Gray-box modeling of electric drive systems using neural networks

R. Rivera-Sampayo, M. Velez-Reyes
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引用次数: 11

Abstract

This paper presents the use of gray-box modeling to model electric drives. In gray-box modeling the system model is partitioned into a known and an unknown part. The known part of the model is derived from physical principles while the unknown part is modeled using a black-box model. In the case of electrical machines the electric part of the system is well understood from the corresponding governing physical laws, while the mechanical part of the system could be too complex or unknown. The application of this approach is investigated on a DC drive system. We present the use of neural networks as the black-box model for an unknown static nonlinearity. We study the issues of network architecture and of algorithms for parameter estimation.
基于神经网络的电力驱动系统灰盒建模
本文介绍了用灰盒建模方法对电力传动系统进行建模。在灰盒建模中,将系统模型划分为已知部分和未知部分。模型的已知部分由物理原理推导而来,而未知部分则使用黑盒模型建模。在电机的情况下,系统的电气部分可以从相应的控制物理定律中很好地理解,而系统的机械部分可能过于复杂或未知。研究了该方法在直流驱动系统中的应用。我们提出了使用神经网络作为一个未知的静态非线性的黑盒模型。我们研究了网络结构和参数估计算法的问题。
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