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Application of a Novel Jaya Algorithm Based on Chaotic Sequence and Opposition-based Learning in the Multi-objective Optimal Operation of Cascade Hydropower Stations System

机译:基于混沌序列和基于反对基于反对的Jaya算法在级联水电站系统的多目标最佳运行中的应用

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The traditional operation of the cascade hydropower stations system (CHPS) mainly focus on the maximization of power generation benefits, but ignores the interference of CHPS operation to the river ecosystem, therefore, carrying out the multi-objective optimal operation (MOOP) of CHPS considering ecological demands is crucial. In this paper, a MOOP model considering the ecological objective is established. To effectively solve the MOOP problems, a novel multi-objective Jaya algorithm (MOCOM-Jaya) is proposed, where the quality of the initial population is enhanced based on the chaotic sequence, the later disturbance term and Gaussian mutation are incorporated to improve the local search ability, the elite opposition-based learning is adopted to broaden the optimization space. The proposed algorithm is applied to the study of MOOP of CHPS in the Wujiang river, and the results show that compared with MOPSO and NSGA-II, MOCOM-Jaya can gain the solution set with better convergence and distribution for the MOOP. The competition relationship between the power generation objective (PGO) and the ecological objective (ECO) is revealed based on the partial replacement ratio method. The results show that the competitiveness of PGO and ECO experienced a trade lead with the increase of power generation. The mean competitiveness ratios of PGO to ECO ( (CPRP-E)over-bar) in three typical years (dry, normal, wet) are 3.22, 3.17 and 3.15, indicating that the PGO is dominant in the competition with the ECO as a whole.
机译:级联水电站系统(CHPS)的传统操作主要关注发电效益的最大化,但忽略了CHPS操作对河流生态系统的干扰,因此考虑了CHP的多目标最佳操作(MOOP)生态需求至关重要。本文建立了考虑生态目标的MOOP模型。为了有效解决MOOP问题,提出了一种新的多目标Jaya算法(MOCOM-JAYA),其中基于混沌序列增强了初始群体的质量,并入到改善当地的扰动项和高斯突变搜索能力,采用精英基于反对的学习来扩大优化空间。该算法应用于乌江中CHP的莫波普的研究,结果表明,与MOPSO和NSGA-II相比,MoCom-Jaya可以获得更好的收敛和莫莫的融合和分布的解决方案。基于部分替代比法揭示了发电目标(PGO)与生态物镜(ECO)之间的竞争关系。结果表明,PGO和ECO的竞争力随着发电的增加而经历了贸易领导。在三个典型数年(干燥,正常,湿)中,PGO对Eco((CPRP-E)过度的平均竞争力比例为3.22,3.17和3.15,表明PGO在与ECO竞争中占主导地位所有的。

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