In this article, we present an intermittent framework for safe reinforcement learning (RL) algorithms. First, we develop a barrier function-based system transformation to impose state constraints while converting the original problem to an unconstrained optimization problem. Second, based on optimal derived policies, two types of intermittent feedback RL algorithms are presented, namely, a static and a dynamic one. We finally leverage an actor/critic structure to solve the problem online while guaranteeing optimality, stability, and safety. Simulation results show the efficacy of the proposed approach
We study the problem of safe offline reinforcement learning (RL), the goal is to learn a policy that...
Model-based reinforcement learning algorithms have been shown to achieve successful results on vario...
This letter aims to solve a safe reinforcement learning (RL) problem with risk measure-based constra...
In this paper, an online intermittent actor-critic reinforcement learning method is used to stabiliz...
This paper presents the concept of an adaptive safe padding that forces Reinforcement Learning (RL) ...
Deploying reinforcement learning (RL) involves major concerns around safety. Engineering a reward si...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
Reinforcement learning (RL) is a general method for agents to learn optimal control policies through...
Reinforcement learning algorithms discover policies that maximize reward, but do not necessarily gua...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
This paper considers the control problem with constraints on full-state and control input simultaneo...
Ensuring safety of reinforcement learning (RL) algorithms is crucial for many real-world tasks. Howe...
Reinforcement Learning (RL) algorithms have found limited success beyond simulated applications, and...
Reinforcement Learning (RL) algorithms have found limited success beyond simulated applications, and...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
We study the problem of safe offline reinforcement learning (RL), the goal is to learn a policy that...
Model-based reinforcement learning algorithms have been shown to achieve successful results on vario...
This letter aims to solve a safe reinforcement learning (RL) problem with risk measure-based constra...
In this paper, an online intermittent actor-critic reinforcement learning method is used to stabiliz...
This paper presents the concept of an adaptive safe padding that forces Reinforcement Learning (RL) ...
Deploying reinforcement learning (RL) involves major concerns around safety. Engineering a reward si...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
Reinforcement learning (RL) is a general method for agents to learn optimal control policies through...
Reinforcement learning algorithms discover policies that maximize reward, but do not necessarily gua...
Reinforcement Learning (RL) agents can solve general problems based on little to no knowledge of the...
This paper considers the control problem with constraints on full-state and control input simultaneo...
Ensuring safety of reinforcement learning (RL) algorithms is crucial for many real-world tasks. Howe...
Reinforcement Learning (RL) algorithms have found limited success beyond simulated applications, and...
Reinforcement Learning (RL) algorithms have found limited success beyond simulated applications, and...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
We study the problem of safe offline reinforcement learning (RL), the goal is to learn a policy that...
Model-based reinforcement learning algorithms have been shown to achieve successful results on vario...
This letter aims to solve a safe reinforcement learning (RL) problem with risk measure-based constra...