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Data-Driven Formation Control for Multiple Heterogeneous Vehicles in Air–Ground Coordination

Wanbing Zhao, Hao Liu, Yan Wan, Zongli Lin

2022IEEE Transactions on Control of Network Systems38 citationsDOI

Abstract

This article addresses the data-driven robust optimal formation control of heterogeneous vehicles in air–ground coordination. The position and heading references for the quadrotor vehicles and the unmanned ground vehicles are generated through only the local information of themselves and their neighbors. Based on these generated references, a robust formation controller is constructed for the heterogeneous team to achieve the position formation with heading synchronization. Based on reinforcement learning theory, an optimal formation controller for the heterogeneous agents is learned without knowledge of the agent dynamics. Simulation results are presented to verify the effectiveness of the proposed formation control approach.

Topics & Concepts

Heading (navigation)Position (finance)Synchronization (alternating current)Computer scienceController (irrigation)Reinforcement learningControl engineeringVehicle dynamicsRobust controlControl (management)Control theory (sociology)Control systemDistributed computingEngineeringArtificial intelligenceAerospace engineeringTelecommunicationsBiologyChannel (broadcasting)AgronomyFinanceEconomicsElectrical engineeringDistributed Control Multi-Agent SystemsGuidance and Control SystemsUAV Applications and Optimization
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