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Backpropagation neural network as earthquake early warning tool using a new modified elementary Levenberg–Marquardt Algorithm to minimise backpropagation errors

机译:反向传播神经网络作为地震预警工具,使用新的改进的基本Levenberg-Marquardt算法将反向传播误差降至最低

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A new modified elementary Levenberg–Marquardt Algorithm (M-LMA) was used to minimise backpropagation errors in training a backpropagation neural network (BPNN) to predict the records related to the Chi-Chi earthquake from four seismic stations: Station-TAP003, Station-TAP005, Station-TCU084, and Station-TCU078 belonging to the Free Field Strong Earthquake Observation Network, with the learning rates of 0.3, 0.05, 0.2, and 0.28, respectively. For these four recording stations, the M-LMA has been shown to produce smaller predicted errors compared to the Levenberg–Marquardt Algorithm (LMA). A sudden predicted error could be an indicator for Early Earthquake Warning (EEW), which indicated the initiation of strong motion due to large earthquakes. A trade-Off decision-making process with BPNN (TDPB), using two alarms, adjusted the threshold of the magnitude of predicted error without a mistaken alarm. With this approach, it is unnecessary to consider the problems of characterising the wave phases and pre-processing, and does not require complex hardware; an existing seismic monitoring network-covered research area was already sufficient for these purposes.
机译:在训练反向传播神经网络(BPNN)来预测来自四个地震台站的Chi-Chi地震的相关记录时,采用了一种新的改进的基本Levenberg-Marquardt算法(M-LMA)来最小化反向传播误差。 TAP005,Station-TCU084和Station-TCU078属于自由场强地震观测网络,学习率分别为0.3、0.05、0.2和0.28。对于这四个记录站,与Levenberg-Marquardt算法(LMA)相比,已证明M-LMA产生较小的预测误差。突然的预测误差可能是早期地震预警(EEW)的指标,该预警表明由于大地震而发起了强烈运动。 BPNN(TDPB)的权衡决策过程使用两个警报,在没有错误警报的情况下调整了预测错误幅度的阈值。通过这种方法,无需考虑表征波相位和预处理的问题,并且不需要复杂的硬件。用于这些目的的现有地震监测网络覆盖的研究区域已经足够。

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