Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/11098
Title: Design and Implementation of Closed Loop Control of PSFB Topology Using Artificial Intelligence
Authors: Gupta, Yatharth
Keywords: Closed loop control systems;Controllers;Learning systems;Power control;Proportional control systems;Reinforcement learning;Topology;Two term control systems;Analog components;Closed-loop control;Control inputs;Design and implementations;Digital controllers;Full-bridge topology;In-phase;Output power;Phase shift full bridges;Reinforcement learnings;Pulse width modulation
Issue Date: 2022
Publisher: SAE International
Citation: Abichandani, N., Gupta, Y., Hiranandani, A. S., & Adm Palaniappan, K. (2022). Design and implementation of closed loop control of PSFB topology using artificial intelligence. Paper presented at the SAE Technical Papers, doi:10.4271/2022-28-0121 Retrieved from www.scopus.com
Abstract: The paper describes Design and Implementation of closed loop control in PSFB topology using Artificial Intelligence. In Power Electronics converter raw input power is processed based on control input, generating output power. The control input may be differentiated based on various topologies like PFC, LLC, and PSFB depending upon application. Precisely, the paper talks about control algorithm that controls this power. Same can be done by analog components or digital controllers. Digital Controllers have effectively replaced Analog components due to its advantages like Flexibility, cost, space. Digital controllers work better on closed loop control for accuracy and to automatically adjust based on the change in output. The topology being used here is PSFB (Phase Shift Full Bridge) which consists of 4 Switches/MosFets driven by PWM. The output power yield depends on phase shift between the PWM's. There are various dynamic factors that affect the stability of control system like load, input, noise, operation mode etc. The controller used is PID (Proportional Integral Differential) which is often manually tuned to achieve an optimum stability. This effectively meaning converter stability will not be same at all conditions. In embodiments within we are using Reinforcement Learning to solve this problem and achieve best possible control coefficients. Reinforcement Learning is a method in which Software can learn through the factors that have given best output for a given period of time. It works on getting rewards when the output reaches closer to the expected value. Different reward functions may be defined to achieve a single tuned combination with all possible outcomes like less overshoot, lesser ringing etc. Overall, the proposed solution helps automating the tuning of control loop thus reducing the time and efforts and giving higher accurate results as well. © 2022 SAE International. All Rights Reserved.
URI: https://doi.org/10.4271/2022-28-0121
https://dspace.iiti.ac.in/handle/123456789/11098
ISSN: 0148-7191
Type of Material: Conference Paper
Appears in Collections:Department of Computer Science and Engineering

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