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Fast robust optimization using bias correction applied to the mean model

机译:使用偏置校正应用于平均模型的快速鲁棒优化

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摘要

Ensemble methods are remarkably powerful for quantifying geological uncertainty. However, the use of the ensemble of reservoir models for robust optimization (RO) can be computationally demanding. The straightforward computation of the expected net present value (NPV) requires many expensive simulations. To reduce the computational burden without sacrificing accuracy, we present a fast and effective approach that requires only simulation of the mean reservoir model with a bias correction factor. Information from distinct controls and model realizations can be used to estimate bias for different controls. The effectiveness of various bias-correction methods and a linear or quadratic approximation is illustrated by two applications: flow optimization in a one-dimensional model and the drilling-order problem in a synthetic field model. The results show that the approximation of the expected NPV from the mean model is significantly improved by estimating the bias correction factor, and that RO with mean model bias correction is superior to both RO performed using a Taylor series representation of uncertainty and deterministic optimization from a single realization. Use of the bias-corrected mean model to account for model uncertainty allows the application of fairly general optimization methods. In this paper, we apply a nonparametric online learning methodology (learned heuristic search) for efficiently computing an optimal or near-optimal robust drilling sequence on the REEK Field example. This methodology can be used either to optimize a complete drilling sequence or to optimize only the first few wells at a reduced cost by limiting the search depths.
机译:集合方法对于量化地质不确定性非常强大。然而,用于鲁棒优化(RO)的储层模型的集合可以计算得以计算要求。预期净现值(NPV)的直接计算需要许多昂贵的模拟。为了减少计算负担而不会牺牲精度,我们提出了一种快速有效的方法,该方法仅需要用偏置校正因子模拟平均储层模型。来自不同控制和模型实现的信息可用于估算不同控制的偏差。各种偏压和线性或二次近似的有效性由两个应用说明:在一维模型中的流化优化和合成场模型中的钻井顺序问题。结果表明,通过估计偏压校正因子,通过估计偏压校正因子来显着改善预期的NPV的近似值,并且具有使用泰勒序列表示不确定性和确定性优化的泰勒序列表示的均匀性的RO。单一实现。使用偏置校正的平均模型来解释模型不确定性允许应用相当一般的优化方法。在本文中,我们应用非参数在线学习方法(学习启发式搜索),以便在REEK现场示例上有效地计算最佳或近最佳的鲁棒钻井序列。该方法可以使用来优化完整的钻井顺序,或者通过限制搜索深度来仅降低前几个井。

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