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首页> 外文期刊>Advances in Water Resources >Bayesian uncertainty quantification for flows in heterogeneous porous media using reversible jump Markov chain Monte Carlo methods
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Bayesian uncertainty quantification for flows in heterogeneous porous media using reversible jump Markov chain Monte Carlo methods

机译:使用可逆跳跃马尔可夫链蒙特卡罗方法对非均质多孔介质中的贝叶斯不确定性进行量化

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摘要

In this paper, we study the uncertainty quantification in inverse problems for flows in heterogeneous porous media. Reversible jump Markov chain Monte Carlo algorithms (MCMC) are used for hierarchical modeling of channelized permeability fields. Within each channel, the permeability is assumed to have a log-normal distribution. Uncertainty quantification in history matching is carried out hierarchically by constructing geologic facies boundaries as well as permeability fields within each facies using dynamic data such as production data. The search with Metropolis-Hastings algorithm results in very low acceptance rate, and consequently, the computations are CPU demanding. To speed-up the computations, we use a two-stage MCMC that utilizes upscaled models to screen the proposals. In our numerical results, we assume that the channels intersect the wells and the intersection locations are known. Our results show that the proposed algorithms are capable of capturing the channel boundaries and describe the permeability variations within the channels using dynamic production history at the wells.
机译:在本文中,我们研究了非均质多孔介质中反问题的不确定性量化。可逆跳马尔可夫链蒙特卡罗算法(MCMC)用于通道化渗透率场的分层建模。在每个通道内,假定渗透率具有对数正态分布。历史匹配中的不确定性量化是通过使用诸如生产数据之类的动态数据构造地质相边界以及每个相内的渗透率场来进行的。使用Metropolis-Hastings算法进行搜索导致接受率非常低,因此,计算量要求CPU的要求。为了加快计算速度,我们使用了两阶段的MCMC,该MCMC利用升级后的模型来筛选建议。在我们的数值结果中,我们假设通道与井相交并且相交位置已知。我们的结果表明,所提出的算法能够捕获井道边界,并利用井的动态生产历史来描述井道内的渗透率变化。

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