In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled as a multibody dynamical system is solved by developing a deep Reinforcement Learning (RL) controller. Furthermore, the sensitivity analysis of the deep RL controller applied to the cart-pole swing-up problem is carried out. To this end, the influence of modifying the physical properties of the system and the presence of dry friction forces are analyzed employing the cumulative reward during the task. Extreme limits for the modifications of the parameters are determined to prove that the neural network architecture employed in this work features enough learning capability to handle the task under modifications as high as 90% on the pendulum ma...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
Reinforcement Learning (RL) is a general purpose framework for designing controllers for non-linear ...
One of the major challenges of artificial intelligence is to learn solving tasks which are considere...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
A methodology for developing robust control systems using Deep Reinforcement Learning (DRL) is propo...
In this paper, a nonlinear control strategy is developed by applying the Reinforcement Learning (RL)...
Underactuated systems occur frequently in robotics and legged locomotion. Unactuated pendulum on an ...
This paper presents a modification of the deep Q-network (DQN) in deep reinforcement learning to con...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
Inverted pendulum control is a benchmark control problem that researchers have used to test the new ...
Advisors: Brianno D. Coller.Committee members: Sachit Butail; Ji-Chul Ryu.Includes illustrations.Inc...
Reinforcement learning Algorithms such as SARSA, Q learning, Actor-Critic Policy Gradient and Value ...
Inverted pendulum control finds similarities with control of legged robots such as bipedal or humano...
Deep Reinforcement Learning (DRL) enables us to design controllers for complex tasks with a deep lea...
A study regarding the swing-up and stabilization problem of a double pendulum on a cart is presented...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
Reinforcement Learning (RL) is a general purpose framework for designing controllers for non-linear ...
One of the major challenges of artificial intelligence is to learn solving tasks which are considere...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
A methodology for developing robust control systems using Deep Reinforcement Learning (DRL) is propo...
In this paper, a nonlinear control strategy is developed by applying the Reinforcement Learning (RL)...
Underactuated systems occur frequently in robotics and legged locomotion. Unactuated pendulum on an ...
This paper presents a modification of the deep Q-network (DQN) in deep reinforcement learning to con...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
Inverted pendulum control is a benchmark control problem that researchers have used to test the new ...
Advisors: Brianno D. Coller.Committee members: Sachit Butail; Ji-Chul Ryu.Includes illustrations.Inc...
Reinforcement learning Algorithms such as SARSA, Q learning, Actor-Critic Policy Gradient and Value ...
Inverted pendulum control finds similarities with control of legged robots such as bipedal or humano...
Deep Reinforcement Learning (DRL) enables us to design controllers for complex tasks with a deep lea...
A study regarding the swing-up and stabilization problem of a double pendulum on a cart is presented...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
Reinforcement Learning (RL) is a general purpose framework for designing controllers for non-linear ...
One of the major challenges of artificial intelligence is to learn solving tasks which are considere...