1D Elastic Full-Waveform Inversion Through a Reversible Jump MCMC Algorithm

M. Aleardi, A. Salusti
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Abstract

Summary We implement a transdimensional Bayesian approach to solve the 1D elastic full-waveform inversion (FWI) in which the reflectivity algorithm constitutes the forward modelling. In this approach the number of model parameters (i.e. the number of layers) is treated as an unknown, and a reversible jump Markov Chain Monte Carlo algorithm is used to sample the variable-dimension model space. We also treat the noise standard deviation as an unknown parameter to be solved for, thus letting the algorithm infer the appropriate level of data-fitting. A Parallel tempering strategy and a delayed rejection updating scheme are used to improve the efficiency of the probabilistic sampling. We focus the attention to synthetic data inversions, with the aim to draw general conclusions about the suitability of our approach for pre-stack inversion of reflection seismic data. Our tests prove that the implemented inversion algorithm provides a parsimonious solution and successfully estimates model uncertainty, noise level, model dimensionality and elastic parameters. Our experiments also demonstrate that there is a trade-off between property uncertainty and location uncertainty: A strong elastic contrast determines high uncertainty in the model property values, but low uncertainty in the location of the elastic discontinuity.
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基于可逆跳跃MCMC算法的一维弹性全波形反演
我们实现了一种跨维贝叶斯方法来求解一维弹性全波形反演(FWI),其中反射率算法构成了正演建模。该方法将模型参数的个数(即层数)作为一个未知量,采用可逆跳跃马尔可夫链蒙特卡罗算法对变维模型空间进行采样。我们还将噪声标准差视为待解的未知参数,从而让算法推断出合适的数据拟合水平。为了提高概率抽样的效率,采用了并行回火策略和延迟抑制更新方案。我们将注意力集中在综合数据反演上,目的是得出关于我们的方法对反射地震数据的叠前反演适用性的一般结论。我们的测试证明,实现的反演算法提供了一个简洁的解决方案,并成功地估计了模型的不确定性、噪声水平、模型维数和弹性参数。我们的实验还表明,在属性不确定性和位置不确定性之间存在权衡:强弹性对比决定了模型属性值的高不确定性,但弹性不连续点位置的低不确定性。
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