Efficient Probabilistic Inversion of Induced Earthquake Parameters in 3D Heterogeneous Media

L.O.M. Masfara, T. Cullison, C. Weemstra
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引用次数: 2

Abstract

Abstract. We present an efficient probabilistic workflow for the estimation of source parameters of induced seismic events in three-dimensional heterogeneous media. Our workflow exploits a linearized variant of the Hamiltonian Monte Carlo (HMC) algorithm. Compared to traditional Markov-Chain Monte Carlo (MCMC) algorithms, HMC is highly efficient in sampling high-dimensional model spaces. Through a linearization of the forward problem around the prior mean (i.e., the "best" initial model), this efficiency can be further improved. We show, however, that this linearization leads to a performance in which the output of an HMC chain strongly depends on the quality of the prior; in particular, because not all (induced) earthquake model parameters have a linear relationship with the recordings observed at the surface. To mitigate the importance of an accurate prior, we integrate the linearized HMC scheme into a workflow that (i) allows for a weak prior through linearization around various (initial) centroid locations, (ii) is able to converge to the mode containing the model with the (global) minimum misfit by means of an iterative HMC approach, and (iii) uses variance reduction as a criterion to include the output of individual Markov chains in the estimation of the posterior probability. Using a three-dimensional heterogeneous subsurface model of the Groningen gas field, we simulate an induced earthquake to test our workflow. We then demonstrate the virtue of our workflow by estimating the event's centroid (three parameters), moment tensor (six parameters), and the earthquake's origin time. We find that our workflow is able to recover the posterior probability of these source parameters rather well, even when the prior model information is inaccurate, imprecise, or both inaccurate and imprecise.
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三维非均质介质诱发地震参数的有效概率反演
摘要提出了三维非均质介质中诱发地震事件源参数估计的一种有效的概率工作流。我们的工作流程利用哈密顿蒙特卡罗(HMC)算法的线性化变体。与传统的马尔可夫链蒙特卡罗(MCMC)算法相比,HMC算法在高维模型空间的采样效率很高。通过围绕先验均值(即“最佳”初始模型)的正演问题的线性化,可以进一步提高这种效率。然而,我们表明,这种线性化导致HMC链的输出强烈依赖于先验质量的性能;特别是,并非所有(诱发的)地震模型参数都与地面观测记录呈线性关系。为了减轻准确先验的重要性,我们将线性化的HMC方案集成到一个工作流中,该工作流(i)允许通过围绕各种(初始)质心位置的线性化来获得弱先验,(ii)能够通过迭代HMC方法收敛到包含(全局)最小失拟模型的模式,以及(iii)使用方差减少作为标准,在估计后置概率时包括单个马尔可夫链的输出。利用格罗宁根气田的三维非均匀地下模型,我们模拟了一次诱发地震来测试我们的工作流程。然后,我们通过估计事件的质心(三个参数)、矩张量(六个参数)和地震的起源时间来证明我们的工作流程的优点。我们发现,我们的工作流能够很好地恢复这些源参数的后验概率,即使在先前的模型信息不准确、不精确或既不准确又不精确的情况下。
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