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Multi-objective reactive power market clearing in competitive electricity market using HFMOEA

机译:使用HFMOEA在竞争性电力市场中进行多目标无功市场清算

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This paper presents an application of a hybrid fuzzy multi-objective evolutionary algorithm (HFMOEA) for solving a highly constraint, mixed integer type, complex multi-objective reactive power market clearing (RPMC) problem for the competitive electricity market environment. In HFMOEA based multi-objective optimization approach, based on the output of a fuzzy logic controller crossover and mutation probabilities are varied dynamically. It enhances stochastic search capabilities of HFMOEA. In multi-objective RPMC optimization framework, two objective functions namely the total payment function (TPF) for reactive power support from generators and synchronous condensers and the total real transmission loss (TRTL) are minimized simultaneously for clearing the reactive power market. The proposed HFMOEA based multi-objective RPMC scheme is tested on a standard IEEE 24 bus reliability test system and its performance is compared with five other multi-objective evolutionary techniques such as MOPBIL, NSGA-II, UPS-EMOA and SPEA-2 and a new extended form of NSGA (ENSGA-II). Applying all these six evolutionary techniques, a detailed statistical analysis using T-test and boxplots is carried out on three performance metrics (spacing, spread and hypervolume) data for RPMC problem. The obtained simulation results confirm the overall superiority of HFMOEA to generate better Pareto-optimal solutions with higher convergence rate as compared to above mentioned algorithms. Further, TPF and TRTL values corresponding to the best compromise solutions are obtained using said multi-objective evolutionary techniques. These values are compared with one another to take better market clearing decisions in competitive electricity environment.
机译:本文提出了一种混合模糊多目标进化算法(HFMOEA)在解决竞争激烈的电力市场环境中的高约束,混合整数类型,复杂的多目标无功市场清算(RPMC)问题中的应用。在基于HFMOEA的多目标优化方法中,基于模糊逻辑控制器的输出,交叉和变异概率会动态变化。它增强了HFMOEA的随机搜索功能。在多目标RPMC优化框架中,两个目标函数,即发电机和同步电容器无功功率支持的总支付功能(TPF)和总实际传输损耗(TRTL)被同时最小化,以清理无功市场。建议的基于HFMOEA的多目标RPMC方案在标准IEEE 24总线可靠性测试系统上进行了测试,并将其性能与其他五种多目标进化技术(例如MOPBIL,NSGA-II,UPS-EMOA和SPEA-2)进行了比较。 NSGA的新扩展形式(ENSGA-II)。应用所有这六种进化技术,对RPMC问题的三个性能指标(间隔,散布和超量)数据进行了T检验和箱形图的详细统计分析。与上述算法相比,所获得的仿真结果证实了HFMOEA在产生具有更高收敛速度的更好帕累托最优解方面的整体优势。此外,使用所述多目标进化技术获得对应于最佳折衷解决方案的TPF和TRTL值。将这些值相互比较,以在竞争激烈的电力环境中做出更好的市场清算决策。

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