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publication name Optimal Genetic-sliding Mode Control of VSC-HVDC Transmission Systems
Authors M. A. Ebrahim; M. Ahmed; H. S. Ramadan; M. Becherif
year 2015
keywords Dynamic Behaviour; Genatic Algorithm; Optimal Control; Robustness; Sliding Mode Control; VSC-HVDC Systems
journal Energy Procedia
volume 74
issue 1
pages 1048-1060
publisher ScienceDirect
Local/International International
Paper Link http://www.sciencedirect.com/science/article/pii/S1876610215015118
Full paper download
Supplementary materials Not Available
Abstract

This paper deals with the design of a hybrid optimal Genetic-Sliding Mode Control (GA-SMC) approach for VSC- HVDC transmission systems for improving the system's dynamic stability over a wide range of operating conditions considering different parameter variations and disturbances. For this purpose, a comprehensive state of the art of the VSC-HVDC stabilization dilemma is discussed. The nonlinear VSC-HVDC model is developed. The problem of de- signing a nonlinear feedback control scheme via two control strategies is addressed seeking a better performance. For ensuring robustness and chattering free behavior, the conventional SMC (C-SMC) scheme is realized using a boundary layer hyperbolic tangent function for the sliding surface. Then, the Genetic Algorithm (GA) is employed for determining the optimal gains for such SMC methodology forming a modified nonlinear GA-SMC control in order to conveniently stabilize the system end enhance its performance. The simulation results verify the enhanced performance of the VSC-HVDC transmission system controlled by SMC alone compared to the proposed optimal GA-SMC control. The comparative dynamic behavior analysis for both SMC and GA-SMC control schemes are presented.

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