Performance Comparison of Slim Drive with ANFIS Controller

M. Nagaraju, Sukumar G. Durga, M. Ravindrababu
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Abstract

Normally speed control of a Single-Sided Linear Induction Motor (SLIM) by an indirect vector control scheme is difficult because the motor's parameters are time-dependent and the performance depends on various factors such as end effect, saturation, location of primary losses, and iron losses. Traditional PI current regulators are commonly used in vector regulators, but there is a tuning problem due to the oscillation of an operating point. This problem can be overcome by substituting an adaptive neuro-fuzzy-based current controller, and this controller improves the operation of a SLIM, such as its motor speed and thrust force. In this adaptive neuro-fuzzy controller, the ID and IQ errors and the error delay are inputs, and its outputs are Vds and Vqs, respectively. It is trained based on available values. A SLIM's dynamic modelling is implemented by dividing current (I) and flux-linkages into two terms. In these two terms, one is dependent on the end effect, and the other is independent of the end effect. The function of a Voltage Source Inverter (VSI)-fed indirect vector-controlled SLIM drive is simulated in MATLAB/Simulink, and its operation under various operating conditions is studied using an adaptive neuro-fuzzy current controller. These results are compared to a traditional P-I controller. The Pulse Width Modulation (PWM) technology that is used for controlling the VSI is called Space Vector Modulation (SVM).
超薄硬盘与ANFIS控制器的性能比较
由于单面直线感应电动机的参数具有时变特性,且其性能受终端效应、饱和、初级损耗位置和铁损耗等因素的影响,采用间接矢量控制方法控制单面直线感应电动机(SLIM)的速度是很困难的。传统的PI电流调节器通常用于矢量调节器,但由于工作点的振荡而存在调谐问题。采用自适应神经模糊电流控制器可以克服这一问题,该控制器改善了SLIM的运行,如电机速度和推力。该自适应神经模糊控制器以ID误差和IQ误差以及误差延迟为输入,输出分别为Vds和Vqs。它是根据可用值进行训练的。通过将电流(I)和磁链分离为两项,实现了SLIM的动力学建模。在这两项中,一个依赖于末端效应,另一个独立于末端效应。在MATLAB/Simulink中对电压源逆变器(VSI)馈电间接矢量控制SLIM驱动器的功能进行了仿真,并采用自适应神经模糊电流控制器研究了其在各种工况下的运行情况。这些结果与传统的P-I控制器进行了比较。用于控制VSI的脉宽调制(PWM)技术称为空间矢量调制(SVM)。
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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