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An improved partheno genetic algorithm for multi-objective economic dispatch in cascaded hydropower systems

机译:梯级水电系统多目标经济调度的改进单性遗传算法

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The multi-objective economic dispatch (MOED) problem in cascaded hydropower systems is a complicated nonlinear optimization problem with a group of complex constraints. In this paper, an improved partheno genetic algorithm (IPGA) for resolving the MOED problem in hydropower energy systems based on the non-uniform mutation operator is proposed. In the new algorithm, the crossover operator is removed and only mutation operation is made, which makes it simpler than GA in the genetic operations and not generate invalid offspring during evolution. With the help of incorporating greedy selection idea into the non-uniform mutation operator, IPGA searches the solution space uniformly at the early stage and very locally at the later stage, which makes it avoid the random blind jumping and stay at the promising solution areas. Finally, the proposed algorithm is applied to a realistic hydropower energy system with two giant scale cascaded hydropower plants in China. Compared with other algorithms, the results obtained using IPGA verify its superiority in both efficiency and precision.
机译:级联水电系统中的多目标经济调度(MOED)问题是具有一组复杂约束的复杂非线性优化问题。提出了一种基于非均匀变异算子的改进单性遗传算法(IPGA),用于解决水电能源系统的MOED问题。在新算法中,去除了交叉算子,仅进行了突变操作,这使其在遗传操作中比遗传算法更简单,并且在进化过程中不会产生无效的后代。通过将贪婪选择思想整合到非均匀突变算子中,IPGA可以在早期阶段均匀地搜索解决方案空间,而在后期阶段则可以非常局部地进行搜索,从而避免了随机盲目跳跃并停留在有希望的解决方案区域。最后,将所提出的算法应用于中国两座大型梯级水电站的现实水电能源系统。与其他算法相比,使用IPGA获得的结果证明了其在效率和精度上的优越性。

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