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Probabilistic Magnetotelluric Inversion with Adaptive Regularisation Using the No-U-Turns Sampler

机译:使用No-U形采样器的自适应正规化具有适应性正则化的概率磁电磁反转

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We present the first inversion of magnetotelluric (MT) data using a Hamiltonian Monte Carlo algorithm. The inversion of MT data is an underdetermined problem which leads to an ensemble of feasible models for a given dataset. A standard approach in MT inversion is to perform a deterministic search for the single solution which is maximally smooth for a given data-fit threshold. An alternative approach is to use Markov Chain Monte Carlo (MCMC) methods, which have been used in MT inversion to explore the entire solution space and produce a suite of likely models. This approach has the advantage of assigning confidence to resistivity models, leading to better geological interpretations. Recent advances in MCMC techniques include the No-U-Turns Sampler (NUTS), an efficient and rapidly converging method which is based on Hamiltonian Monte Carlo. We have implemented a 1D MT inversion which uses the NUTS algorithm. Our model includes a fixed number of layers of variable thickness and resistivity, as well as probabilistic smoothing constraints which allow sharp and smooth transitions. We present the results of a synthetic study and show the accuracy of the technique, as well as the fast convergence, independence of starting models, and sampling efficiency. Finally, we test our technique on MT data collected from a site in Boulia, Queensland, Australia to show its utility in geological interpretation and ability to provide probabilistic estimates of features such as depth to basement.
机译:我们使用Hamiltonian Monte Carlo算法介绍了Magnetelluric(MT)数据的第一反转。 MT数据的反转是未确定的问题,这导致给定数据集的可行模型的集合。 MT反演中的标准方法是对单个解决方案执行确定性搜索,其对于给定的数据配合阈值最大地平滑。另一种方法是使用Markov Chain Monte Carlo(MCMC)方法,这些方法已被用于MT反转以探索整个解决方案空间并产生一套可能的模型。这种方法具有为电阻率模型分配信心的优点,从而引起更好的地质解释。 MCMC技术的最新进展包括No-U形采样器(螺母),一种基于Hamiltonian Monte Carlo的有效和快速的融合方法。我们已经实现了使用螺母算法的1D MT反演。我们的模型包括固定数量的可变厚度和电阻率,以及概率平滑约束,允许尖锐和平滑的过渡。我们介绍了合成研究的结果,并展示了技术的准确性,以及快速收敛,启动模型的独立性以及采样效率。最后,我们在澳大利亚Boulia的网站上收集的MT数据测试了我们的技术,以展示其在地质解释和提供概率估算的能力,如深度到地下室的概率估计。

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