Applying reinforcement learning to control systems enables the use of machine learning to develop elegant and efficient control laws. Coupled with the representational power of neural networks, reinforcement learning algorithms can learn complex policies that can be difficult to emulate using traditional control system design approaches. In this thesis, three different model-free reinforcement learning algorithms, including Monte Carlo Control, REINFORCE with baseline, and Guided Policy Search are compared in simulated, continuous action-space environments. The results show that the Guided Policy Search algorithm is able to learn a desired control policy much faster than the other algorithms. In the inverted pendulum system, it learns an ef...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
We present an Imitation Learning approach for the control of dynamical systems with a known model. ...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
There has been success in recent years for neural networks in applications requiring high level inte...
Model-free reinforcement learning and nonlinear model predictive control are two different approache...
In this paper, the Reinforcement Learning problem is formulated equivalently to a Markov Decision Pr...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
In this contribution, we discuss Reinforcement Learning as an alternative way to solve optimal contr...
Reinforcement learning (RL) offers powerful algorithms to search for optimal controllers of systems ...
The Iterative Linear Quadratic Regulator (ILQR), a variant of Differential Dynamic Programming (DDP)...
This is the author accepted manuscript. The final version is available from the Institute of Electri...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
We propose a novel training approach for neural networks based on switching among an array of feedba...
This thesis presents a novel hierarchical learning framework, Reinforcement Learning Optimal Control...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
We present an Imitation Learning approach for the control of dynamical systems with a known model. ...
This paper proposes a neural network based reinforcement learning controller that is able to learn c...
There has been success in recent years for neural networks in applications requiring high level inte...
Model-free reinforcement learning and nonlinear model predictive control are two different approache...
In this paper, the Reinforcement Learning problem is formulated equivalently to a Markov Decision Pr...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
In this contribution, we discuss Reinforcement Learning as an alternative way to solve optimal contr...
Reinforcement learning (RL) offers powerful algorithms to search for optimal controllers of systems ...
The Iterative Linear Quadratic Regulator (ILQR), a variant of Differential Dynamic Programming (DDP)...
This is the author accepted manuscript. The final version is available from the Institute of Electri...
Machine Learning Control is a control paradigm that applies Artificial Intelligence methods to contr...
We propose a novel training approach for neural networks based on switching among an array of feedba...
This thesis presents a novel hierarchical learning framework, Reinforcement Learning Optimal Control...
Direct policy search methods offer the promise of automatically learning controllers for com-plex, h...
Behavioral control has been an effective method for controlling low-level motion for autonomous agen...
We present an Imitation Learning approach for the control of dynamical systems with a known model. ...