Adeli Hojjat, Panakkat Ashif
Department of Civil and Environmental Engineering and Geodetic Science, The Ohio State University, 2070 Neil Avenue, Columbus, OH 43210, USA.
Neural Netw. 2009 Sep;22(7):1018-24. doi: 10.1016/j.neunet.2009.05.003. Epub 2009 May 21.
A probabilistic neural network (PNN) is presented for predicting the magnitude of the largest earthquake in a pre-defined future time period in a seismic region using eight mathematically computed parameters known as seismicity indicators. The indicators considered are the time elapsed during a particular number (n) of significant seismic events before the month in question, the slope of the Gutenberg-Richter inverse power law curve for the n events, the mean square deviation about the regression line based on the Gutenberg-Richter inverse power law for the n events, the average magnitude of the last n events, the difference between the observed maximum magnitude among the last n events and that expected through the Gutenberg-Richter relationship known as the magnitude deficit, the rate of square root of seismic energy released during the n events, the mean time or period between characteristic events, and the coefficient of variation of the mean time. Prediction accuracies of the model are evaluated using three different statistical measures: the probability of detection, the false alarm ratio, and the true skill score or R score. The PNN model is trained and tested using data for the Southern California region. The model yields good prediction accuracies for earthquakes of magnitude between 4.5 and 6.0. The PNN model presented in this paper complements the recurrent neural network model developed by the authors previously, where good results were reported for predicting earthquakes with magnitude greater than 6.0.
提出了一种概率神经网络(PNN),用于使用八个数学计算参数(称为地震活动指标)预测地震区域在预定义未来时间段内最大地震的震级。所考虑的指标包括在所讨论月份之前特定数量(n)的重大地震事件期间经过的时间、n个事件的古登堡-里希特反幂律曲线的斜率、基于n个事件的古登堡-里希特反幂律的回归线的均方差、最后n个事件的平均震级、最后n个事件中观测到的最大震级与通过古登堡-里希特关系预期的震级之间的差异(称为震级赤字)、n个事件期间释放的地震能量平方根的速率、特征事件之间的平均时间或周期以及平均时间的变异系数。使用三种不同的统计量评估模型的预测准确性:检测概率、误报率和真技能得分或R得分。使用南加州地区的数据对PNN模型进行训练和测试。该模型对于震级在4.5至6.0之间的地震产生了良好的预测准确性。本文提出的PNN模型补充了作者之前开发的递归神经网络模型,在该模型中报告了对震级大于6.0的地震的良好预测结果。