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A modified neural learning algorithm for online rotor resistance estimation in vector controlled induction motor drives

机译:用于矢量控制感应电动机驱动器的在线转子电阻估计的改进神经学习算法

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摘要

Online estimation of rotor resistance is essential for high performance vector controlled drives. In this paper, a novel modified neural algorithm has been identified for the online estimation of rotor resistance. Neural based estimators are now receiving active consideration as they have a number of advantages over conventional techniques. The training algorithm of the neural network determines its learning speed, stability, weight convergence, accuracy of estimation, speed of tracking and ease of implementation. In this paper, the neural estimator has been studied with conventional and proposed learning algorithms. The sensitivity of the rotor resistance change has been tested for a wide range of variation from -50% to +50% on the stability of the drive system with and without estimator. It is quiet appealing to settle with optimal estimation time and error for the viable realization. The study is conducted extensively for estimation and tracking. The proposed learning algorithm is found to exhibit good estimation and tracking capabilities. Besides, it reduces computational complexity and, hence, more feasible for practical digital implementation.
机译:在线估计转子电阻对于高性能矢量控制驱动器至关重要。在本文中,已经确定了一种新颖的改进的神经算法,用于在线估算转子电阻。基于神经的估计器现在正得到积极考虑,因为它们比常规技术具有许多优势。神经网络的训练算法决定了它的学习速度,稳定性,权重收敛,估计的准确性,跟踪的速度和易于实现。在本文中,已经用常规和建议的学习算法研究了神经估计器。带有和不带有估计器的驱动系统的稳定性,已经测试了转子电阻变化的灵敏度,变化范围从-50%到+ 50%。为实现可行而以最佳的估计时间和误差来解决是很有吸引力的。该研究被广泛进行以进行估计和跟踪。发现所提出的学习算法表现出良好的估计和跟踪能力。此外,它降低了计算复杂度,因此对于实际的数字实现更可行。

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