首页> 外文会议>IASTED(International Association of Science and Technology for Development) International Conference Measurement and Control, May 16-18, 2001, Pittsburgh, Pennsylvania, USA >An Extended Kalman Filter and an Appropriate Model for the Real-time Estimation of the Induction Motor Variables and Parameters
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An Extended Kalman Filter and an Appropriate Model for the Real-time Estimation of the Induction Motor Variables and Parameters

机译:感应电动机变量和参数实时估计的扩展卡尔曼滤波器和适当模型

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摘要

This paper presents an efficient discrete-time second-order model of an induction motor for the rotor flux and parameters real-time estimation using an Extended Kalman Filter. Compared with the usual model, this model offers many advantages for real-time identification and fault diagnostic of the induction motor. Indeed not only, it remains stable and accurate for large sampling periods, but also it offers a better linearity with respect to the estimated parameters and it reduces the computational cost of the Kalman filter. Experimental results show the great accuracy and the fast convergence of the estimated parameters, even for sampling periods larger than 10 ms. In practice, the optimization of the measurement procedure and the realistic tuning of the Kalman filter has allowed the real evaluation of the parameters uncertainties and reveals the errors due to the model simplification of the motor such as the iron losses.
机译:本文提出了一种有效的异步电动机离散时间二阶模型,该模型用于转子磁链和使用扩展卡尔曼滤波器的参数实时估计。与常规模型相比,该模型为感应电动机的实时识别和故障诊断提供了许多优势。实际上,它不仅在大采样周期内保持稳定和准确,而且相对于估计的参数提供了更好的线性,并且降低了卡尔曼滤波器的计算成本。实验结果表明,即使对于大于10 ms的采样周期,估计参数也具有很高的准确性和快速收敛性。实际上,测量程序的优化和卡尔曼滤波器的实际调整允许对参数不确定性进行真实评估,并揭示由于电动机模型简化而引起的误差,例如铁损。

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