Saliency tracking-based sensorless control of induction machines using artificial neural networks

T. Wolbank, M. Metwally
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引用次数: 3

Abstract

Controlled induction motor drives without mechanical sensor at the motor shaft at low speed down to zero fundamental frequency can so far only be achieved by evaluating inherent saliencies of the induction machine. Similar to other sensorless methods based on signal injection, the resulting control signals of the indirect flux detection method by on-line reactance measurement is influenced, for example, by the saturation based saliency, the slotting saliency, and the anisotropy saliency as well as by load and flux level. Since these influences are extremely dependant on the machine design, they can hardly be calculated in advance and removed by filtering or digital signal processing. However the possibility of utilizing a neural network for learning the individual dependencies and removing the unwanted influences can provide a very satisfactory result. Since the easy implementation of a neural network does only use a small amount of calculation power, the algorithm can be implemented even in low-cost signal processors. Measurements on mechanical sensorless controlled induction machines present adequate results up to about rated load.
基于显著跟踪的感应电机无传感器控制的人工神经网络
在电机轴上无机械传感器的受控感应电机驱动在低速降至零基频时,迄今为止只能通过评估感应电机的固有显著性来实现。与其他基于信号注入的无传感器方法类似,基于在线电抗测量的间接磁通检测方法产生的控制信号受到例如基于饱和的显著性、开槽显著性和各向异性显著性以及负载和磁通水平的影响。由于这些影响非常依赖于机器设计,因此很难通过滤波或数字信号处理来提前计算和消除。然而,利用神经网络学习个体依赖关系并消除不必要影响的可能性可以提供非常令人满意的结果。由于易于实现的神经网络只使用少量的计算能力,因此该算法甚至可以在低成本的信号处理器上实现。对机械无传感器控制的感应电机的测量在大约额定负载下显示出足够的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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