LLM Reasoning 相关度: 5/10

Improving moment tensor solutions under Earth structure uncertainty with simulation-based inference

A. A. Saoulis, T. -S. Pham, A. M. G. Ferreira
arXiv: 2603.18925v1 发布: 2026-03-19 更新: 2026-03-19

AI 摘要

利用基于模拟的推理(SBI)方法,提升在地球结构不确定性下的矩张量反演结果的可靠性。

主要贡献

  • 提出基于模拟的推理(SBI)方法解决地球结构不确定性问题
  • 证明传统高斯参数化方法的局限性
  • 开发了两种利用SBI改进矩张量解的方法

方法论

采用模拟地震波形,通过机器学习模型(SBI)学习理论误差,并用于贝叶斯反演中,修正矩张量解。

原文摘要

Bayesian inference represents a principled way to incorporate Earth structure uncertainty in full-waveform moment tensor inversions, but traditional approaches generally require significant approximations that risk biasing the resulting solutions. We introduce a robust method for handling theory errors using simulation-based inference (SBI), a machine learning approach that empirically models their impact on the observations. This framework retains the rigour of Bayesian inference while avoiding restrictive assumptions about the functional form of the uncertainties. We begin by demonstrating that the common Gaussian parametrisation of theory errors breaks down under minor ($1-3 \%$) 1-D Earth model uncertainty. To address this issue, we develop two formalisms for utilising SBI to improve the quality of the moment tensor solutions: one using physics-based insights into the theory errors, and another utilising an end-to-end deep learning algorithm. We then compare the results of moment tensor inversion with the standard Gaussian approach and SBI, and demonstrate that Gaussian assumptions induce bias and significantly under-report moment tensor uncertainties. We also show that these effects are particularly problematic when inverting short period data and for shallow, isotropic events. On the other hand, SBI produces more reliable, better calibrated posteriors of the earthquake source mechanism. Finally, we successfully apply our methodology to two well studied moderate magnitude earthquakes: one from the 1997 Long Valley Caldera volcanic earthquake sequence, and the 2020 Zagreb earthquake.

标签

地震学 矩张量反演 贝叶斯推断 机器学习 不确定性量化

arXiv 分类

physics.geo-ph cs.AI