A Novel PID Control Strategy Based on PSO-BP Neural Network for Phase-Shifted Full-Bridge Current-Doubler Synchronous Rectifying Converter

ieee advanced information management communicates electronic and automation control conference(2021)

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摘要
In this paper, a phase-shifted full-bridge rectifier (PSFB) based on MOSFET and its control strategies are studied. Aiming at its high loss, low efficiency and large ripple coefficient, a phase-shifted full-bridge based on IGBT is proposed to replace MOSFET phase-shifted full bridge to further reduce the on-state power loss. The current-doubler synchronization technology is applied to the rectifying converter to reduce the ripple factor further. In the control strategy, various double closed-loop PI control effects achieved by BP neural network and Particle Swarm optimization BP neural network (PSO-BP) are compared and analysed through modelling and conducting simulation. The simulation results demonstrate that PSO-BP neural network control strategy has the advantages of the fastest response speed, the smallest overshoot and the shortest steady-state time. Comprehensive test results indicate that the proposed IGBT phase-shift full bridge current-doubler synchronous rectifying converter based on PSO-BP neural network control has a good performance of excellent waveform, a fast dynamic response, a wide range of output voltage.
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关键词
BP Neural Network,Phase-shifted-full-bridge,PSO,PID,Current-doubler synchronous rectifier
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