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Statistical Bayesian Inversion of Ultra-deep Electromagnetic LWD Data: Trans-dimensional Markov Chain Monte Carlo with Parallel Tempering

机译:超深电磁LWD数据的统计贝叶斯反演:跨维马尔可夫链Monte Carlo与并联回火

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Solving the inversion of ultra-deep electromagnetic measurements is a challenging task in directional resistivity logging while drilling (LWD) service. The target is to reconstruct the subsurface formation structure around the borehole in the real-time drilling job. Due to the complexity of ultra-deep measurements, the inverse modeling is highly nonlinear and ill-posed. Hence, the conventional methods are insufficient to resolve this problem. In this paper, a statistical data-driven approach is proposed, which combines Bayesian inference and parallel tempering techniques.
机译:解决超深电磁测量的反转是在钻井(LWD)服务时方向电阻率测井的具有挑战性的任务。目标是在实时钻井作业中重建周围钻孔周围的地下形成结构。由于超深度测量的复杂性,逆建模是高度非线性和均未造成的。因此,传统方法不足以解决这个问题。本文提出了一种统计数据驱动方法,其结合了贝叶斯推理和并行回火技术。

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