Adaptive neural control for a class of random nonlinear Markov jump multi-agent systems with full state constraints
Yuhang Yao,
Jiaxin Yuan,
Tao Chen
et al.
Abstract:This paper proposes a consensus control protocol based on the adaptive backstepping technique for a class of random Markov jump multi-agent systems (MASs) with full state constraints. Each agent is described by the high-order random nonlinear uncertain system driven by random differential equations, where the random noise is the second-order stationary stochastic process. First, a distributed tracking controller is designed for Markov jump MASs, effectively handling the interaction and coupling terms between a… Show more
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