Optimal Parameters Design for Model Predictive Control using an Artificial Neural Network Optimized by Genetic Algorithm
ID:164 Submission ID:164 View Protection:PUBLIC Updated Time:2021-06-27 09:03:18 Hits:489 Poster Presentation

Start Time:2021-07-02 14:51 (Asia/Shanghai)

Duration:1min

Session:[SP] Poster Session » [P1] Poster Session 1 & 2

Abstract
Model predictive control (MPC) has become one of the most attractive control techniques due to its outstanding dynamic performance for motor drives. Besides, MPC with constant switching frequency (CSF-MPC) maintains the advantages of MPC as well as constant frequency but the selection of weighting factors in the cost function is difficult for CSF-MPC. Fortunately, the application of artificial neural networks (ANN) can accelerate the selection without any additional computation burden. Therefore, this paper designs a specific artificial neural network optimized by genetic algorithm (GA-ANN) to select the optimal weighting factors of CSF-MPC for permanent magnet synchronous motor (PMSM) drives fed by three-level T-type inverter. The key performance metrics like THD and switching frequencies error (ferr) are extracted from simulation and this data are utilized to train and evaluate GA-ANN. The trained GA-ANN model can automatically and precisely select the optimal weighting factors for minimizing THD and ferr under different working conditions of PMSM. Furthermore, the experimental results demonstrate the validation of GA-ANN and robustness of optimal weighting factors under different torque loads. Accordingly, any arbitrary user-defined working conditions which combine THD and ferr can be defined and the optimum weighting factors can be fast and explicitly determined via the trained GA-ANN model.
Keywords
Artificial neural network, weighting factor design, genetic algorithm, model predictive control, T-type inverter
Speaker
Chunxing Yao
Southwest Jiaotong University;State Key Laboratory of Traction Power

Submission Author
Chunxing Yao State Key Laboratory of Traction Power; Southwest Jiaotong University
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