Litcius/Paper detail

Formation of Time-Varying Multi-AUVs Under Directed Graphs With Event-Triggered Control: An Online Model-Free Parameter Learning

Yanhua Yang, Jie Mei, Guangfu Ma

2024IEEE Transactions on Intelligent Vehicles13 citationsDOI

Abstract

This paper delves into the study of the leaderfollowing formation of multiple autonomous underwater vehicles (AUVs) under a directed graph, encompassing both cases with unknown time-invariant and time-varying model parameters. This investigation employs an online model-free parameter learning mechanism, and develops a fully distributed event-triggered communication (ETC)- and actuation (ETA)- based control protocol. Initially, given the challenge of accurately modeling the intricate dynamics of AUVs, we construct a formulation of AUV with a well-defined inverse-matrix-based regression function and a vector of unknown model parameters. Thus, an online modelfree parameter learning approach is designed for its estimation. Subsequently, a fully distributed ETC-based leader observer is developed for constructing the reference formation trajectory for each AUV. Then, we devise an ETA-based control protocol, which enables the asymptotic model-free formation of multiple AUVs with unknown time-invariant model parameters. For scenarios involving time-varying unknown model parameters, we extend our methodology by incorporating σ-modification, which achieves the bounded formation. Both ETC-based observer and ETAbased control algorithm will not exhibit the Zeno behavior with determining a minimum interval for the proposed event-triggered mechanisms (ETMs). Finally, the effectiveness of the proposed control schemes have been verified by some numerical simulations and comparisons.

Topics & Concepts

Event (particle physics)Control (management)Computer scienceOnline learningReal-time computingArtificial intelligenceMultimediaPhysicsQuantum mechanicsDistributed Control Multi-Agent SystemsOptimization and Search ProblemsModular Robots and Swarm Intelligence