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Joint Smith predictor and neural network estimation scheme for compensating randomly varying time-delay in networked control system

Control and Decision Conference(2012)

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摘要
In this paper, we dealt with the problems of network induced delay and randomly varying time-delay (RVTD) controlled plant in networked control systems (NCS). These inherent challenges make the conventional control methods, e.g, a mathematical model of Smith predictor combined with fuzzy adaptive controller, more difficult to meet the quality requirements for NCS stability. Specifically, based on analyzing the existing techniques, we propose a novel method to efficiently compensate the RVTD for NCS. This so-called RVTD compensator for the Smith predictor using Neural network estimation scheme has not only the features of simple Smith predict structure, but also the characteristics of adaptivity, stability, and fast response. The simulation results via TrueTime Beta2.0 platform demonstrate that our design significantly improves the performance of NCS.
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关键词
randomly varying time-delay,neural networks,networked control system,time-delay estimation,randomly varying time-delay compensation,neurocontrollers,ncs stability,mathematical model,delays,joint smith predictor,truetime beta2.0 platform,smith predictor,fuzzy adaptive controller,adaptive control,neural network estimation scheme,distributed parameter systems,compensation,fuzzy control,network induced delay problem,networked control systems,rvtd compensator,stability,randomly varying time-delay controlled plant,predictive control,stability analysis,adaptive systems,estimation,predictive models
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