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Home / Archives / Volume-5 / Issue-1 / Article-9

Volume - 5 | Issue - 1 | march 2023

Optimized Boost Converter Controller Design using QBGA for R-Load Open Access
Reeba Rex S  , Pravin Rose T, Amudaria S  188
Pages: 121-133
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Cite this article
S, Reeba Rex, Pravin Rose T, and Amudaria S. "Optimized Boost Converter Controller Design using QBGA for R-Load." Journal of Electrical Engineering and Automation 5, no. 1 (2023): 121-133
DOI
10.36548/jeea.2023.1.009
Published
06 May, 2023
Abstract

A DC-DC boost converter is used for providing stabilized output to the variation in R-load. In this research, a suitable controller which can be practically realized for DC-DC boost converter has been designed. Moreover, an optimization technique that possesses simple implementation, better convergence quality and enhanced computational ability has been developed. The PID controller parameters are tuned optimally using various optimization algorithms for enhancing the dynamic response of the converter in the presence of R-load. Tuning the PID controller parameters using QBGA algorithms enhances the efficiency of about 80% with R-load. Furthermore, the technique's effectiveness is demonstrated in terms of settling time, rise time, overshoot, peak time, integral absolute error, integral time absolute value error, and integral square error.

Keywords

Queen Bee Genetic Algorithm (QBGA) PID Integral Square Error (ISE) Integral Time Absolute Value Error (ITAE) and (Integral Absolute Error) IAE

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