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Sensorless control for permanent magnet synchronous motor using a neural network based adaptive estimator

机译:基于神经网络的自适应估算器的永磁同步电动机无传感器控制

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The rotor position and speed estimation of permanent-magnet synchronous motor(PMSM) was dealt with. By measuring the phase voltages and currents of the PMSM drive, two diagonally recurrent neural network(DRNN) based observers, a neural current observer and a neural velocity observer were developed. DRNN which has self-feedback of the hidden neurons ensures that the outputs of DRNN contain the whole past information of the system even if the inputs of DRNN are only the present states and inputs of the system. Thus the structure of DRNN may be simpler than that of feedforward and fully recurrent neural networks. If the backpropagation method was used for the training of the DRNN the problem of slow convergence arise. In order to reduce this problem, recursive prediction error(RPE) based learning method for the DRNN was presented. The simulation results show that the proposed approach gives a good estimation of rotor speed and position, and RPE based training has requires a shorter computation time compared to backpropagation based training.
机译:处理永磁同步电动机(PMSM)的转子位置和速度估计。通过测量PMSM驱动器的相电压和电流,开发了两个基于对角复发的神经网络(DRNN)观察者,神经电流观测器和神经速度观测器。具有隐藏神经元的自我反馈的DRNN确保DRNN的输出也包含系统的整个过去信息,即使DRNN的输入只是当前的系统和输入的输入。因此,DRNN的结构可能比前馈和完全复发性神经网络的结构更简单。如果使用BROWPROMAGAGAGE方法用于DRNN训练,则会出现缓慢收敛的问题。为了减少这个问题,提出了基于递归预测误差(RPE)的DRNN学习方法。仿真结果表明,该方法良好地估计转子速度和位置,与基于背面的训练相比,基于RPE的训练需要更短的计算时间。

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