Improved General Relativity Search Algorithm (IGRSA) for Designing Power System Stabilizers

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Behzad Ehsanmaleki
Hamid Radmanesh

Abstract

This paper proposes a novel optimization algorithm for designing power system stabilizers (PSSs). The prospect of attaining higher stability motivated the authors to creat a new optimization algorithm for this study. A novel algorithm named the Improved General. Relativity Search Algorithm (IGRSA) was also developed by cloud theory to improve the performance of GRSA. The supremacy of the proposed approach is tested by comparing it with an introduced objective function in a medium multi-machine power system. The nonlinear simulation results and eigenvalues analysis has demonstrated that the proposed approach in this study is highly effective in enhancing the dynamic stability of the power system.

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How to Cite
Ehsanmaleki, B. ., & Radmanesh, H. . (2024). Improved General Relativity Search Algorithm (IGRSA) for Designing Power System Stabilizers. ECTI Transactions on Electrical Engineering, Electronics, and Communications, 22(3). https://doi.org/10.37936/ecti-eec.2024223.256490
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