会议论文详细信息
International Conference on Mechanical Engineering, Automation and Control Systems 2018
Identification of induction motor parameters with measurement errors
Ivanov, D.V.^1 ; Sandler, E.A.^1 ; Chertykovtseva, N.V.^1 ; Tikhomirov, E.A.^2 ; Semenovay, N.S.^3
Samara State University of Transport, 2v, Svobody ave., Samara
443066, Russia^1
Bauman Moscow State Technical University, 5, 2 Baumanskaya ave., Moscow
105005, Russia^2
Moscow State University of Technologies and Management, 73, Zemlyanoj val ave., Moscow
109004, Russia^3
关键词: Algorithmic approach;    Estimating parameters;    Induction motor parameters;    Motor parameters;    Ordinary least squares;    Precision control;    Statistical properties;    Total least squares;   
Others  :  https://iopscience.iop.org/article/10.1088/1757-899X/560/1/012163/pdf
DOI  :  10.1088/1757-899X/560/1/012163
来源: IOP
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【 摘 要 】

This paper proposes an algorithm for estimating parameters of asynchronous traction motors in the presence of measurement errors. The presence of measurement errors of voltage and current leads to biased estimates of motor parameters. Algorithmic approach to eliminating the influence of noise is used most often as it increases the accuracy of estimates without precision current and voltage meters. Known modifications of algorithms based on the method of total least squares suggest filtering the derivatives of noise, which increases the complexity of the algorithm and also changes the statistical properties of noise. The proposed algorithm is a generalization of the total least-squares technique and does not require knowledge of the laws governing the distribution of measurement errors. The results of modeling show that the parameter estimation is highly accurate than the ordinary least square. The proposed algorithm can be used to create precision control systems, as well as to diagnose faults in electric motors by K parameters.

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