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Handling Conflicting Multiple Objectives Using Pareto-based Evolutionary Algorithm During History Matching of Reservoir Performance

机译:在储层性能的历史匹配期间处理基于帕累托的进化算法处理冲突的多目标

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History matching and optimization problems often involve several, potentially conflicting, objectives. For example, we might seek to minimize a misfit function involving differences in reservoir pressure, multiphase production history and 4D time- lapse seismic data and these differences do not always change in tandem. It is a common practice to treat these differences as a single objective optimization problem by aggregating all objectives into a scalar function (weighted-sum), resulting in incomplete exploration of the solution space. The problem is particularly severe if the objectives are conflicting. In this paper we propose to use a Pareto-based multi-objective evolutionary algorithm (MOEA) focusing on finding a set of optimal solutions called Pareto optima. The MOEA makes direct use of the dominance relation for fitness assignment instead of a fitness score in one-dimensional objective space. The dominance concept can define levels of optimality without reduction of objective dimensionality to sort populations accordingly, and the given populations constitute typically several ranks (fronts) of classification for individuals. Because it uses a population of solutions in the search process and optimizes such that the ranks are minimized, the Pareto optima can be found in a single simulation run. We show how the MOEA identifies optimal solutions by examining the trade-off between multiple objectives from a set of plausible solutions. Specifically, we demonstrate that it outperforms the commonly used weighted-sum approach. For practical applications, we provide a novel history matching workflow with a Grid Connectivity-based Transformation (GCT) basis coefficients as parameters for calibration using the gradient-free evolutionary optimization algorithms. The basis functions are obtained from a spectral decomposition of the grid connectivity Laplacian and avoid ad hoc redefinitions of regions while preserving the geologic heterogeneity. We demonstrate the power and utility of the proposed workflow using multiple examples. These include 2D synthetic examples for validation and a 3D field application for matching production and seismic data with uncertainty and conflicting information.
机译:历史匹配和优化问题往往涉及几种,可能相互冲突的目标。例如,我们可能会试图尽量减少涉及水库压力,多相生产历史和4D次间隔地震数据的差异的错入功能,并且这些差异并不总是在串联中变化。通过将所有目标聚合到标量函数(加权 - 和)将这些差异视为单个客观优化问题是一种常见的做法,导致解决方案空间不完全探索。如果目标是矛盾的,问题特别严重。在本文中,我们建议使用基于帕累托的多目标进化算法(MOEA),该算法专注于找到一个名为Pareto Optima的最佳解决方案。 MOEA直接使用适用于健身分配的优势关系,而不是一维物理空间中的健身评分。优势概念可以定义最优性的水平,而不会降低客观维度,以相应地排序群体,并且给定的人群通常是个人分类的几个级别(前面)。由于它在搜索过程中使用了一群解决方案并优化了排名最小化,因此可以在单个仿真运行中找到Pareto Optima。我们展示MOEA如何通过检查来自一组合理的解决方案之间的多个目标之间的权衡来识别最佳解决方案。具体而言,我们证明它优于常用的加权和方法。对于实际应用,我们提供了一种新的历史匹配工作流程,其具有基于网格连接的转换(GCT)基础系数作为使用梯度的进化优化算法进行校准的参数。基于网格连接拉普拉斯的光谱分解获得基础函数,并避免在保持地质异质性的同时避免区域的临时重新定义。我们展示了使用多个示例的所提出的工作流的功率和实用性。这些包括2D合成示例,用于验证和3D场应用程序,用于将生产和地震数据与不确定性和冲突信息匹配。

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