Voltage Source Converter In HVDC Transmission with Optimization of Its Performance Parameters Using Genetic Algorithm

Authors

  • Asst. Prof Anil Choubey

Keywords:

VSC-HVDC, GA approach, Optimization, PI controller, algorithms, Parameters, Performance

Abstract

The strategy of control for high-voltage direct current system on voltage-source converter VSC-HVDC is based on an important element which is PI controller. Because of its simple structure and strong robustness in a wide range of serving conditions, it has been used in the control system in the last few years. Therefore, it is important for the VSC-HVDC system permanent regime to choose proper PI parameters. The use of conventional techniques to find suitable PI parameters creates a number of challenges for the system operators, because it is a difficult process and time consuming. In this paper, a new GA intelligence algorithm called optimization is introduced to find the optimal parameters of the PI controller. This approach offers great flexibility for the permanent regime recovery and improves the stability of the VSC-HVDC link compared to conventional techniques. The obtained results are presented to show the effectiveness of the proposed GA implementation for optimal controller design for VSC-HVDC transmission. MATLAB/Similink simulations are provided to demonstrate the performance of the proposed approach.

References

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How to Cite

Asst. Prof Anil Choubey. (2017). Voltage Source Converter In HVDC Transmission with Optimization of Its Performance Parameters Using Genetic Algorithm. International Journal of Research & Technology, 5(1), 70–77. Retrieved from https://ijrt.org/j/article/view/755

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