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首页> 外文期刊>Journal of Petroleum Science & Engineering >Efficient workflow for optimizing well controls
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Efficient workflow for optimizing well controls

机译:高效的工作流程,用于优化井控

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Due to the large dimensionality of typical rate optimization problems, most approaches for field optimization are local search methods. Achievable optima by these methods are directly impacted by the choice of the initial guess for the sought optimal profiles. Here we propose, first, a new formulation of the waterflooding optimization problem to reduce the number of the optimization variables considerably, and, second, a simple low-cost framework to efficiently initialize local-search optimization algorithms, based on accepted reservoir engineering concepts. The initialization strategy is applied to history matched model of the Brugge field (Peters et al., 2010), prepared for a closed-loop reservoir management comparative study in connection with SPE Applied Technology Workshop in June 2008. Also we evaluate three different optimization algorithms and compare the results with two previous works (Asadollahi and NEvdal, 2010; Lorentzen et al., 2009). The optimization algorithms are pattern search Hooke-Jeeves, reflection simplex Nelder-Mead and sequential quadratic programming. The optimized variables in terms of the achieved net present value clearly outperformed the best solution obtained so far on these history matched models. The workflow has several advantages. First, it is simple and easy to program in every reservoir simulator. Second, it needs only one single forward simulation to obtain a reasonable initial solution. Third, the nonlinear constraints are handled by the simulator and therefore do not need a complex implementation of the nonlinear inequality constraints. Finally, the workflow is in line with the existing optimization approaches and the output from the workflow can be used as input to the other algorithms for further improvement of the results. Among the optimization algorithms the Hooke-Jeeves method performed better than the other algorithms.
机译:由于典型的速率优化问题的维度很大,因此大多数用于字段优化的方法都是本地搜索方法。这些方法可达到的最佳状态直接受到所寻求最佳配置文件的初始猜测的选择的影响。在这里,我们建议首先提出一种注水优化问题的新公式,以大大减少优化变量的数量;其次,基于公认的油藏工程概念,提出一种简单的低成本框架来有效地初始化局部搜索优化算法。初始化策略应用于布鲁日油田的历史匹配模型(Peters等,2010),该模型准备与2008年6月的SPE应用技术研讨会合作进行闭环油藏管理比较研究。我们还评估了三种不同的优化算法并将结果与​​先前的两项工作进行比较(Asadollahi和NEvdal,2010; Lorentzen等,2009)。优化算法是模式搜索Hooke-Jeeves,反射单纯形Nelder-Mead和顺序二次规划。就已实现的净现值而言,优化变量显然优于迄今为止在这些历史匹配模型上获得的最佳解决方案。工作流程有几个优点。首先,在每个油藏模拟器中编程都很简单。其次,只需要进行一次正向仿真就可以得出合理的初始解。第三,非线性约束由模拟器处理,因此不需要非线性不等式约束的复杂实现。最后,工作流符合现有的优化方法,并且工作流的输出可用作其他算法的输入,以进一步改善结果。在优化算法中,Hooke-Jeeves方法的性能优于其他算法。

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