This study proposes an innovative reinforcement learning-based time-delay control (RL-TDC) scheme to provide more intelligent, timely, and aggressive control efforts than the existing simple-structured adaptive time-delay controls (ATDCs) that are well-known for achieving good tracking performances in practical applications. The proposed control scheme adopts a state-of-the-art RL algorithm called soft actor critic (SAC) with which the inertia gain matrix of the timedelay control is adjusted toward maximizing the expected return obtained from tracking errors over all the future time periods. By learning the dynamics of the robot manipulator with a data-driven approach, and capturing its intractable and complicated phenomena, the proposed RL...
For a robot manipulator, an accurate reference tracking capability is one of the most important perf...
Telepresence robots are gaining more popularity as a means of remote communication and human–robot i...
This paper develops an adaptive controller for robot manipulators. The design decouples the system's...
This paper presents a practical adaptive time-delay control scheme (ATDC) and then applies it to rob...
This paper proposes a time-delayed data informed reinforcement learning method, referred as incremen...
This brief proposes a new adaptive-robust formulation for time-delay control (TDC) under a less-rest...
In this manuscript, we formulate and experimentally verify four state-of-the-art controlstrategies o...
To speed up the convergence of reinforcement learning (RL) algorithms by more efficient use of compu...
Thanks to its simplicity and robustness, time delay control (TDC) has been recognized as a simple an...
The robot manipulators are used in network-based industrial units, and even homes, by expending a si...
This article proposes an enhanced adaptive time delay controller (ATDC) for robot manipulators subje...
Abstract—Time-delay control has been verified as a simple and robust controller for robot manipulato...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
This paper presents an adaptive reinforcement learning- (ARL-) based motion/force tracking control s...
A time delay estimation based general framework for trajectory tracking control of robot manipulator...
For a robot manipulator, an accurate reference tracking capability is one of the most important perf...
Telepresence robots are gaining more popularity as a means of remote communication and human–robot i...
This paper develops an adaptive controller for robot manipulators. The design decouples the system's...
This paper presents a practical adaptive time-delay control scheme (ATDC) and then applies it to rob...
This paper proposes a time-delayed data informed reinforcement learning method, referred as incremen...
This brief proposes a new adaptive-robust formulation for time-delay control (TDC) under a less-rest...
In this manuscript, we formulate and experimentally verify four state-of-the-art controlstrategies o...
To speed up the convergence of reinforcement learning (RL) algorithms by more efficient use of compu...
Thanks to its simplicity and robustness, time delay control (TDC) has been recognized as a simple an...
The robot manipulators are used in network-based industrial units, and even homes, by expending a si...
This article proposes an enhanced adaptive time delay controller (ATDC) for robot manipulators subje...
Abstract—Time-delay control has been verified as a simple and robust controller for robot manipulato...
Reinforcement learning (RL) is an efficient learning approach to solving control problems for a robo...
This paper presents an adaptive reinforcement learning- (ARL-) based motion/force tracking control s...
A time delay estimation based general framework for trajectory tracking control of robot manipulator...
For a robot manipulator, an accurate reference tracking capability is one of the most important perf...
Telepresence robots are gaining more popularity as a means of remote communication and human–robot i...
This paper develops an adaptive controller for robot manipulators. The design decouples the system's...