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Dual‐stage day‐ahead optimized performance of renewable‐based microgrids

Research Abstract

In distributed networks, wind turbine generators (WTGs) are to be optimally sized and positioned for cost‐effective and efficient network service. Various meta‐heuristic algorithms have been proposed to allocate WTGs within microgrids. However, the ability of these optimizers might not be guaranteed with uncertainty loads and wind generations. This paper presents novel meta‐heuristic optimizers to mitigate extreme voltage drops and the total costs associated with WTGs allocation within microgrids. Arithmetic optimization algorithm (AOA), coronavirus herd immunity optimizer, and chimp optimization algorithm (ChOA) are proposed to manipulate these aspects. The trialed optimizers are developed and analyzed via Matlab, and fair comparison with the grey wolf optimization, particle swarm optimization, and the mature genetic algorithm are introduced. Numerical results for a large‐scale 295‐bus system (composed …

Research Authors
Ahmed M Helmi, Farag K Abo‐Elyousr, Hassan Haes Alhelou, Haitham S Ramadan
Research Date
Research Department
Research Journal
IET Renewable Power Generation
Research Pages
2050-2063
Research Vol
17
Research Year
2023