感应电机磁链和转子位置无速度传感器检测中显著性元件的分离

T. Wolbank, M. Metwally
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引用次数: 1

摘要

感应电机的无传感器磁场定向控制方案近年来受到高度关注,因为机械传感器大大增加了驱动器的成本并降低了其可靠性。在零基频下不会失败的方法必须依赖于电机的非基频效应。在基于非基波模型的交流电机无传感器控制中,可以通过评估电流对电压脉冲的响应来估计磁链/转子位置。该电流斜率由机器中的所有空间显著性调制。这些显著性的来源可以是多种多样的,例如,由主磁通、开槽或各向异性引起的机器饱和,以及互调效应。本文利用人工神经网络(ANN)实现了鼠笼式异步电机低、零频率饱和信号、开槽信号和互调信号分量的分离,并给出了测量结果,表明了该技术在低、零速度无传感器控制中的优势,即使是在高负载水平下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Separation of saliency components for speed sensorless detection of flux and rotor position of induction machines
Sensorless field oriented control schemes of induction machines have been of high interest in recent years since the mechanical sensor considerably increases the cost of a drive and decreases its reliability. Methods which do not fail at zero fundamental frequency have to rely on non-fundamental effects of the motor. In the non fundamental wave model based mechanical sensorless control of AC machines the flux/rotor position can be estimated by evaluating the current response to voltage pulses. This current slope is modulated by all spatial saliencies in the machine. Sources of these saliencies can be various, for instance the saturation of the machine by the main flux, the slotting, or anisotropy, as well as inter-modulation effects. In this paper the separation of the saturation signal, the slotting signal, and the inter-modulation signal components in squirrel cage induction machines operating at low and zero frequency using artificial neural networks (ANN) has been experimentally implemented and measurement results are given to show the advantages of the application of the proposed technique at low and zero speed sensorless control even at high load levels.
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