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Chaotic Evolutionary Algorithms for Multi-Reservoir Optimization

机译:多储层优化的混沌进化算法

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The water sharing dispute in a multi-reservoir river basin forces the water resources planners to have an integrated operation of multi-reservoir system rather than considering them as a single reservoir system. Thus, optimizing the operations of a multi-reservoir system for an integrated operation is gaining importance, especially in India. Recently, evolutionary algorithms have been successfully applied for optimizing the multi-reservoir system operations. The evolutionary optimization algorithms start its search from a randomly generated initial population to attain the global optimal solution. However, simple evolutionary algorithms are slower in convergence and also results in sub-optimal solutions for complex problems with hardbound variables. Hence, in the present study, chaotic technique is introduced to generate the initial population and also in other search steps to enhance the performance of the evolutionary algorithms and applied for the optimization of a multi-reservoir system. The results are compared with that of a simple G A and DE algorithm. From the study, it is found that the chaotic algorithm with the general optimizer has produced the global optimal solution (optimal hydropower production in the present case) within lesser generations. This shows that coupling the chaotic algorithm with evolutionary algorithm will enrich the search technique by having better initial population and also converges quickly. Further, the performances of the developed policies are evaluated for longer run using a simulation model to assess the irrigation deficits. The simulation results show that the model satisfactorily meets the irrigation demand in most of the time periods and the deficit is very less.
机译:多水库流域的水分配争端迫使水资源规划者必须具有多水库系统的综合运作,而不是将其视为一个单一的水库系统。因此,为综合运行而优化多水库系统的运行正变得越来越重要,特别是在印度。最近,进化算法已成功应用于优化多水库系统的运行。进化优化算法从随机生成的初始种群开始搜索,以获得全局最优解。但是,简单的进化算法收敛速度较慢,并且还会导致具有硬约束变量的复杂问题的次优解决方案。因此,在本研究中,引入了混沌技术来生成初始种群,并且在其他搜索步骤中也引入了混沌技术以增强进化算法的性能,并将其应用于多水库系统的优化。将结果与简单的G A和DE算法进行比较。从研究中发现,采用通用优化器的混沌算法在较小的一代内就产生了全局最优解(在当前情况下为最优水力发电)。这表明,将混沌算法与进化算法相结合将通过具有更好的初始种群来丰富搜索技术,并且会很快收敛。此外,使用模拟模型评估灌溉赤字,可以对已制定政策的绩效进行长期评估。仿真结果表明,该模型在大多数时间段内都能很好地满足灌溉需求,且赤字少得多。

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