A Learning Feed-Forward Current Controller for Linear Reciprocating Vapor Compressors

IEEE Transactions on Industrial Electronics(2011)

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摘要
Direct-drive linear reciprocating compressors offer numerous advantages over conventional counterparts which are usually driven by a rotary induction motor via a crank shaft. However, to ensure efficient and reliable operation under all conditions, it is essential that motor current of a linear compressor follows a sinusoidal current command with a frequency which matches the system resonant frequency. The design of a high-performance current controller for linear compressor drive presents a challenge since the system is highly nonlinear, and an effective solution must be low cost. In this paper, a learning feed-forward current controller for the linear compressors is proposed. It comprises a conventional feedback proportional-integral controller and a feed-forward B-spline neural network (BSNN). The feed-forward BSNN is trained online and in real time in order to minimize the current tracking error. Extensive simulation and experiment results with a prototype linear compressor show that the proposed current controller exhibits high steady state and transient performance.
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关键词
shafts,pi control,neural networks,feed-forward b-spline neural network,system resonant frequency,drives,compressors,linear motors,crank shaft,sinusoidal current,learning feed-forward current controller,feedback proportional-integral controller,learning control systems,current tracking error,feedforward neural nets,prototype linear compressor,current control,extensive simulation,linear compressor drive,motor current,induction motors,splines (mathematics),induction motor,direct-drive linear reciprocating vapor compressors,neural network,steady state,linear motor,feed forward,real time,resonant frequency,pistons
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