This paper develops an off-policy reinforcement learning (RL) algorithm to solve optimal synchronization of multiagent systems. This is accomplished by using the framework of graphical games. In contrast to traditional control protocols, which require complete knowledge of agent dynamics, the proposed off-policy RL algorithm is a model-free approach, in that it solves the optimal synchronization problem without knowing any knowledge of the agent dynamics. A prescribed control policy, called behavior policy, is applied to each agent to generate and collect data for learning. An off-policy Bellman equation is derived for each agent to learn the value function for the policy under evaluation, called target policy, and find an improved policy, ...
This paper solves the containment problem of multi-agent systems on undirected graph with multiple a...
This paper proposes a model-free H∞ control design for linear discrete-time systems using reinforcem...
Two multi-agent policy iteration learning algorithms are proposed in this work. The two proposed alg...
In this paper, we aim to investigate the optimal synchronization problem for a group of generic line...
This paper considers optimal output synchronization of heterogeneous linear multi-agent systems. Sta...
This paper introduces a new class of multi-agent discrete-time dynamic games, known in the literatur...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
Event-triggered communication and control provide high control performance in networked control syst...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
This paper reviews the current state of the art on reinforcement learning (RL)-based feedback contro...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
This paper introduces a new class of multi-agent discrete-time dynamical games known as dynamic grap...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This paper solves the containment problem of multi-agent systems on undirected graph with multiple a...
This paper proposes a model-free H∞ control design for linear discrete-time systems using reinforcem...
Two multi-agent policy iteration learning algorithms are proposed in this work. The two proposed alg...
In this paper, we aim to investigate the optimal synchronization problem for a group of generic line...
This paper considers optimal output synchronization of heterogeneous linear multi-agent systems. Sta...
This paper introduces a new class of multi-agent discrete-time dynamic games, known in the literatur...
Several multiagent reinforcement learning (MARL) algorithms have been proposed to optimize agents ’ ...
Event-triggered communication and control provide high control performance in networked control syst...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
This work presents a fully distributed algorithm for learning the optimal policy in a multi-agent co...
This paper reviews the current state of the art on reinforcement learning (RL)-based feedback contro...
This paper investigates a relatively new direction in Mul-tiagent Reinforcement Learning. Most multi...
We propose a method for learning multi-agent policies to compete against multiple opponents. The met...
This paper introduces a new class of multi-agent discrete-time dynamical games known as dynamic grap...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This paper solves the containment problem of multi-agent systems on undirected graph with multiple a...
This paper proposes a model-free H∞ control design for linear discrete-time systems using reinforcem...
Two multi-agent policy iteration learning algorithms are proposed in this work. The two proposed alg...