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Simplex quantum-behaved particle swarm optimization algorithm with application to ecological operation of cascade hydropower reservoirs

机译:单纯X量子行为粒子群优化算法应用于级联水电站生态运行

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With growing attentions paid to ecological protection in recent years, the ecological operation of cascade hydropower reservoirs is becoming an increasingly significant problem in water resource system. Mathematically, the ecological operation of cascade hydropower reservoirs is a high-dimensional, nonlinear and strong spatiotemporal coupling constrained optimization problem. To overcome the premature convergence and stagnation search of traditional methods in resolving this problem, this paper develops a novel algorithm known as simplex quantum-behaved particle swarm optimization, where the probabilistic mutation operator is performed on historical best position of some individuals, and then the simplex neighborhood search strategy based on the dynamic probability identification is used to enhance the local exploration ability of the swarm. The numerical experiments of 17 classical test functions indicate that the presented method can achieve satisfactory results in both convergence speed and global search ability. The application results from China's Wu hydropower system indicate that our method has satisfying performance in reducing the ecological water shortage. Hence, this paper provides a novel effective tool for the complex ecological operation problem of cascade hydropower reservoirs. (C) 2019 Elsevier B.V. All rights reserved.
机译:近年来,随着生态保护的不断增长的关注,级联水电站的生态运行在水资源系统中成为越来越重要的问题。在数学上,级联水电站的生态运行是一种高维,非线性和强不稳的时空耦合约束优化问题。为了克服传统方法的过早收敛和停滞搜索解决解决这个问题时,开发了一种称为单纯素量子表现粒子群优化的新算法,其中概率突变算子是对一些人的历史最佳位置进行的,然后基于动态概率识别的单纯形邻域搜索策略用于增强群体的本地探索能力。 17古典测试函数的数值实验表明,所提出的方法可以实现令人满意的令人满意的因素和全球搜索能力。中国吴水电系统的应用结果表明,我们的方法在减少生态水资源短缺方面具有令人满意的性能。因此,本文为级联水电站储层复杂生态运行问题提供了一种新颖的工具。 (c)2019年Elsevier B.V.保留所有权利。

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