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Robust Packetized MPC for Networked Systems Subject to Packet Dropouts and Input Saturation With Quantized Feedback

Langwen Zhang, Bohui Wang, Yuanshi Zheng, Ali Zemouche, Xudong Zhao, Chao Shen

2022IEEE Transactions on Cybernetics29 citationsDOI

Abstract

This article develops a robust packetized predictive control framework to deal with the quantized-feedback control problem of networked systems subject to Markovian packet dropouts and input saturation. In the proposed framework, the Markov chain model of packet dropout is established from the link of the controller to the actuator. To deal with the quantized measurements, a robust packetized predictive control method is presented with a quantized-feedback law. The problem of unreliable transmission is addressed by proposing a packet dropout compensation strategy with a forgetting factor. An augmented Markovian jump system model is established to take the packet dropouts into account. The synthesis of packetized predictive control is then developed by minimizing a worst case cost function with respect to the model uncertainties. The recursive feasibility of the proposed controller design problem and the mean-square stability of the closed-loop systems are proved, respectively. The proposed packetized predictive control method is demonstrated by simulating a four-tank process system.

Topics & Concepts

Control theory (sociology)Model predictive controlNetwork packetDropout (neural networks)Computer scienceNetworked control systemEngineeringControl (management)Artificial intelligenceComputer networkMachine learningAdvanced Control Systems OptimizationStability and Control of Uncertain SystemsFuel Cells and Related Materials
Robust Packetized MPC for Networked Systems Subject to Packet Dropouts and Input Saturation With Quantized Feedback | Litcius