Litcius/Paper detail

Distributed Model-Free Adaptive Predictive Control for MIMO Multi-Agent Systems With Deception Attack

Zhenzhen Pan, Ronghu Chi, Zhongsheng Hou

2024IEEE Transactions on Signal and Information Processing over Networks38 citationsDOI

Abstract

This work explores the challenging problems of nonlinear dynamics, nonaffine structures, heterogeneous properties, and deception attack together and proposes a novel distributed model-free adaptive predictive control (DMFAPC) for multiple-input-multiple-output (MIMO) multi-agent systems (MASs). A dynamic linearization method is introduced to address the nonlinear heterogeneous dynamics which is transformed as the unknown parameters in the obtained linear data model. A radial basis function neural network is designed to detect the deception attack and to estimate the polluted output that is further used in the controller design to compensate for the effect. Then, the DMFAPC is designed by defining a new expanded distributed output with a stochastic factor introduced. The bounded convergence is proved by using the contraction mapping method and the effectiveness of the proposed DMFAPC is verified by simulation examples.

Topics & Concepts

MIMOControl theory (sociology)Computer scienceNonlinear systemLinearizationModel predictive controlConvergence (economics)Bounded functionDeceptionArtificial neural networkController (irrigation)Radial basis functionControl (management)Artificial intelligenceMathematicsAgronomyEconomicsSocial psychologyPhysicsMathematical analysisChannel (broadcasting)Computer networkEconomic growthBiologyPsychologyQuantum mechanicsAdvanced Control Systems OptimizationFault Detection and Control SystemsDistributed Control Multi-Agent Systems