论文标题
使用高斯过程回归后,主要冲击后立即预测余震的时间变化
Forecasting temporal variation of aftershocks immediately after a main shock using Gaussian process regression
论文作者
论文摘要
揭示大小的分布和余震的到达时间是理解地震序列特征的关键,这使我们能够预测地震活动和危害评估。但是,由于到达地震波的污染物,主要冲击后立即确定余震的数量实际上很难。为了克服难度,我们基于包含检测功能的检测数据构建了可能性的可能性,该数据应用了高斯过程回归(GPR)。 GPR不仅能够估算余震分布的参数以及检测功能,还可以估算参数和检测函数的可靠间隔。分布高斯过程和余震的属性是指数函数,这会导致有效的贝叶斯计算算法来估计超参数。通过数值测试进行验证后,提出的方法被追溯地应用于与2004年Chuetsu地震相关的目录数据,以提早预测余震。结果表明,所提出的方法稳定地估算了分布的参数,即使在主要冲击后三个小时内,也可以同时估算其可靠的间隔。
Uncovering the distribution of magnitudes and arrival times of aftershocks is a key to comprehend the characteristics of the sequence of earthquakes, which enables us to predict seismic activities and hazard assessments. However, identifying the number of aftershocks immediately after the main shock is practically difficult due to contaminations of arriving seismic waves. To overcome the difficulty, we construct a likelihood based on the detected data incorporating a detection function to which the Gaussian process regression (GPR) is applied. The GPR is capable of estimating not only the parameters of the distribution of aftershocks together with the detection function but also credible intervals for both of the parameters and the detection function. A property that distributions of both the Gaussian process and aftershocks are exponential functions leads to an efficient Bayesian computational algorithm to estimate the hyperparameters. After the validations through numerical tests, the proposed method is retrospectively applied to the catalog data related to the 2004 Chuetsu earthquake towards early forecasting of the aftershocks. The result shows that the proposed method stably estimates the parameters of the distribution simultaneously their credible intervals even within three hours after the main shock.