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Bayesian forecasting of recurrent earthquakes and predictive performance for a small sample size

机译:小样本量的贝叶斯反复地震预测和预测性能

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This paper presents a Bayesian method of probability forecasting for a renewal of earthquakes. When only limited records of characteristic earthquakes on a fault are available, relevant prior distributions for renewal model parameters are essential to computing unbiased, stable time-dependent earthquake probabilities. We also use event slip and Geol.ogical slip rate data combined with historical earthquake records to improve our forecast model. We Appl.y the Brownian Passage Time (BPT) model and make use of the best fit prior distribution for its coefficient of variation (the shape parameter, alpha) relative to the mean recurrence time because the Earthquake Research Committee (ERC) of Japan uses the BPT model for long-term forecasting. Currently, more than 110 active faults have been evaluated by the ERC, but most include very few paleoseismic events. We objectively select the prior distribution with the Akaike Bayesian Information Criterion using all available recurrence data including the ERC datasets. These data also include mean recurrence times estimated from slip per event divided by long-term slip rate. By comparing the goodness of fit to the historical record and simulated data, we show that the proposed predictor provides more stable performance than plug-in predictors, such as maximum likelihood estimates and the predictor currently adopted by the ERC.
机译:本文提出了一种用于地震更新的概率预测的贝叶斯方法。当只有关于断层的特征地震的有限记录可用时,更新模型参数的相关先验分布对于计算无偏差,稳定的随时间变化的地震概率至关重要。我们还将事件滑动和地质滑动率数据与历史地震记录相结合,以改进我们的预测模型。我们采用布朗旅行时间(BPT)模型,并使用最佳拟合先验分布作为其相对于平均复发时间的变异系数(形状参数,α),因为日本地震研究委员会(ERC)使用了BPT模型进行长期预测。目前,ERC已评估了110多个活动断层,但其中大多数都没有发生古地震事件。我们使用包括ERC数据集在内的所有可用递归数据,使用Akaike贝叶斯信息准则客观地选择先验分布。这些数据还包括根据每个事件的滑差估计的平均复发时间除以长期滑差率。通过比较与历史记录和模拟数据的拟合优度,我们表明,所提出的预测器比插入式预测器(例如最大似然估计和ERC当前采用的预测器)提供更稳定的性能。

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