We propose a neural network model for reinforcement learning to control a robotic manipulator with unknown parameters and dead zones. The model is composed of three networks. The state of the robotic manipulator is predicted by the state network of the model, the action policy is learned by the action network, and the performance index of the action policy is estimated by a critic network. The three networks work together to optimize the performance index based on the reinforcement learning control scheme. The convergence of the learning methods is analyzed. Application of the proposed model on a simulated two-link robotic manipulator demonstrates the effectiveness and the stability of the model.</p
peer reviewedIn this paper, a reinforcement learning structure is proposed to auto-tune PID gains b...
This paper reports on a navigation system for robotic manipulators. The control system combines a re...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
We propose a neural network model for reinforcement learning to control a robotic manipulator with u...
A neural network controller is proposed for the motion control of robot manipulators with force/torq...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
In this chapter, an intelligent human–robot system with adjustable robot autonomy is presented to as...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
Reinforcement Learning uses experience gained from feedback with an environment to learn appropriate...
The focus of the research community in the soft robotic field has been on developing innovative mate...
This paper presents a neural network based control strategy for the trajectory control of robot mani...
This dissertation is concerned with the development of neural network-based methods to the control o...
A fixed-time trajectory tracking control method for uncertain robotic manipulators with input satura...
The use of Neural Networks in solving nonlinear control problem is studied. A comparative study of v...
peer reviewedIn this paper, a reinforcement learning structure is proposed to auto-tune PID gains b...
This paper reports on a navigation system for robotic manipulators. The control system combines a re...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
We propose a neural network model for reinforcement learning to control a robotic manipulator with u...
A neural network controller is proposed for the motion control of robot manipulators with force/torq...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
A new neural network (NN) control technique for robot manipulators is introduced in this paper. The ...
In this chapter, an intelligent human–robot system with adjustable robot autonomy is presented to as...
AbsZruct-This paper presents a nonlinear compensator using neural networks for trajectory control of...
Reinforcement Learning uses experience gained from feedback with an environment to learn appropriate...
The focus of the research community in the soft robotic field has been on developing innovative mate...
This paper presents a neural network based control strategy for the trajectory control of robot mani...
This dissertation is concerned with the development of neural network-based methods to the control o...
A fixed-time trajectory tracking control method for uncertain robotic manipulators with input satura...
The use of Neural Networks in solving nonlinear control problem is studied. A comparative study of v...
peer reviewedIn this paper, a reinforcement learning structure is proposed to auto-tune PID gains b...
This paper reports on a navigation system for robotic manipulators. The control system combines a re...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...