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Population MCMC methods for history matching and uncertainty quantification

机译:用于历史匹配和不确定性量化的总体MCMC方法

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This paper presents the application of a population Markov Chain Monte Carlo (MCMC) technique to generate history-matched models. The technique has been developed and successfully adopted in challenging domains such as computational biology but has not yet seen application in reservoir modelling. In population MCMC, multiple Markov chains are run on a set of response surfaces that form a bridge from the prior to posterior. These response surfaces are formed from the product of the prior with the likelihood raised to a varying power less than one. The chains exchange positions, with the probability of a swap being governed by a standard Metropolis accept/reject step, which allows for large steps to be taken with high probability. We show results of Population MCMC on the IC Fault Model-a simple three-parameter model that is known to have a highly irregular misfit surface and hence be difficult to match. Our results show that population MCMC is able to generate samples from the complex, multi-modal posterior probability distribution of the IC Fault model very effectively. By comparison, previous results from stochastic sampling algorithms often focus on only part of the region of high posterior probability depending on algorithm settings and starting points.
机译:本文介绍了人口马尔可夫链蒙特卡洛(MCMC)技术在生成历史匹配模型中的应用。该技术已被开发并成功应用于具有挑战性的领域,例如计算生物学,但尚未在油藏建模中得到应用。在MCMC群体中,多个马尔可夫链在一组响应面上运行,这些响应面形成了从后到前的桥梁。这些响应表面由先验的乘积形成,似然度提高到小于1的变化幂。链交换位置,交换的可能性由标准的Metropolis接受/拒绝步骤控制,这允许以较高的概率采取较大的步骤。我们在IC故障模型上显示了总体MCMC的结果-一种简单的三参数模型,已知该模型具有高度不规则的错配表面,因此难以匹配。我们的结果表明,总体MCMC能够非常有效地从IC故障模型的复杂,多模式后验概率分布中生成样本。相比之下,根据算法设置和起点,随机采样算法的先前结果通常只关注高后验概率区域的一部分。

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