
Dynamic response enhancement of grid‐tied ac microgrid using salp swarm optimization algorithm
Author(s) -
Jumani Touqeer Ahmed,
Mustafa Mohd Wazir,
Rasid Madihah Md.,
Memon Zeeshan Anjum
Publication year - 2020
Publication title -
international transactions on electrical energy systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.428
H-Index - 42
ISSN - 2050-7038
DOI - 10.1002/2050-7038.12321
Subject(s) - microgrid , controller (irrigation) , particle swarm optimization , control theory (sociology) , electric power system , computer science , grid , engineering , renewable energy , power (physics) , algorithm , control (management) , electrical engineering , mathematics , geometry , artificial intelligence , agronomy , physics , quantum mechanics , biology
Summary To alleviate the overloads in the power system and to reduce the exponential growth in carbon dioxide (CO 2 ) emissions, deployment of the renewable energy sources (RES) into the power system is the need of the hour. However, injecting these RES into the current power system network causes large voltage and power overshoots hence deteriorate the transient response and power quality of the overall power system. In this paper, an efficient solution of the above‐mentioned issues is explored by developing an optimal microgrid (MG) controller using one of the most modern and intelligent artificial intelligence (AI) techniques named the salp swarm optimization algorithm (SSA). The intelligence of the SSA is exploited to select the optimal controller gains and dc‐link capacitance value by minimizing a time integrating error fitness function (FF) which in‐turn enhances the dynamic response and power quality of the studied MG system. The proposed grid‐tied MG controller is designed to achieve the preset active and reactive power sharing ratio between distributed generator (DG) and utility grid during DG and load switching conditions. To validate the superiority of the proposed controller, its performance is compared with that of its precedent grasshopper optimization algorithm (GOA)‐based controller for the identical operating conditions and system configuration. The outcomes of the study show that the proposed MG controller outperforms its competitor in terms of transient response and quality of power.