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Black-Box Modelling of a DC-DC Buck Converter Based on a Recurrent Neural Network

Gabriel Rojas-Dueñas, Jordi‐Roger Riba, Khaled Kahalerras, Manuel Moreno‐Eguilaz, Akash Kadechkar, Álvaro Gómez‐Pau

202046 citationsDOIOpen Access PDF

Abstract

Artificial neural networks allow the identification of black-box models. This paper proposes a method aimed at replicating the static and dynamic behavior of a DC-DC power converter based on a recurrent nonlinear autoregressive exogenous neural network. The method proposed in this work applies an algorithm that trains a neural network based on the inputs and outputs (currents and voltages) of a Buck converter. The approach is validated by means of simulated data of a realistic nonsynchronous Buck converter model programmed in Simulink and by means of experimental results. The predictions made by the neural network are compared to the actual outputs of the system, to determine the accuracy of the method, thus validating the proposed approach. Both simulation and experimental results show the feasibility and accuracy of the proposed black-box approach.

Topics & Concepts

Black boxArtificial neural networkComputer scienceBuck converterNonlinear systemControl theory (sociology)Power (physics)Autoregressive modelVoltageElectronic engineeringArtificial intelligenceEngineeringMathematicsElectrical engineeringControl (management)EconometricsQuantum mechanicsPhysicsAdvanced DC-DC ConvertersMultilevel Inverters and ConvertersAdvanced Battery Technologies Research