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Flux estimation of induction machines with the linear parameter-varying system identification method

机译:线性参数变化系统辨识方法在感应电机磁通估计中的应用

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In indirect field orientation control (FOC) methods, the magnitude and direction of the rotor flux are estimated from measurements of stator voltages, stator currents and the angular velocity of the shaft using a parameter model of the induction machine. However the performance of indirect FOC methods is dependent on the accuracy of the machine model and is therefore sensitive to variations in motor parameters such as the rotor resistance and the magnetizing inductance. Motor parameters vary greatly with temperature, frequency and current amplitude. This paper presents a novel method for estimating the rotor flux in an induction motor. Subspace identification methods are used to construct a linear parameter-varying (LPV), discrete time model of an induction motor based on measurements of the stator voltages and currents and of the angular velocity of the shaft. The identification algorithm has been tested on data obtained from a nonlinear, continuous-time simulation model.
机译:在间接磁场定向控制(FOC)方法中,使用感应电机的参数模型通过测量定子电压,定子电流和轴的角速度来估算转子磁通量的大小和方向。但是,间接FOC方法的性能取决于电机模型的精度,因此对电动机参数(例如转子电阻和励磁电感)的变化敏感。电机参数随温度,频率和电流幅度而变化很大。本文提出了一种估计感应电动机中转子磁通的新颖方法。子空间识别方法用于基于定子电压和电流以及轴角速度的测量值来构建感应电动机的线性参数变化(LPV)离散时间模型。识别算法已对从非线性连续时间仿真模型获得的数据进行了测试。

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