Litcius/Paper detail

Model-Free Event-Triggered Consensus Algorithm for Multiagent Systems Using Reinforcement Learning Method

Mingkang Long, Housheng Su, Zhigang Zeng

2021IEEE Transactions on Systems Man and Cybernetics Systems36 citationsDOI

Abstract

In this article, we study the consensus issues of multiagent systems (MASs) without any information of the system model by using the reinforcement learning (RL) method and event-based control strategy. First, we design an adaptive event-based consensus control protocol using the local sampled state information so that the consensus errors of all agents are uniformly ultimately bounded. The validity of the above event-triggered adaptive control protocol is confirmed by excluding the Zeno behavior within finite time. Then, based on the RL approach, we present a model-free algorithm to get the feedback gain matrix, and accomplish constructing the adaptive event-triggered control strategy without the knowledge of model information. Distinct with the existing related works, this RL-based event-triggered adaptive control algorithm only relies on the local sampled state information, irrelevant to any model information or global network information. Finally, we provide some examples to demonstrate the validity of the above adaptive event-based consensus algorithm.

Topics & Concepts

Reinforcement learningComputer scienceMulti-agent systemProtocol (science)Event (particle physics)Adaptive controlState (computer science)ConsensusBounded functionAlgorithmControl (management)Artificial intelligenceMathematicsQuantum mechanicsAlternative medicinePathologyPhysicsMathematical analysisMedicineDistributed Control Multi-Agent SystemsAdaptive Dynamic Programming ControlNeural Networks Stability and Synchronization