Conventional closed‐form solution to the optimal control problem using optimal control theory is only available under the assumption that there are known system dynamics/models described as differential equations. Without such models, reinforcement learning (RL) as a candidate technique has been successfully applied to iteratively solve the optimal control problem for unknown or varying systems. For the optimal tracking control problem, existing RL techniques in the literature assume either the use of a predetermined feedforward input for the tracking control, restrictive assumptions on the reference model dynamics, or discounted tracking costs. Furthermore, by using discounted tracking costs, zero steady‐state error cannot be guaranteed by...
This paper proposes a novel data-driven control approach to address the problem of adaptive optimal ...
Abstract Otimal tracking control of discrete‐time non‐linear systems is investigated in this paper. ...
Traditional feedback control methods are often model-based and the mathematical system models need t...
This chapter presents adaptive solutions to the optimal tracking problem of nonlinear discrete-time ...
This paper presents an online learning algorithm based on integral reinforcement learning (IRL) to d...
In this paper, a new formulation for the optimal tracking control problem (OTCP) of continuous-time ...
This paper reviews the current state of the art on reinforcement learning (RL)-based feedback contro...
In this paper, reinforcement learning (RL) is employed to find a casual solution to the linear quadr...
In this technical note, an online learning algorithm is developed to solve the linear quadratic trac...
In this paper, a novel approach based on the Q-learning algorithm is proposed to solve the infinite-...
Reinforcement learning (RL) techniques have been successfully used to find optimal state-feedback co...
In this paper, an integral reinforcement learning (IRL) algorithm on an actor-critic structure is de...
This paper proposes a model-free H∞ control design for linear discrete-time systems using reinforcem...
This study provides a novel reinforcement learning-based optimal tracking control of partially uncer...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
This paper proposes a novel data-driven control approach to address the problem of adaptive optimal ...
Abstract Otimal tracking control of discrete‐time non‐linear systems is investigated in this paper. ...
Traditional feedback control methods are often model-based and the mathematical system models need t...
This chapter presents adaptive solutions to the optimal tracking problem of nonlinear discrete-time ...
This paper presents an online learning algorithm based on integral reinforcement learning (IRL) to d...
In this paper, a new formulation for the optimal tracking control problem (OTCP) of continuous-time ...
This paper reviews the current state of the art on reinforcement learning (RL)-based feedback contro...
In this paper, reinforcement learning (RL) is employed to find a casual solution to the linear quadr...
In this technical note, an online learning algorithm is developed to solve the linear quadratic trac...
In this paper, a novel approach based on the Q-learning algorithm is proposed to solve the infinite-...
Reinforcement learning (RL) techniques have been successfully used to find optimal state-feedback co...
In this paper, an integral reinforcement learning (IRL) algorithm on an actor-critic structure is de...
This paper proposes a model-free H∞ control design for linear discrete-time systems using reinforcem...
This study provides a novel reinforcement learning-based optimal tracking control of partially uncer...
Abstract — In this paper we introduce an online algorithm that uses integral reinforcement knowledge...
This paper proposes a novel data-driven control approach to address the problem of adaptive optimal ...
Abstract Otimal tracking control of discrete‐time non‐linear systems is investigated in this paper. ...
Traditional feedback control methods are often model-based and the mathematical system models need t...