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Configuring two-algorithm-based evolutionary approach for solving dynamic economic dispatch problems

机译:配置基于两个算法的进化方法来解决动态经济调度问题

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A dynamic economic dispatch (DED) problem is a complex constrained optimization problem that has the objective of economically allocating power demands to the available generators for a certain period. Although, over the last few decades, different evolutionary algorithms (EAs) for solving different types of DED problems have been proposed, no single EA has consistently been the best for a wide range of them. In this paper, to solve a wide range of DED problems, a general EA framework which automatically configures the better EA from two considered during the evolutionary process is proposed. In it, a real-coded genetic algorithm and self-adaptive differential evolution are performed under two sub-populations, in which the number of individuals of a sub-population is dynamically varied in each generation based on each algorithm's performance during previous generations. Moreover, a heuristic technique is employed to repair infeasible solutions towards feasible ones to enhance the convergence rate of the proposed algorithm. The effectiveness of the proposed approach is demonstrated on a number of DED problems, with the simulation results, which are compared with those from recent state-of-the-art algorithms, revealing that it has merit in terms of solution quality and reliability.
机译:动态经济调度(DED)问题是一个复杂的约束优化问题,其目标是在一定时期内经济地将功率需求分配给可用的发电机。尽管在过去的几十年中,已经提出了用于解决不同类型的DED问题的不同进化算法(EA),但没有一个EA一直以来一直是最广泛的解决方案。在本文中,为了解决各种各样的DED问题,提出了一种通用EA框架,该框架可以在进化过程中从两个考虑因素中自动配置更好的EA。其中,在两个子种群下执行实编码遗传算法和自适应差分进化,其中子种群的个体数量根据前几代算法的性能在每一代中动态变化。此外,采用启发式技术将不可行的解决方案修复为可行的解决方案,以提高所提出算法的收敛速度。在许多DED问题上证明了该方法的有效性,并将仿真结果与最新技术的仿真结果进行了比较,表明该方法在解决方案质量和可靠性方面具有优势。

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