Learning Control for Networked Stochastic Systems With Random Fading Communication
Dong Shen, Ganggui Qu, Qijiang Song
Abstract
The learning control strategy is studied for networked stochastic systems, where the output and input data are transmitted through multiple independent fading channels. The traditional P-type learning control scheme is revised according to the specific fading positions, where the constant learning gain is replaced by a variable one to suppress the effect of various uncertainties. Strong convergence of the proposed scheme is established under random fading phenomena and system noise. The input error is shown convergent to zero as the cycle number increases. Two numerical examples demonstrate the applications of the proposed scheme.
Topics & Concepts
FadingConvergence (economics)Computer scienceNoise (video)Constant (computer programming)Scheme (mathematics)Fading distributionRandom variableControl theory (sociology)Stochastic processMathematicsControl (management)AlgorithmStatisticsArtificial intelligenceRayleigh fadingDecoding methodsEconomicsMathematical analysisEconomic growthProgramming languageImage (mathematics)Iterative Learning Control SystemsAdaptive Control of Nonlinear SystemsAdvanced Control Systems Optimization