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Adaptive Flux and Torque Identification Scheme for Direct Torque Control System of Induction Motor

机译:感应电动机直接转矩控制系统的自适应磁通和转矩辨识方案

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摘要

To improve the low-speed dynamic performance of induction motor in direct torque control (DTC), a novel method of stator resistance identification based on wavelet network is presented and the determination of wavelet network structure is discussed. The inputs of the WN are the current error and the change in the current error and the output of the WN is the stator resistance error. The improved least squares algorithm is used to fulfill the network structure and parameter identification. By the use of wavelet transform that accurately localizes the characteristics of a signal both in the time and frequency domains, the occurring instants of the stator resistance change can be identified by the multi-scale representation of the signal. Once the instants are detected, the accurate stator flux vector and electromagnetic torque are acquired by the parameter estimator, which makes the DTC applicable in the low region, optimizing the inverter control strategy. By detailed comparison between the wavelet and the typical backward-propagation neural network, the simulation results show that the proposed method can efficiently reduce the torque ripple and current ripple, superior to the BP neural network.
机译:为了提高电动机在直接扭矩控制(DTC)中的低速动态性能,提出了一种基于小波网络的定子电阻识别的新方法,并讨论了小波网络结构的确定。 WN的输入是当前误差,并且电流误差的变化和Wn的输出是定子电阻误差。改进的最小二乘算法用于满足网络结构和参数标识。通过使用小波变换来精确定位在时间和频率域中的信号的特性,可以通过信号的多尺度表示来识别定子电阻变化的发生时刻。一旦检测到速度,通过参数估计器获取精确的定子磁通量和电磁扭矩,这使得DTC适用于低区域,优化逆变器控制策略。通过小波和典型的后向传播神经网络之间的详细比较,仿真结果表明,该方法可以有效地降低扭矩脉动和电流波纹,优于BP神经网络。

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