Zlydenko Oleg, Elidan Gal, Hassidim Avinatan, Kukliansky Doron, Matias Yossi, Meade Brendan, Molchanov Alexandra, Nevo Sella, Bar-Sinai Yohai
Google Research, Tel-Aviv, Israel.
Google Research, Cambridge, MA, USA.
Sci Rep. 2023 Jul 31;13(1):12350. doi: 10.1038/s41598-023-38033-9.
Forecasting the timing of earthquakes is a long-standing challenge. Moreover, it is still debated how to formulate this problem in a useful manner, or to compare the predictive power of different models. Here, we develop a versatile neural encoder of earthquake catalogs, and apply it to the fundamental problem of earthquake rate prediction, in the spatio-temporal point process framework. The epidemic type aftershock sequence model (ETAS) effectively learns a small number of parameters to constrain the assumed functional forms for the space and time correlations of earthquake sequences (e.g., Omori-Utsu law). Here we introduce learned spatial and temporal embeddings for point process earthquake forecasting models that capture complex correlation structures. We demonstrate the generality of this neural representation as compared with ETAS model using train-test data splits and how it enables the incorporation additional geophysical information. In rate prediction tasks, the generalized model shows [Formula: see text] improvement in information gain per earthquake and the simultaneous learning of anisotropic spatial structures analogous to fault traces. The trained network can be also used to perform short-term prediction tasks, showing similar improvement while providing a 1000-fold reduction in run-time.
预测地震发生的时间是一个长期存在的挑战。此外,如何以一种有用的方式来阐述这个问题,或者如何比较不同模型的预测能力,仍然存在争议。在此,我们开发了一种通用的地震目录神经编码器,并将其应用于时空点过程框架下地震发生率预测的基本问题。震后余震序列的流行模型(ETAS)有效地学习了少量参数,以约束地震序列时空相关性的假设函数形式(例如大森 - 宇津定律)。在这里,我们为点过程地震预测模型引入了学习到的空间和时间嵌入,以捕捉复杂的相关结构。通过使用训练 - 测试数据划分,我们展示了这种神经表示与ETAS模型相比的通用性,以及它如何能够纳入额外的地球物理信息。在发生率预测任务中,广义模型在每次地震的信息增益方面显示出[公式:见原文]的提升,同时能够同时学习类似于断层痕迹的各向异性空间结构。训练好的网络还可用于执行短期预测任务,在运行时间减少1000倍的同时显示出类似的提升。