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Model predictive control of DC/DC boost converter with reinforcement learning

Anup Marahatta, Yaju Rajbhandari, Ashish Shrestha, Sudip Phuyal, Anup Thapa, Petr Korba

2022Heliyon48 citationsDOIOpen Access PDF

Abstract

Power electronics is seeing an increase in the use of sophisticated self-learning controllers as single board computers and microcontrollers progress faster. Traditional controllers, such as PI controllers, suffer from transient instability difficulties. The duty cycle and output voltage of a DC/DC converter are not linear. Due to this non-linearity, the PI controller generates variable levels of voltage fluctuations depending on the operating region of the converter. In some cases, non-linear controllers outperform PI controllers. The non-linear model of a non-linear controller is determined by data availability. So, a self-calibrating controller that collects data and optimizes itself as the operation goes on is necessary. Iteration and oscillation can be minimized with a well-trained reinforcement learning model utilizing a non-linear policy. A boost converter's output power supply capacity changes with a change in load, due to which the maximum duty cycle limit of a converter also changes. A support vector calibrated by reinforcement learning can dynamically change the duty cycle limit of a converter under variable load. This research highlights how reinforcement learning-based non-linear controllers can improve control and efficiency over standard controllers. The proposed concept is based on a microgrid system. Simulation and experimental analysis have been conducted on how reinforcement learning-based controller works for DC-DC boost converter.

Topics & Concepts

Duty cycleReinforcement learningControl theory (sociology)Controller (irrigation)Boost converterPID controllerComputer sciencePower electronicsMicrogridForward converterControl engineeringVoltageEngineeringControl (management)Temperature controlArtificial intelligenceElectrical engineeringAgronomyBiologyMicrogrid Control and OptimizationSmart Grid Energy ManagementAdvanced DC-DC Converters
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