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Adaptive synchronization of unknown heterogeneous agents: an adaptive virtual model reference approach

Simone Baldi 1 Paolo Frasca 2
2 NECS - Networked Controlled Systems
GIPSA-DA - Département Automatique, Inria Grenoble - Rhône-Alpes
Abstract : This work deals with state synchronization of heterogeneous linear agents with unknown dynamics. The problem is solved by formulating the synchronization problem as a special model reference adaptive control where each agent tries to converge to the model defined by its neighbors. For those agents that do not know the reference signal that drives the flock, a fictitious reference is estimated in place of the actual one: the estimation of such reference is distributed and requires measurements from neighbors. By using a matching condition assumption, which is imposed so that the agents can converge to the same behavior, the fictitious reference estimation leads to adaptive laws for the feedback and coupling gains arising from distributed matching conditions. In addition, the coupling connection is not scalar, but possibly vector-valued. The proposed approach is applicable to heterogeneous agents with arbitrarily large matched uncertainties. A Lyapunov-based approach is derived to show analytically asymptotic convergence of the synchronization error: robustification in the presence of bounded errors or unknown (constant) leader input is also discussed. Finally, a motivational example is presented in the context of Cooperative Adaptive Cruise Control and numerical examples are provided to demonstrate the effectiveness of the proposed method.
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Submitted on : Tuesday, February 6, 2018 - 2:59:10 PM
Last modification on : Wednesday, May 13, 2020 - 4:16:01 PM
Document(s) archivé(s) le : Tuesday, May 8, 2018 - 6:19:26 AM


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Simone Baldi, Paolo Frasca. Adaptive synchronization of unknown heterogeneous agents: an adaptive virtual model reference approach. Journal of The Franklin Institute, Elsevier, 2019, 356 (2), pp.935-955. ⟨10.1016/j.jfranklin.2018.01.022⟩. ⟨hal-01702085⟩



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