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A Probabilistically Quantized Learning Control Framework for Networked Linear Systems

Dong Shen, Niu Huo, Samer S. Saab

2021IEEE Transactions on Neural Networks and Learning Systems42 citationsDOI

Abstract

In this article, we consider quantized learning control for linear networked systems with additive channel noise. Our objective is to achieve high tracking performance while reducing the communication burden on the communication network. To address this problem, we propose an integrated framework consisting of two modules: a probabilistic quantizer and a learning scheme. The employed probabilistic quantizer is developed by employing a Bernoulli distribution driven by the quantization errors. Three learning control schemes are studied, namely, a constant gain, a decreasing gain sequence satisfying certain conditions, and an optimal gain sequence that is recursively generated based on a performance index. We show that the control with a constant gain can only ensure the input error sequence to converge to a bounded sphere in a mean-square sense, where the radius of this sphere is proportional to the constant gain. On the contrary, we show that the control that employs any of the two proposed gain sequences drives the input error to zero in the mean-square sense. In addition, we show that the convergence rate associated with the constant gain is exponential, whereas the rate associated with the proposed gain sequences is not faster than a specific exponential trend. Illustrative simulations are provided to demonstrate the convergence rate properties and steady-state tracking performance associated with each gain, and their robustness against modeling uncertainties.

Topics & Concepts

Control theory (sociology)Quantization (signal processing)Constant (computer programming)Rate of convergenceMathematicsAutomatic gain controlBounded functionRobustness (evolution)Probabilistic logicTracking errorComputer scienceAlgorithmBandwidth (computing)Artificial intelligenceControl (management)Channel (broadcasting)StatisticsTelecommunicationsMathematical analysisAmplifierBiochemistryProgramming languageGeneChemistryIterative Learning Control SystemsAdvanced Control Systems OptimizationStability and Control of Uncertain Systems