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Reservoir Parameter Estimation with Improved Particle Swarm Optimization

机译:具有改进粒子群优化的储层参数估计

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Effective reservoir management relies heavily on the accurate prediction of reservoir flow performance over the entire life of the reservoir. Accurate prediction of flow performance is possible only if reservoir flow parameters are known with reasonable accuracy. Consequently, a major challenge in reservoir management is the estimation of reservoir parameters that affect the flow and distribution of reservoir fluids the most. Estimation of distributed reservoir parameters has been done using mainly gradient-based optimization algorithms because these algorithms are relatively faster than global (stochastic) optimization algorithms. However, the gradient-based algorithms are local in nature and thus limited in their search ability. In this paper, we present a local-global optimization method that generates multiple realizations of reservoir parameters at coarse scale. The method involves the use of a local search optimization algorithm to parameterize the model space at a coarse scale followed by a stochastic search for better estimates in the vicinity of the local estimate. At the end of the search, the method produces a distribution of estimates that can be used for uncertainty quantification. To test the effectiveness of the method, the local-global optimization algorithm was applied to a sample reservoir with a known distributed permeability field. Results obtained indicate that the method is able to produce multiple history-matched realizations of the permeability field, some of which are closer to the true reservoir permeability distribution than the estimate obtained from an exhaustive local search.
机译:有效的水库管理在很大程度上依赖于水库整个寿命的水库流性能的准确预测。仅当储库流量参数以合理的准确度知道时,才能精确预测流性能。因此,储层管理中的主要挑战是估计最多影响储层流体的流量和分布的储层参数。使用主要基于梯度的优化算法来完成分布式储存器参数的估计,因为这些算法比全局(随机)优化算法相对较快。然而,基于梯度的算法本质上是本地的,因此在搜索能力中受到限制。在本文中,我们提出了一种本地 - 全局优化方法,在粗略尺度下生成多个储层参数的实现。该方法涉及使用本地搜索优化算法以粗略刻度参数化模型空间,然后是随机搜索,以便在本地估计附近进行更好的估计。在搜索结束时,该方法产生可用于不确定性量化的估计的分布。为了测试该方法的有效性,将局部全局优化算法应用于具有已知分布渗透性场的样品储存器。得到的结果表明该方法能够产生多个历史匹配的渗透性匹配的实现,其中一些符合来自于从穷举本地搜索所获得的估计的真正储层渗透性分布。

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