Research on optimal allocation of flow and head in cascade pumping stations based on Harris hawks optimization

Water Supply Pub Date : 2023-12-19 DOI:10.2166/ws.2023.333
Xiaopeng Hou, Leike Zhang, Xiaolian Liu, Xueni Wang, Yu Tian, Xianyu Deng, Chen Ye
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Abstract

To address the problems of massive energy consumption and low operating efficiency in cascade pumping stations (CPSs), an optimized scheduling model for CPSs with water flow and head constraints was constructed in this study. The Harris hawks optimization (HHO) algorithm was employed to solve this model owing to its excellent performance in the field of engineering majorization. Based on this model, an optimal scheduling method for CPSs was proposed and applied to the three-stage pumping station system. The results demonstrate that the optimization schemes based on the HHO algorithm can improve the operational efficiency and annual cost savings under three different pumping flow conditions by 0.16, 0.55, and 0.56%, reducing the annual operating cost by ¥22,703, ¥74,581, and ¥75,356, respectively, relative to the currently used schemes. These results are better than those obtained by the particle swarm optimization (PSO) algorithm and genetic algorithm (GA). Furthermore, in terms of computational time, the optimization method with the HHO algorithm can show an improvement of 8.94–29.74% compared with those of PSO and GA, verifying the feasibility and efficiency of the HHO algorithm in the optimal scheduling for CPSs. Therefore, the proposed method is effective at solving the scheduling problem of CPSs.
基于哈里斯鹰优化的梯级泵站流量和扬程优化分配研究
为解决级联泵站(CPS)能耗大、运行效率低的问题,本研究构建了一个具有水流量和扬程约束的 CPS 优化调度模型。由于哈里斯鹰优化算法(HHO)在工程专业领域的出色表现,本研究采用该算法求解该模型。基于该模型,提出了一种 CPS 的优化调度方法,并将其应用于三级泵站系统。结果表明,与目前使用的方案相比,基于 HHO 算法的优化方案在三种不同的抽水流量条件下可提高运行效率并节约年成本 0.16%、0.55% 和 0.56%,分别降低年运行成本 22,703 日元、74,581 日元和 75,356 日元。这些结果优于粒子群优化算法(PSO)和遗传算法(GA)。此外,在计算时间方面,采用 HHO 算法的优化方法比 PSO 和 GA 的优化方法提高了 8.94%-29.74%,验证了 HHO 算法在 CPS 优化调度中的可行性和效率。因此,所提出的方法能有效解决 CPS 的调度问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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