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Inertia Estimation for PMSM Drive System Using Artificial Neural Network

机译:基于人工神经网络的PMSM驱动系统惯性估计。

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The model reference adaptive method (MRAM) has been widely used in the inertia estimation of the permanent magnet synchronous motor (PMSM) drive system. In this method, the deviation between the reference model and the estimation model is inevitable, which is the fundamental inducement for the estimation error. To this end, this work proposes an improved MRAM, which adopts a changing gain factor (GF) to reduce this deviation so as to enhance the inertia estimation accuracy. To provide the changing GF, this paper develops a single-neuron-based artificial neural network (ANN). It utilizes the deviation to adjust the GF dynamically. Furthermore, based on the instantaneous error-energy function, the proportional factor of the neuron is updated adaptively to force the estimated inertia to achieve a better tradeoff between stability and convergence rate. By simulations and real-time experiments implemented on the PMSM drive system under different working conditions, the effectiveness of the proposed methods is verified.
机译:模型参考自适应方法(MRAM)已广泛用于永磁同步电动机(PMSM)驱动系统的惯性估计中。在这种方法中,参考模型和估计模型之间的偏差是不可避免的,这是造成估计误差的根本原因。为此,这项工作提出了一种改进的MRAM,它采用了变化的增益因子(GF)来减小该偏差,从而提高惯性估计的准确性。为了提供不断变化的GF,本文开发了一个基于单神经元的人工神经网络(ANN)。它利用偏差来动态调整GF。此外,基于瞬时误差-能量函数,神经元的比例因子将自适应更新,以强制估计的惯量在稳定性和收敛速度之间取得更好的折衷。通过在不同工作条件下在PMSM驱动系统上进行的仿真和实时实验,验证了所提方法的有效性。

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