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A robust learning based evolutionary approach for thermal-economic optimization of compact heat exchangers

机译:基于稳健学习的进化方法,用于紧凑型热交换器的热经济优化

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This paper presents a robust, efficient and parameter-setting-free evolutionary approach for the optimal design of compact heat exchangers. A learning automata based particle swarm optimization (LAPSO) is developed for optimization task. Seven design parameters, including discreet and continuous ones, are considered as optimization variables. To make the constraint handling straightforward, a self-adaptive penalty function method is employed. The efficiency and the accuracy of the proposed method are demonstrated through two illustrative examples that include three objectives, namely minimum total annual cost, minimum weight and minimum number of entropy generation units. Numerical results indicate that the presented approach generates the optimum configuration with higher accuracy and a higher success rate when compared with genetic algorithms (GAs) and particle swarm optimization (PSO).
机译:本文为紧凑型热交换器的优化设计提出了一种鲁棒,高效且无参数设置的进化方法。针对优化任务,开发了一种基于学习自动机的粒子群算法(LAPSO)。包括离散和连续参数在内的七个设计参数被视为优化变量。为了使约束处理变得简单明了,采用了自适应惩罚函数方法。通过两个具有三个目标的说明性示例,证明了所提方法的效率和准确性,这三个目标分别是最小的年度总成本,最小的权重和最小的熵生成单元数。数值结果表明,与遗传算法(GAs)和粒子群优化(PSO)相比,本文提出的方法能够以更高的精度和更高的成功率生成最优配置。

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