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The development of a novel multi-objective optimization framework for non-vertical well placement based on a modified non-dominated sorting genetic algorithm-Ⅱ

机译:基于改进的非支配排序遗传算法-Ⅱ的新型非垂直井多目标优化框架开发

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摘要

A single-objective well placement problem is one of the classical optimization problems in oilfield development and has been studied for many years, by researchers worldwide. However, the necessity to face practical applications and handle insufficient data in a single-objective optimization leads to the introduction of a multi-objective optimization framework, which consequently allows an engineer to manage more information. In this study, for the very first time, a multi-objective well placement optimization framework, based on a Non-dominated Sorting Genetic Algorithm-II (NSGA-II) is utilized with a similarity-based mating scheme. To represent the power of this mating procedure, it is compared with two conventional mating selection methods (tournament and roulette wheel selection). In this novel framework, the net present value (NPV) and the recovery factor are considered to be the objective functions while the well coordinates, well types, horizontal section length, orientation, and water injection rate are all assumed as the problem variables. Compared to the tournament and roulette wheel selection methods, the convergence speed analysis of this method indicates a substantial reduction in time, with the number of iterations reduced by 26 and 20%, respectively. Among the mating technique, which is implemented in this work, the final Pareto front, presented in this similarity-based selection method, has more members in the same solution range. Having more individuals in the final Pareto front provides more scenarios for decision makers, which helps them in choosing an optimal scenario based on the limitations and interests of a company.
机译:单目标井布置问题是油田开发中的经典优化问题之一,并且已被全球研究人员研究了多年。但是,在单目标优化中面对实际应用和处理不足的数据的必要性导致引入了多目标优化框架,从而使工程师可以管理更多信息。在这项研究中,这是第一次,基于非相似性排序遗传算法-II(NSGA-II)的多目标井位优化框架被使用。为了表示这种交配程序的功能,将其与两种常规的交配选择方法(比赛和轮盘选择)进行了比较。在这个新颖的框架中,净现值(NPV)和采收率被认为是目标函数,而井的坐标,井的类型,水平截面长度,方向和注水率都被假定为问题变量。与锦标赛和轮盘赌选择方法相比,此方法的收敛速度分析表明时间大大减少,迭代次数分别减少了26%和20%。在这项工作中实现的交配技术中,这种基于相似度的选择方法提出的最终Pareto前沿在相同的解决方案范围内具有更多的成员。在帕累托最后的战线中拥有更多的个人可以为决策者提供更多的方案,这有助于他们根据公司的局限和利益选择最佳方案。

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