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Multiobjective thermal power dispatch using opposition-based greedy heuristic search

机译:基于对立的贪婪启发式搜索的多目标火电调度

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This paper proposes an opposition-based greedy heuristic search (OGHS) strategy to solve multi objective thermal power dispatch problem as a non-linear constrained optimization problem considering operating cost and pollutant emissions as competing objectives. The optimization problem is solved to find global solution, in case any one objective function is non-convex and non-differentiable. To generate initial population opposition-based learning is applied to select good candidates by exploring the search space extensively. Further, opposition-based learning is exploited for migration to maintain the diversity in the set of feasible solutions. Proposed method applies mutation strategy by perturbing the genes heuristically and seeking better one. This concept introduces parallelism and makes the algorithm always greedy for better solution. The greediness and randomness pulls the algorithm towards the global solution. The algorithm is also self sufficient without the need of tuning any parameter that effects acceleration of the algorithm. Fuzzy-theory is employed for decision-making that selects best solution from available non-inferior solutions. Feasible solution is also achieved heuristically that modifies the generation-schedule and avoids violation of operating generation limits. Proposed method has been implemented to analyze economic and multi-objective thermal power dispatch problems considering ramp-rate limits, prohibited-operating-zones, valve-point-loading effects, multiple-fuel options, environmental effects, and exact transmission losses encountered in realistic power system operation. The validity of proposed method is demonstrated on medium and large power systems. Proposed optimization technique is emerged out to compete with existing solution techniques. Wilcoxon signed-rank test for independent samples also proves the supremacy of proposed algorithm OGHS. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于对立的贪婪启发式搜索(OGHS)策略,以运行成本和污染物排放为竞争目标,解决了作为非线性约束优化问题的多目标火电调度问题。如果任何一个目标函数都是非凸且不可微的,则解决优化问题以找到全局解。为了产生初始种群,通过广泛地探索搜索空间,将基于对立面的学习应用于选择好的人选。此外,基于对立的学习被用于迁移,以维持可行解决方案集中的多样性。提出的方法通过启发式干扰基因并寻找更好的基因来应用突变策略。这个概念引入了并行性,并使算法总是贪婪地寻求更好的解决方案。贪婪和随机性将算法推向全局解。该算法也是自给自足的,无需调整任何影响算法加速的参数。模糊理论用于决策,该决策从可用的非劣等解决方案中选择最佳解决方案。还启发式地获得了可行的解决方案,该方案修改了发电计划并避免违反运行发电限制。已采取建议的方法来分析经济和多目标火电调度问题,其中考虑了斜坡速率限制,禁止的工作区域,阀点负载效应,多种燃料选择,环境效应以及实际中遇到的确切传输损耗电力系统运行。在大中型电力系统上证明了该方法的有效性。提出了建议的优化技术以与现有解决方案技术竞争。针对独立样本的Wilcoxon符号秩检验也证明了所提出算法OGHS的优越性。 (C)2016 Elsevier Ltd.保留所有权利。

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