For the locomotion control of a legged robot, both model predictive control (MPC) and reinforcement learning (RL) demonstrate powerful capabilities. MPC transfers the high-level task to the lower-level joint control based on the understanding of the robot and environment, model-free RL learns how to work through trial and error, and has the ability to evolve based on historical data. In this work, we proposed a novel framework to integrate the advantages of MPC and RL, we learned a policy for automatically choosing parameters for MPC. Unlike the end-to-end RL applications for control, our method does not need massive sampling data for training. Compared with the fixed parameters MPC, the learned MPC exhibits better locomotion performance an...
This paper modifies the single rigid body (SRB) model, and considers the swinging leg as the disturb...
Deep reinforcement learning produces robust locomotion policies for legged robots over challenging t...
In this extended abstract, we give a short intro- duction to our ongoing work [1] on a real-time Non...
For the locomotion control of a legged robot, both model predictive control (MPC) and reinforcement ...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
The ability to form support contacts at discontinuous locations makes legged robots suitable for loc...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2018.Thes...
Abstract: Learning controllers that reproduce legged locomotion in nature have been a long-time goa...
Abstract — In this paper, we present a robotic model-based reinforcement learning method that combin...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
Re-planning in legged locomotion is crucial to track the desired user velocity while adapting to the...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
We present a unified model-based and data-driven approach for quadrupedal planning and control to ac...
This paper modifies the single rigid body (SRB) model, and considers the swinging leg as the disturb...
Deep reinforcement learning produces robust locomotion policies for legged robots over challenging t...
In this extended abstract, we give a short intro- duction to our ongoing work [1] on a real-time Non...
For the locomotion control of a legged robot, both model predictive control (MPC) and reinforcement ...
This paper presents a control framework that combines model-based optimal control and reinforcement ...
The ability to form support contacts at discontinuous locations makes legged robots suitable for loc...
Thesis: S.M., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2018.Thes...
Abstract: Learning controllers that reproduce legged locomotion in nature have been a long-time goa...
Abstract — In this paper, we present a robotic model-based reinforcement learning method that combin...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
Deep reinforcement learning (DRL) offers a promising approach for the synthesis of control policies ...
Re-planning in legged locomotion is crucial to track the desired user velocity while adapting to the...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
International audienceAs locomotion decisions must be taken by considering the future, most existing...
We present a unified model-based and data-driven approach for quadrupedal planning and control to ac...
This paper modifies the single rigid body (SRB) model, and considers the swinging leg as the disturb...
Deep reinforcement learning produces robust locomotion policies for legged robots over challenging t...
In this extended abstract, we give a short intro- duction to our ongoing work [1] on a real-time Non...