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Performance comparison of neural architectures for on-line flux estimation in sensor-less vector-controlled IM drives

机译:无传感器矢量控制IM驱动器中用于在线通量估计的神经体系结构的性能比较

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摘要

The sensor-less vector-controlled induction motor drive requires accurate estimation of speed and flux. The speed estimation depends on the motor flux, which has to be measured or estimated. The flux measurement is difficult and expensive and hence generally estimated. Conventional voltage model equations for flux estimation encounter major drawbacks at low frequencies/speed. Neural network-based estimator provides an alternate solution for on-line flux estimation. The on-line flux estimator requires the neural network model to be accurate, simpler in design, structurally compact, and computationally less complex to ensure faster execution time in real-time implementation for effective control. This in turn, to a large extent, depends on the type of neural architecture. This paper investigates three types of neural architectures for on-line flux estimation and their performance is compared in terms of accuracy, structural compactness, computational complexity, and execution time. The suitable neural architecture for on-line flux estimation is identified and the promising results obtained are presented.
机译:无传感器矢量控制感应电动机驱动器需要精确估计速度和磁通量。速度估算取决于必须测量或估算的电机磁通。通量测量是困难且昂贵的,因此通常被估计。用于通量估计的常规电压模型方程式在低频/低速时遇到主要缺点。基于神经网络的估计器提供了在线通量估计的替代解决方案。在线通量估计器要求神经网络模型准确,设计更简单,结构紧凑且计算复杂度较低,以确保在实时实施中更快地执行时间以进行有效控制。反过来,这很大程度上取决于神经体系结构的类型。本文研究了三种用于在线通量估计的神经体系结构,并从准确性,结构紧凑性,计算复杂性和执行时间方面比较了它们的性能。确定了用于在线通量估计的合适神经体系结构,并给出了有希望的结果。

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