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首页> 外文期刊>Near surface geophysics >Transdimensional and Hamiltonian Monte Carlo inversions of Rayleigh-wave dispersion curves: A comparison on synthetic datasets
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Transdimensional and Hamiltonian Monte Carlo inversions of Rayleigh-wave dispersion curves: A comparison on synthetic datasets

机译:瑞利波色散曲线的跨多维和哈密顿蒙特卡罗逆转:合成数据集的比较

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We compare two Monte Carlo inversions that aim to solve some of the main problems of dispersion curve inversion: deriving reliable uncertainty appraisals, determining the optimal model parameterization and avoiding entrapment in local minima of the misfit function. The first method is a transdimensional Markov chain Monte Carlo that considers as unknowns the number of model parameters, that is the locations of layer boundaries together with the Vs and the Vp/Vs ratio of each layer. A reversible-jump Markov chain Monte Carlo algorithm is used to sample the variable-dimension model space, while the adoption of a parallel tempering strategy and of a delayed rejection updating scheme improves the efficiency of the probabilistic sampling. The second approach is a Hamiltonian Monte Carlo inversion that considers the Vs, the Vp/Vs ratio and the thickness of each layer as unknowns, whereas the best model parameterization (number of layer) is determined by applying standard statistical tools to the outcomes of different inversions running with different model dimensionalities. This work has a mainly didactic perspective and, for this reason, we focus on synthetic examples in which only the fundamental mode is inverted. We perform what we call semi-analytical and seismic inversion tests on 1D subsurface models. In the first case, the dispersion curves are directly computed from the considered model making use of the Haskell-Thomson method, while in the second case they are extracted from synthetic shot gathers. To validate the inversion outcomes, we analyse the estimated posterior models and we also perform a sensitivity analysis in which we compute the model resolution matrices, posterior covariance matrices and correlation matrices from the ensembles of sampled models. Our tests demonstrate that major benefit of the transdimensional inversion is its capability of providing a parsimonious solution that automatically adjusts the model dimensionality. The downside of this approach is that many models must be sampled to guarantee accurate posterior uncertainty. Differently, less sampled models are required by the Hamiltonian Monte Carlo algorithm, but its limits are the computational effort related to the Jacobian computation, and the multiple inversion runs needed to determine the optimal model parameterization.
机译:我们比较两个蒙特卡罗反转,该反转旨在解决色散曲线反演的一些主要问题:导出可靠的不确定性评估,确定最佳模型参数化并避免在局部最小值中的捕获功能。第一种方法是一个转跨维度马尔可夫链Monte Carlo,其被认为是未知的模型参数的数量,即层边界的位置与每个层的VS和VP / VS比一起。可逆跳跃马尔可夫链蒙特卡罗算法用于采样可变维模型空间,而采用并行回火策略和延迟抑制更新方案的采用提高了概率采样的效率。第二种方法是汉密尔顿蒙特卡罗反演,其认为对每个层的VS,VP / VS比和厚度为未知,而通过将标准统计工具应用于不同的结果来确定最佳模型参数化(层数)。使用不同的模型尺寸运行的enversions。这项工作主要是教学的视角,而且为此,我们专注于综合实例,其中只有基本模式被反转。我们在1D地下模型上执行我们所说的半分析和地震反演测试。在第一种情况下,从所考虑的模型中直接计算色散曲线,利用Haskell-Thomson方法,而在第二种情况下,它们被从合成射击射击中提取。为了验证反演结果,我们分析了估计的后模型,我们还执行敏感性分析,其中我们从采样模型的集合计算模型分辨率矩阵,后协方差矩阵和相关矩阵。我们的测试表明,转模反转的主要好处是其提供一种自动调整模型维度的解析解决方案的能力。这种方法的缺点是必须对许多模型进行采样,以保证准确的后不确定性。不同地,汉密尔顿蒙特卡罗算法需要较少的采样模型,但其限制是与雅可比计算相关的计算工作,并且需要多个反转运行来确定最佳模型参数化。

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