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Sensorless direct torque control of an induction motor by a TLS-based MRAS observer with adaptive integration

机译:基于TLS的MRAS观测器与自适应集成的感应电动机无传感器直接转矩控制

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This article presents a new speed and flux estimation algorithm for high-performance direct torque control (DTC) induction motor drives based on model reference adaptive systems (MRAS) observers using linear artificial neural networks (ANNs). Two completely new improvements of MRAS speed and flux observers are presented here: the first is a solution to the open-loop integration problem in the reference model, based on the voltage model of the induction machine, by means of a new adaptive neural integrator, the second is the employment of a new adaptation law in the ANN adaptive model, based on the total least-squares (TLS) technique. In particular, the adaptive neural integrator is based on two adaptive noise filters which completely cancel any DC drift present in the voltage or current signals to be integrated. This neural integrator does not need any a priori training of its two only neurons; adapting itself on-line. With regard to the ANN-based adaptive model, since the most suitable least-square technique to be used for training is the TLS technique, here the neuron is trained on-line by means of a TLS EXIN algorithm which is the only neural network able to solve a TLS problem recursively. Also the TLS EXIN algorithm does not require any a priori training, since it adapts itself recursively on-line. Moreover, to improve the dynamical performances of the speed loop of the drive, the adaptive model has been used as predictor, i.e. without any feed-back between its outputs and its inputs. The sensorless algorithm has been verified experimentally both on the classic DTC technique and on the DTC-SVM (space vector modulation), by adopting a proper test set-up. The speed observer has been tested in the most challenging operating conditions. The experimental results show that the dynamical performances of the sensorless drive are comparable or even better than those obtained with the corresponding DTC drives with encoders as for the medium to high-speed ranges. As for low-speed ranges, the presented sensorless DTC algorithm outcomes the performance presented in the literature for MRAS systems, thus permitting to have an accurate estimation equal or better than that obtainable with more complex observers. Finally, experimental results show that the MRAS speed observer is robust to load torque perturbations and permits zero-speed operation at no-load conditions.
机译:本文基于线性参考神经网络(ANN)的模型参考自适应系统(MRAS)观测器,为高性能直接转矩控制(DTC)感应电动机驱动器提供了一种新的速度和磁通估计算法。这里介绍了MRAS速度和磁通观测器的两个全新改进:第一个是借助新型自适应神经积分器,基于感应电机的电压模型,解决了参考模型中的开环积分问题,第二是基于总最小二乘(TLS)技术在ANN自适应模型中采用新的自适应定律。特别地,自适应神经积分器基于两个自适应噪声滤波器,它们完全消除了要积分的电压或电流信号中存在的任何DC漂移。该神经积分器不需要对其两个仅有的神经元进行任何先验训练。在线适应自身。关于基于ANN的自适应模型,由于最适合用于训练的最小二乘技术是TLS技术,因此此处的神经元通过TLS EXIN算法进行在线训练,这是唯一能够进行神经网络训练的算法。递归解决TLS问题。 TLS EXIN算法也不需要任何先验训练,因为它可以递归地在线适应。此外,为了改善驱动器速度环的动态性能,已将自适应模型用作预测器,即在其输出与输入之间没有任何反馈。通过采用适当的测试设置,无传感器算法已在经典DTC技术和DTC-SVM(空间矢量调制)上进行了实验验证。速度观察器已在最具挑战性的运行条件下进行了测试。实验结果表明,在中高速范围内,无传感器驱动器的动态性能与带编码器的相应DTC驱动器相当或什至更好。对于低速范围,本文提出的无传感器DTC算法可实现文献中针对MRAS系统提供的性能,因此,其精确估算值等于或优于使用更复杂的观测器获得的估算值。最后,实验结果表明,MRAS速度观测器对负载转矩扰动具有鲁棒性,并允许在空载条件下零速运行。

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