Title :
Decoupling control based on neural network inverse for bearingless synchronous reluctance motor
Author :
Yi, Wang ; Li, Cao ; Dongmei, Feng ; Xiaoyan, Diao ; Huangqiu, Zhu
Author_Institution :
Sch. of Electr. & Inf. Eng., Jiangsu Univ., Zhenjiang, China
Abstract :
In the paper, the principle of a bearingless synchronous reluctance motor (BSRM) is explained and its mathematical model is established, then decoupling control method based on neural network inverse system is put forward, and inverse system of the bearingless synchronous reluctance motor is constructed by adopting neural network inverse system to achieve the decoupling of electromagnetic torque and suspension radial force. The gained inverse models are in series before the original system to decouple a complex nonlinear multivariable system into 4 relatively independent single input single output (SISO) pseudo-linear subsystems. The close loop linear controllers and stator flux observer are designed, and the digital simulation experiment has been carried out by using Matlab software. The theory research and simulation experiment results have validated that decoupling control in the transient case can be achieved successfully adopting the inverse system strategy, good performance of dynamic and static state of system can be also obtained, and validity of the proposed control method is demonstrated.
Keywords :
electric potential; mathematical analysis; neural nets; power engineering computing; reluctance motors; stators; suspensions (mechanical components); BSRM; Matlab software; SISO pseudo-linear subsystems; bearingless synchronous reluctance motor; decoupling control method; electromagnetic torque; inverse system strategy; loop linear controllers; mathematical model; neural network inverse system; single input single output; stator flux observer; suspension radial force; transient case; Educational institutions; Electronic mail; MATLAB; Mathematical model; Neural networks; Observers; Reluctance motors; Bearingless Synchronous Reluctance Motor; Decoupling Control; Flux Observer; Inverse System; Nerve Network;
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
Conference_Location :
Hefei
Print_ISBN :
978-1-4673-2581-3