is to use the DEMETER data for earthquake prediction. It is a useful and feasible way to use the self-adaptive artificial neural network to construct relations between various symptom factors and earthquake occurrences. The back-propagation neural network is quite suitable to express the nonlinear relation between earthquake and various anomalies. In this paper a series of physical quantities measured by the DEMETER satellite including Electron density, Electron temperature, ions temperature and oxygen ion density, together with seismic belt information are used to form sample sets for a back-propagation neural network. The neural network model then can be used to conduct the prediction. In the end, validation tests are performed based on those important seismic events happened in 2008.
机译:尽管通过DEMETER卫星观测发现了一些与地震有关的异常现象,但地震的机制仍有待研究。下一步是将DEMETER数据用于地震预测。利用自适应人工神经网络构建各种症状因素与地震发生之间的关系是一种有用且可行的方法。反向传播神经网络非常适合表达地震与各种异常之间的非线性关系。在本文中,由DEMETER卫星测量的一系列物理量(包括电子密度,电子温度,离子温度和氧离子密度)以及地震带信息被用于形成反向传播神经网络的样本集。然后可以使用神经网络模型进行预测。最后,根据2008年发生的重要地震事件进行了验证测试。

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