首页> 外文期刊>International journal for uncertainty quantifications >USING PARALLEL MARKOV CHAIN MONTE CARLO TO QUANTIFY UNCERTAINTIES IN GEOTHERMAL RESERVOIR CALIBRATION
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USING PARALLEL MARKOV CHAIN MONTE CARLO TO QUANTIFY UNCERTAINTIES IN GEOTHERMAL RESERVOIR CALIBRATION

机译:使用并行MARKOV链蒙特卡罗定量地热储层标定中的不确定性

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摘要

We introduce a parallel rejection scheme to give a simple but reliable way to parallelize the Metropolis-Hastings algorithm. This method can be particularly usefil when the target density is computationally expensive to evaluate and the acceptance rate of the Metropolis-Hastings is low. We apply the resulting method to quantify uncertainties of inverse problems, in which we aim to calibrate a challenging nonlinear geothermal reservoir model using real measurements from well tests. We demonstrate the parallelized method on various well-test scenarios. In some scenarios, the sample-based statistics obtained by our scheme shows clear advantages in providing robust model calibration and prediction compared with those obtained by nonlinear optimization methods.
机译:我们引入了并行拒绝方案,以给出一种简单但可靠的方法来并行化Metropolis-Hastings算法。当目标密度计算上的评估成本很高且Metropolis-Hastings的接受率较低时,此方法特别有用。我们将所得方法应用到反问题的不确定性量化中,目的是使用来自试井的实际测量结果来校准具有挑战性的非线性地热储层模型。我们在各种测试良好的情况下演示了并行化方法。在某些情况下,与通过非线性优化方法获得的模型相比,通过我们的方案获得的基于样本的统计数据在提供强大的模型校准和预测方面显示出明显的优势。

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