4.8 Article

Four-Switch Buck-Boost Converter Based on Model Predictive Control With Smooth Mode Transition Capability

Journal

IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS
Volume 68, Issue 10, Pages 9058-9069

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIE.2020.3028809

Keywords

Switches; Inductors; Optimization; Reliability; Voltage control; Transient analysis; Buck-boost converter; model predictive control; seamless transfer; voltage regulation

Funding

  1. Fundamental Research Funds for the Central Universities [KG16034501]
  2. State Key Laboratory of Safety Control and Simulation for Power Systems and Large Power Generation Equipment, China [SKLD20M05]

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A novel control method based on model predictive current control is proposed for a four-switch buck-boost converter, achieving smooth mode transfer and simplifying the design by replacing modulator and mode detection with an optimization process.
Four-switch buck-boost converter supports both voltage step-up and step-down functionalities, but it suffers from mode transfer challenge that would need reliable mode detection when designed to operate in multidifferent modes. In this article, a novel control method based on model predictive current control is proposed for such converter with inherent smooth mode transfer capability without extra design on mode detection and transfer scheme. Modulator and mode detection are replaced by an optimization process through cost function. This largely simplifies the design and makes it easily implemented. Seamless transfer between buck and boost modes is achieved with many other system level benefits. Simulation and experimental results are provided to verify the effectiveness of proposed method for the four-switch buck-boost converter.

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