直接转矩控制交流传动的变权更新周期在线训练神经速度控制器

L. Grzesiak, V. Meganck, J. Sobolewski, B. Ufnalski
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引用次数: 26

摘要

本文研究了应用于直接转矩控制-空间矢量调制(DTC-SVM)驱动器的自适应神经网络速度控制器的进一步改进。在线训练的人工神经网络作为速度控制器,不需要过程模型来预测未来的性能。与之前发布的解决方案相比,控制器中增加了自动调节功能。文中还介绍了神经控制器内部的循环反馈。自适应行为表现为对大于10倍的惯性矩变化具有鲁棒性。该特性是通过系统运行过程中运行的学习算法实现的。上述变量更新周期是指与学习算法相关的一个参数,即调用反向传播过程(权重更新过程)的频率。所提出的控制算法经过了仿真测试和实验验证。将驱动器的行为与先前提出的具有固定训练算法设置的基于人工神经网络的速度控制器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-line Trained Neural Speed Controller with Variable Weight Update Period for Direct-Torque-Controlled AC Drive
The paper investigates further improvements of an adaptive ANN (Artificial Neural Network)-based speed controller employed in a DTC-SVM (Direct Torque Controlled - Space Vector Modulated) drive. An on-line trained ANN serves as a speed controller and does not need a process model to predict future performance. In comparison to the previously published solution, auto-adjusting ability has been added to the controller. The recurrent feedback inside the neural controller has been also introduced. Adaptive behaviour manifests in robustness to moment of inertia variation greater than 10 times. This feature is achieved by the learning algorithm running during system operation. Mentioned variable update period refers to one of the parameters connected with learning algorithm, namely frequency of calling backpropagation procedure (weights update procedure). Proposed control algorithm has been tested in simulation and verified experimentally. The behaviour of the drive has been compared to the one with previously proposed ANN-based speed controller with fixed settings of training algorithm.
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