Chaotic-Opposition Whale optimization algorithm based load flow analysis of small-scale, median and broad critical power systems

Suvabrata Mukherjee, P. Roy
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Abstract

In power system phraseology load flow study deals with attainment of steady state explication of the power network and determined for steady state powers for various buses along with the bus voltages. For adhering to the load flow problem, a modified version of Whale Optimization Algorithm has been suggested by the authors in this paper. The algorithm is a trustworthy meta-heuristic optimization algorithm derived from nature and motivated by the humpback whale bubble-net hunting hypothesis. The accuracy and reliability has been enhanced by the introduction of chaos theory and opposition-based learning (OBL) to WOA so as to effectively cover the entire search region and thereby enhance the convergence of single or multi-objective metaheuristic algorithms. The new algorithm termed as Chaotic-Opposition based Whale Optimization (COWOA) uses the chaos theory for primary tuning of parameters of WOA by which the exploitation and exploration processes are adjusted and OBL is used to look for the solutions in reverse direction of indicated values in order to test if selects in reverse direction can provide even better solutions. Numerical and simulation results demonstrate that in discerning scenario when traditional load flow approaches flounder, COWOA is able to provide effective solutions.
基于混沌对抗鲸鱼优化算法的小尺度、中值和宽临界电力系统潮流分析
在电力系统术语中,潮流研究涉及电网稳态解释的实现,并确定各母线的稳态功率随母线电压的变化。为了解决负荷流问题,本文提出了一种改进的Whale优化算法。该算法是一种可靠的元启发式优化算法,源于自然,受座头鲸气泡网猎取假说的启发。将混沌理论和基于对立的学习(OBL)引入到WOA中,提高了精度和可靠性,有效覆盖了整个搜索区域,从而提高了单目标或多目标元启发式算法的收敛性。基于混沌对立的鲸鱼优化算法(Chaotic-Opposition - based Whale Optimization, COWOA)利用混沌理论对WOA的参数进行初步调整,调整开发和勘探过程,利用OBL在指示值的反向寻找解,以检验反向选择是否能提供更好的解。数值和仿真结果表明,在识别传统潮流方法陷入困境的情况下,COWOA能够提供有效的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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