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Optimal Cost Function Parameter Design in Predictive Torque Control (PTC) Using Artificial Neural Networks (ANN)

机译:使用人工神经网络预测扭矩控制(PTC)的最佳成本函数参数设计(ANN)

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摘要

The use of artificial neural networks (ANNs) for the selection of weighting factors in cost function of the finite-set model-predictive control (FS-MPC) algorithm can speed up selection without imposing additional computational burden to the algorithm and ensure that optimum weights are selected for the specific application. In this article, the ANN-based design process of the weighting factors is used for predictive torque control (PTC) in a motor drive. In the design process, the weighting factors in the cost function and the reference flux value are obtained using different fitness functions. The results show that different operating conditions of the drive will have new optimum parameters of the cost function; therefore, sweeping parameters like load torque or reference speed can optimize the PTC for the whole operating range of the drive. A good match of the performance metrics predicted by the ANN and the simulation model is also observed. The experiments demonstrate that the selected cost function parameters can provide a fast drive start and good performance during different loading conditions and also in reversing of the drive.
机译:人工神经网络(ANNS)在有限设定模型预测控制(FS-MPC)算法的成本函数中选择加权因子的选择可以加速选择,而不会对算法施加额外的计算负担并确保最佳权重选择特定应用程序。在本文中,加权因子的基于安基的设计过程用于电动机驱动器中的预测扭矩控制(PTC)。在设计过程中,使用不同的健身功能获得成本函数和参考磁通值中的加权因子。结果表明,驱动器的不同操作条件将具有新的成本函数的最佳参数;因此,扫描扭矩或参考速度等扫描参数可以针对驱动器的整个操作范围优化PTC。还观察到ANN和仿真模型预测的性能度量的良好匹配。实验表明,所选择的成本函数参数可以在不同的负载条件下提供快速驱动的开始和良好性能,也可以在驱动器的反转中提供快速的驱动开始和良好的性能。

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