Litcius/Paper detail

Path Tracking Control of Autonomous Vehicles Subject to Deception Attacks via a Learning-Based Event-Triggered Mechanism

Zhou Gu, Tingting Yin, Zhengtao Ding

2021IEEE Transactions on Neural Networks and Learning Systems111 citationsDOI

Abstract

This article investigates the problem of event-triggered secure path tracking control of autonomous ground vehicles (AGVs) under deception attacks. To relieve the burden of the shareable vehicle communication network and to improve the tracking performance in the presence of deception attacks, a learning-based event-triggered mechanism (ETM) is proposed. Different from existing ETMs, the triggering threshold of the proposed mechanism can be dynamically adjusted with conditions of the latest vehicle state. Each vehicle in this study is deemed as an agent, under which a novel control strategy is developed for these autonomous agents with deception attacks. With the assistance of Lyapunov stability theory, sufficient conditions are obtained to guarantee the stability and stabilization of the overall system. Finally, a simulation example is provided to demonstrate the effectiveness of the proposed theoretical results.

Topics & Concepts

DeceptionComputer scienceEvent (particle physics)Stability (learning theory)Control (management)Path (computing)Tracking (education)Lyapunov stabilityMechanism (biology)Collision avoidanceControl theory (sociology)Artificial intelligenceComputer securityReal-time computingCollisionMachine learningComputer networkPsychologyPhysicsEpistemologyPhilosophyQuantum mechanicsSocial psychologyPedagogySmart Grid Security and ResilienceVehicular Ad Hoc Networks (VANETs)Stability and Control of Uncertain Systems