This paper presents a modification of the deep Q-network (DQN) in deep reinforcement learning to control the angle of the inverted pendulum (IP). The original DQN method often uses two actions related to two force states like constant negative and positive force values which apply to the cart of IP to maintain the angle between the pendulum and the Y-axis. Due to the changing of too much value of force, the IP may make some oscillation which makes the performance system could be declined. Thus, a modified DQN algorithm is developed based on neural network structure to make a range of force selections for IP to improve the performance of IP. To prove our algorithm, the OpenAI/Gym and Keras libraries are used to develop DQN. All results showe...
Enabling robotic systems for autonomous actions such as driverless systems, is a very complex task i...
Reinforcement Learning (RL) has been gaining significant attention in recent years as a powerful too...
Deep reinforcement learning which involved reinforcement learning with artificial neural networks al...
In this paper the two reinforcement learning algorithmsQ-learning and deep Q-learning (DQN) are used...
Inverted pendulum control is a benchmark control problem that researchers have used to test the new ...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
Inverted pendulum control finds similarities with control of legged robots such as bipedal or humano...
Underactuated systems occur frequently in robotics and legged locomotion. Unactuated pendulum on an ...
A study regarding the swing-up and stabilization problem of a double pendulum on a cart is presented...
Abstrac t- Neural networks can be used to identifY and control nonlinear mechanical systems. The obj...
The foundation and emphasis of robotic manipulator control is Inverse Kinematics (IK). Due to the co...
This work aims to utilize some Machine Learning algorithms to solve the inverted pendulum problem wi...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
Reinforcement learning (RL) with both exploration and exploit abilities is applied to games to demon...
Enabling robotic systems for autonomous actions such as driverless systems, is a very complex task i...
Reinforcement Learning (RL) has been gaining significant attention in recent years as a powerful too...
Deep reinforcement learning which involved reinforcement learning with artificial neural networks al...
In this paper the two reinforcement learning algorithmsQ-learning and deep Q-learning (DQN) are used...
Inverted pendulum control is a benchmark control problem that researchers have used to test the new ...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
Inverted pendulum control finds similarities with control of legged robots such as bipedal or humano...
Underactuated systems occur frequently in robotics and legged locomotion. Unactuated pendulum on an ...
A study regarding the swing-up and stabilization problem of a double pendulum on a cart is presented...
Abstrac t- Neural networks can be used to identifY and control nonlinear mechanical systems. The obj...
The foundation and emphasis of robotic manipulator control is Inverse Kinematics (IK). Due to the co...
This work aims to utilize some Machine Learning algorithms to solve the inverted pendulum problem wi...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
Reinforcement learning (RL) with both exploration and exploit abilities is applied to games to demon...
Enabling robotic systems for autonomous actions such as driverless systems, is a very complex task i...
Reinforcement Learning (RL) has been gaining significant attention in recent years as a powerful too...
Deep reinforcement learning which involved reinforcement learning with artificial neural networks al...