会议专题

Design and Simulation of Flux Identification Based on RBF Neural Network for Induction Motor

Direct Torque Control (DTC) is a high performance induction motor control method. However, the accuracy of the stator flux estimation is directly related to induction motor control performance. The traditional induction motor stator flux observation method have been analyzed in This paper. And for the Shortcomings of existing methods, a on-line identification methods based on Radial Basis Function(RBF) have been proposed in the paper. First, the reference model of flux identification should be established according to induction motor u-n mathematical model under the static coordinate system. Then, a RBF neural network can be constructed on this basis. After self-organization learning, online identification of stator flux can be realized in the RBF neural network. System simulation has been carried out in Matlab /Simulink. The results show that: the identification method based on the RBF Neural network can improve the induction motor stator flux measurement accuracy, reduce the impact from the interference factors in observation process and the structure is very simple.

induction motor radial basis function (RBF) stator flux identification neural networks

Gao Sheng-wei Cai Yan

School of Electrical Engineering and Automation Tianjin Polytechnic University Tianjin 300160 China

国际会议

The 2010 International Conference on Computer Application and System Modeling(2010计算机应用与系统建模国际会议 ICCASM 2010)

太原

英文

273-277

2010-10-22(万方平台首次上网日期,不代表论文的发表时间)