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A Parallel Adaptive Particle Swarm Optimization Algorithm for Economic/Environmental Power Dispatch

机译:经济/环境权力调度的平行自适应粒子群优化算法

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摘要

A parallel adaptive particle swarm optimization algorithm (PAPSO) is proposed for economic/environmental power dispatch, which can overcome the premature characteristic, the slow-speed convergence in the late evolutionary phase, and lacking good direction in particles’ evolutionary process. A search population is randomly divided into several subpopulations. Then for each subpopulation, the optimal solution is searched synchronously using the proposed method, and thus parallel computing is realized. To avoid converging to a local optimum, a crossover operator is introduced to exchange the information among the subpopulations and the diversity of population is sustained simultaneously. Simulation results show that the proposed algorithm can effectively solve the economic/environmental operation problem of hydropower generating units. Performance comparisons show that the solution from the proposed method is better than those from the conventional particle swarm algorithm and other optimization algorithms.
机译:并行自适应粒子群算法(PAPSO)提出了经济/环境功率调度,其可以克服过早特性,在后期演化阶段慢速度收敛,并且缺乏粒子的进化过程中很好的方向。搜索人口随机分为几个亚群。然后,对于每个亚群,使用所提出的方法同步地搜索最佳解决方案,因此实现了并行计算。为避免融合到局部最优,引入交叉运算符以交换群体之间的信息,并且群体的多样性同时持续。仿真结果表明,该算法能够有效解决水电机组的经济/环境运行问题。性能比较表明,来自所提出的方法的解决方案优于来自传统粒子群算法和其他优化算法的解决方案。

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