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Optimal Parameters Design for Model Predictive Control using an Artificial Neural Network Optimized by Genetic Algorithm

机译:遗传算法优化人工神经网络模型预测控制的最佳参数设计

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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 ($f_{err}$) 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 $f_{err}$ 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 $f_{err}$ can be defined and the optimum weighting factors can be fast and explicitly determined via the trained GA-ANN model.
机译:模型预测控制(MPC)已成为最具吸引力的控制技术之一,因为它的电机驱动器的出色动态性能导致。此外,具有恒定开关频率(CSF-MPC)的MPC维持MPC的优点以及恒定频率,但CSF-MPC难以在成本函数中选择的加权因子。幸运的是,人工神经网络(ANN)的应用可以加速选择而无需任何额外的计算负担。因此,本文设计了一种由遗传算法(GA-ANN)优化的特定人工神经网络,以选择由三级T型逆变器供给的永磁同步电动机(PMSM)驱动器的CSF-MPC的最佳加权因子。关键性能指标,如THD和切换频率错误( $ f_ {err} $ < / tex>)从模拟中提取,并且该数据用于培训和评估GA-ANN。训练有素的GA-ANN模型可以自动且精确地选择最佳加权因子以最小化THD和 $ f_ {err} $ < / tex> 在PMSM的不同工作条件下。此外,实验结果表明了在不同扭矩负荷下的GA-ANN的验证和最佳加权因子的鲁棒性。因此,任何组合THD和的任意用户定义的工作条件 $ f_ {err} $ < / tex> 可以定义,并且可以通过训练的GA-ANN模型快速且明确地确定最佳加权因子。

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