基于粒子群优化的自动历史匹配的现场应用研究

Sanghyu Lee, K. Stephen
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引用次数: 2

摘要

传统的历史拟合试错法需要工程师控制每一个不确定参数,耗时长,效率低。然而,在计算机辅助下的自动历史匹配(AHM)是一种有效的过程,它通过将静态模型与动态数据相结合的算法来同时控制大量参数,以减少失配,从而提高可靠性。它还有助于减少模拟运行时间。粒子群优化(PSO)是一种结合最小二乘单目标函数探索参数空间的基于种群的随机算法。AHM过程可以采用参数化和实现的方法来减少逆问题。在本研究中,选择了各种储层性质的实现,如孔隙度、净总渗透率、相对渗透率、水平和垂直渗透率以及含水层尺寸,以在整个AHM中进行控制。通过历史匹配来验证每种方法的有效性。讨论了用随机算法优化AHM的准则。实现和参数化方法改善了全油田应用中的匹配结果,减少了错配,减少了误差。随机算法生成多个模型来推导控制参数以减少失配。在本研究中,我们发现PSO在更新控制参数时有效收敛。优化后的AHM提高了整个油田模型的精度,尽管在与井底压力的匹配中仍然存在一些不匹配。我们发现使用太多的参数更新会使问题难以解决,而使用太少的参数会导致假收敛。此外,虽然仿真运行时间至关重要,但减少计算开销的全场仿真模型是有益的。在本研究中,我们观察到粒子群算法是一种有效的算法来更新控制参数以减少失配。使用参数化和实现作为辅助方法有助于找到更好的结果。总体而言,本研究可为优化历史匹配过程提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Field Application Study on Automatic History Matching Using Particle Swarm Optimization
The traditional trial and error approach of history matching to obtain an accurate model requires engineers to control each uncertain parameter and can be quite time consuming and inefficient. However, automatic history matching (AHM), assisted by computers, is an efficient process to control a large number of parameters simultaneously by an algorithm that integrates a static model with dynamic data to minimize a misfit for improving reliability. It helps to reduce simulation run time as well. Particle Swarm Optimization (PSO) is a population based stochastic algorithm that can explore parameter space combined with the least squares single objective function. The process of AHM can adopt parameterization and realization methods to reduce inverse problems. In this study, realizations of various reservoir properties such as porosity, net to gross, relative permeability, horizontal and vertical permeability, and aquifer size were chosen for controlling throughout the AHM. History matching was conducted to validate the efficiency of each method. The guidelines for optimized AHM with a stochastic algorithm are also disccussed. The realization and parameterization methods improved matching results in a full-field application with resulting in a reduced misfit and in less. A stochastic algorithm generates multiple models to deduce control parameters to reduce a misfit. In this study we identified that PSO converged effectively with updated control parameters. The optimized AHM improved the accuracy of a full-field model although some misfit remained in the match to bottomhole pressure. We found that updating with too many parameters makes the problem difficult to solve while using too few leads to false convergence. In addition, while the simulation run time is critical, a full-field simulation model with reduced computational overhead is benefitial. In this study, we observed that the PSO was an efficient algorithm to update control parameters to reduce a misfit. Using the parameterization and realization as an assisted method helped find better results. Overall this study can be used as a guideline to optimize the process of history matching.
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