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Optimal generation scheduling and dispatch of thermal generating units considering impact of wind penetration using hGWO-RES algorithm

机译:考虑风渗透影响的热发电单元的最佳发电调度与调度使用HGWO-RES算法

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摘要

In order to achieve paramount economy, hybrid renewable energy sources are gaining importance, as renewable sources are costless. Over the past few years wind energy incorporation drew more consideration in the electricity market, as wind power took an affirmative role in energy saving as well as sinking emission pollutants. Recently developed Grey wolf optimizer (GWO) algorithm has conspicuous behavior for verdicting global optima, without getting ensnared in premature convergence. In the proposed research the exploitation phase of the grey wolf optimizer has been further improved using random exploratory search algorithm, which uses perturbed solutions vectors along with previously generated solution vectors. The paper presents a hybrid version of Grey Wolf Optimizer algorithm combined with random exploratory search algorithm (hGWO-RES) for the solution of combinatorial scheduling and dispatch problem of electric power systems. To validate the feasibility of the algorithm, the proposed algorithm has been tested on 23 benchmark problems. To verify the feasibility and efficacy of operation of proposed algorithm on generation scheduling and dispatch of electric power systems, small and medium scale power systems consisting of 7-, 10-, 19-, 20- and 40-generating units systems taken into consideration. Commitment and scheduling pattern has been evaluated with and without wind integration and it has been experimentally founded that proposed hybrid algorithm provides superior solution as compared to other recently reported meta-heuristics search algorithms.
机译:为了实现派大的经济,混合可再生能源正在获得重要性,因为可再生能源是无成本的。在过去的几年里,风能公司在电力市场中推动了更多的考虑因素,因为风力在节能和沉没的排放污染物中发挥肯定作用。最近开发的灰狼优化器(GWO)算法具有判决全球Optima的显眼行为,而不会在早产的融合中被纳入。在拟议的研究中,使用随机探索搜索算法进一步改善了灰狼优化器的开发阶段,该算法使用扰动的解决方案向量以及先前产生的解决方案向量。本文介绍了一种与随机探索搜索算法(HGWO-RES)相结合的灰狼优化算法,用于解决电力系统的组合调度和调度问题。为了验证算法的可行性,已在23个基准问题上测试了所提出的算法。为了验证所提出的算法的可行性和功效,可以考虑由7-,10-,19-,20-和40个生成单元系统组成的中小型电力系统的发电调度和调度。已经在没有风集成的情况下评估了承诺和调度模式,并且已经通过实验成立,与其他最近报告的Meta-heuRistics搜索算法相比,提出的混合算法提供了卓越的解决方案。

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