Event-triggered communication and control provide high control performance in networked control systems without overloading the communication network. However, most approaches require precise mathematical models of the system dynamics, which may not always be available. Model-free learning of communication and control policies provides an alternative. Nevertheless, existing methods typically consider single-agent settings. This paper proposes a model-free reinforcement learning algorithm that jointly learns resource-aware communication and control policies for distributed multi-agent systems from data. We evaluate the algorithm in a high-dimensional and nonlinear simulation example and discuss promising avenues for further research.Peer rev...
In this article, we introduce a novel approximate optimal decentralized control scheme for uncertain...
IEEE This paper develops a model-free approach to solve the event-triggered optimal consensus of mul...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This paper presents a model-free distributed event-triggered containment control scheme for linear m...
Multi-agent system control is a research topic that has broad applications ranging from multi-robot ...
This paper develops an off-policy reinforcement learning (RL) algorithm to solve optimal synchroniza...
This paper studies event-triggered consensus control for heterogenous nonlinear multi-agent systems....
This article offers an optimal control tracking method using an event-triggered technique and the in...
Abstract: In the present work, distributed control and artificial intelligence are combined in a con...
In the present work, distributed control and artificial intelligence are combined in a control archi...
Recent years have witnessed phenomenal accomplishments of reinforcement learning (RL) in many promin...
This paper considers optimal output synchronization of heterogeneous linear multi-agent systems. Sta...
Cooperative multi-agent systems (MAS) are finding applications in a wide variety of domains, includi...
In this article, we introduce a novel approximate optimal decentralized control scheme for uncertain...
IEEE This paper develops a model-free approach to solve the event-triggered optimal consensus of mul...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This paper presents a model-free distributed event-triggered containment control scheme for linear m...
Multi-agent system control is a research topic that has broad applications ranging from multi-robot ...
This paper develops an off-policy reinforcement learning (RL) algorithm to solve optimal synchroniza...
This paper studies event-triggered consensus control for heterogenous nonlinear multi-agent systems....
This article offers an optimal control tracking method using an event-triggered technique and the in...
Abstract: In the present work, distributed control and artificial intelligence are combined in a con...
In the present work, distributed control and artificial intelligence are combined in a control archi...
Recent years have witnessed phenomenal accomplishments of reinforcement learning (RL) in many promin...
This paper considers optimal output synchronization of heterogeneous linear multi-agent systems. Sta...
Cooperative multi-agent systems (MAS) are finding applications in a wide variety of domains, includi...
In this article, we introduce a novel approximate optimal decentralized control scheme for uncertain...
IEEE This paper develops a model-free approach to solve the event-triggered optimal consensus of mul...
Reinforcement learning, especially deep reinforcement learning, has made many advances in the last d...