A Deep Gaussian Process Model for Seismicity Background Rates
Jack B. Muir, Zachary E. Ross

TL;DR
This paper introduces a deep Gaussian process extension to the ETAS model to better capture complex, time-varying seismic background rates, improving modeling of seismic swarms influenced by tectonic processes.
Contribution
The novel deep-GP-ETAS model enhances seismicity modeling by capturing multiscale temporal variations in background rates using hierarchical Gaussian processes.
Findings
Successfully models multiscale seismic background rates
Demonstrates improved fit on synthetic data
Effectively applied to real seismic catalogs
Abstract
The spatio-temporal properties of seismicity give us incisive insight into the stress state evolution and fault structures of the crust. Empirical models based on self-exciting point-processes continue to provide an important tool for analyzing seismicity, given the epistemic uncertainty associated with physical models. In particular, the epidemic-type aftershock sequence (ETAS) model acts as a reference model for studying seismicity catalogs. The traditional ETAS model uses simple parametric definitions for the background rate of triggering-independent seismicity. This reduces the effectiveness of the basic ETAS model in modelling the temporally complex seismicity patterns seen in seismic swarms that are dominated by aseismic tectonic processes such as fluid injection rather than aftershock triggering. In order to robustly capture time-varying seismicity rates, we introduce a deep…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods
