Litcius/Paper detail

Path-Guided Model-Free Flocking Control of Unmanned Surface Vehicles Based on Concurrent Learning Extended State Observers

Zhouhua Peng, Yue Jiang, Lu Liu, Yang Shi

2023IEEE Transactions on Systems Man and Cybernetics Systems68 citationsDOI

Abstract

This article addresses the path-guided flocking control of unmanned surface vehicles (USVs) suffering from fully unknown kinetics. A model-free learning and anti-disturbance control method is developed to achieve path-guided flocking without using prior knowledge of model nonlinearities, ocean disturbances, or control input gains. Specifically, data-driven concurrent learning extended state observers (CLESOs) based on fuzzy systems are presented to estimate the unknown kinetics of USVs. With the proposed CLESO, a model-free path-following control law is proposed for a leader USV to follow a parameterized path. Then, model-free flocking control laws based on potential functions are proposed for follower USVs to avoid collisions and maintain network links within available communication ranges. Through cascade stability analysis, the closed-loop system is proven to be globally asymptotically stable. Simulation results substantiate the proposed CLESO-based anti-disturbance control approach for path-guided flocking of a swarm of USVs.

Topics & Concepts

Flocking (texture)Control theory (sociology)Parameterized complexityComputer scienceUnmanned surface vehicleEngineeringControl engineeringArtificial intelligenceControl (management)AlgorithmMarine engineeringMaterials scienceComposite materialDistributed Control Multi-Agent SystemsAdaptive Control of Nonlinear SystemsUnderwater Vehicles and Communication Systems