Author:
Sheng Jian,Mu Dongmei,Zhang Hongyan,Lv Han
Abstract
It is well known that earthquakes are a regional event, strongly controlled by local geological structures and
circumstances. Reducing the research area can reduce the influence of other irrelevant seismotectonics. A new sub regiondividing
scheme, considering the seismotectonics influence, was applied for the artificial neural network (ANN) earthquake
prediction model in the northeast seismic region of China (NSRC). The improved set of input parameters and prediction
time duration are also discussed in this work. The new dividing scheme improved the prediction accuracy for different
prediction time frames. Three different research regions were analyzed as an earthquake data source for the ANN
model under different prediction time duration frames. The results show: (1) dividing the research region into smaller subregions
can improve the prediction accuracies in NSRC, (2) larger research regions need shorter prediction durations to
obtain better performance, (3) different areas have different sets of input parameters in NSRC, and (4) the dividing
scheme, considering the seismotectonics frame of the region, yields better results.
Publisher
Bentham Science Publishers Ltd.
Subject
Civil and Structural Engineering
Cited by
2 articles.
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