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Application of differential evolution-based constrained optimization methods to district energy optimization and comparison with dynamic programming

机译:基于差分进化的约束优化方法在区域能源优化中的应用及与动态规划的比较

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摘要

Metaheuristic optimization methods, as model-free approaches, are expected to be applicable to practical issues (e.g., engineering problems). Although optimization methods have been proposed or improved through many different theoretical studies, they should be tested using not only certain benchmark functions, but also other models representing practical situations, such as those involving discrete control variables and equality or inequality constraints. Hence, in this study, differential evolution based constrained optimization methods were applied to district energy optimization. To obtain theoretical results, several different types of proposed methods were compared with dynamic programming and genetic algorithm. In addition, a parametric study was conducted to evaluate the effects of the population size, mutation rate, and random jumping rate. The proposed method, namely, epsilon-constrained differential evolution with random jumping II, proved capable of producing results that differ from the theoretical results by only 2.1% within a computation time 1/457 of that required by dynamic programming. In addition, the method was superior to genetic algorithm which had been often adopted as a metaheuristic method in engineering problems because the result of the proposed method was 460,417 yen/day and that of genetic algorithm was 660,424 yen/day. Therefore, the proposed method has high potential to provide comprehensive district energy optimization within a realistic computational time.
机译:作为无模型方法的元启发式优化方法有望应用于实际问题(例如工程问题)。尽管已经通过许多不同的理论研究提出或改进了优化方法,但它们不仅应使用某些基准函数进行测试,还应使用其他代表实际情况的模型进行测试,例如涉及离散控制变量和相等性或不等式约束的模型。因此,在这项研究中,基于差分演化的约束优化方法被应用于区域能源优化。为了获得理论结果,将几种不同类型的建议方法与动态规划和遗传算法进行了比较。此外,进行了一项参数研究,以评估种群规模,突变率和随机跳跃率的影响。所提出的方法,即具有随机跳跃II的受ε约束的差分演化,证明能够在动态编程所需的计算时间的1/457内产生与理论结果相差仅2.1%的结果。另外,由于该方法的结果是460,417日元/天,而遗传算法的结果是660,424日元/天,因此该方法优于在工程问题中经常被用作元启发式方法的遗传算法。因此,所提出的方法在现实的计算时间内具有全面的区域能源优化的潜力。

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