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Multi-objective optimization method using an improved NSGA-II algorithm for oil-gas production process

机译:改进的NSGA-II算法在油气生产过程中的多目标优化方法

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By analyzing the characteristics of oil-gas production process and the relationship between subsystems, a multi-objective optimization model is proposed with maximizing the overall oil production, and minimizing the overall water production and comprehensive energy consumption for per ton oil. And then the non-dominated sorting genetic algorithm-II (NSGA-II) is used to solve the model. In order to further improve the diversity and convergence of Pareto optimal solutions obtained by NSGA-Il algorithm, an improved NSGA-II algorithm (I-NSGA-II) is proposed. The algorithm is based on the basic NSGA-II, and the main improvements are as follows: Firstly, a new hybrid chaotic mapping model is established for population initialization. Secondly, the gradient operator is introduced, and it combines with the crossover and mutation operator to compose the hybrid operator by which a new generation of population is produced. Lastly, substitution operation of chaotic population candidate is used to select the new population. Finally, the performances of the proposed algorithm are demonstrated in actual production process of an oil recovery operation area studies, the results verify the effectiveness of the model and the algorithm. (C) 2015 Taiwan Institute of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:通过分析油气生产过程的特征和子系统之间的关系,提出了一种多目标优化模型,该模型以总产油量最大化,总产水量和每吨油的综合能耗最小化为目标。然后使用非支配排序遗传算法-II(NSGA-II)求解模型。为了进一步提高NSGA-Il算法获得的帕累托最优解的多样性和收敛性,提出了一种改进的NSGA-II算法(I-NSGA-II)。该算法基于基本的NSGA-II,主要改进如下:首先,为种群初始化建立了一个新的混合混沌映射模型。其次,引入了梯度算子,它与交叉算子和变异算子结合,组成了混合算子,从而产生了新的种群。最后,使用混沌种群候选者的替换操作来选择新种群。最后,在采油作业区的实际生产过程中证明了该算法的性能,结果验证了该模型和算法的有效性。 (C)2015台湾化学工程师学会。由Elsevier B.V.发布。保留所有权利。

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