This study focuses on improving structural control through reinforcement learning. For the purposes of this study, structural control involves controlling the shape of an active tensegrity structure. Although the learning methodology employs case-based reasoning which is often classified as supervised learning, it has evolved into reinforcement learning, since it learns from errors. Simple retrieval and adaptation functions are proposed. The retrieval function compares the response of the structure subjected to current loading event and the attributes of cases. When the response of the structure and the case attributes are similar, this case is retrieved and adapted to the current control task. The adaptation function takes into account the...
A multi-objective search method is adapted for supporting structural control of an active tensegrity...
This paper presents a self-improving reactive control system for autonomous robotic navigation. Th...
REINFORCEMENT LEARNING AND ITS APPLICATION TO CONTROL February 1992 Vijaykumar Gullapalli, B.S., Bir...
This paper presents a self-improving reactive control system for autonomous robotic navigation. The ...
This paper presents a self-improving reactive control system for autonomous robotic navigation. The ...
International audienceThe problem of adaptive semi-active control of transient structural vibration ...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
A novel framework for intelligent structural control is proposed using reinforcement learning. In th...
Can active control strategies that include learning and self-repair be applied to civil structures
Advisors: Brianno D. Coller.Committee members: Sachit Butail; Ji-Chul Ryu.Includes illustrations.Inc...
The semi-active control system is widely used to reduce the seismic response of building structures....
Structural learning in motor control refers to a metalearning process whereby an agent extracts (abs...
Reactive controllers has been widely used in mobile robots since they are able to achieve suc-cessfu...
A self-organising architecture, loosely based upon a particular implementation of adaptive resonance...
While operational space control is of essential importance for robotics and well-understood from an ...
A multi-objective search method is adapted for supporting structural control of an active tensegrity...
This paper presents a self-improving reactive control system for autonomous robotic navigation. Th...
REINFORCEMENT LEARNING AND ITS APPLICATION TO CONTROL February 1992 Vijaykumar Gullapalli, B.S., Bir...
This paper presents a self-improving reactive control system for autonomous robotic navigation. The ...
This paper presents a self-improving reactive control system for autonomous robotic navigation. The ...
International audienceThe problem of adaptive semi-active control of transient structural vibration ...
Learning control involves modifying a controller\u27s behavior to improve its performance as measure...
A novel framework for intelligent structural control is proposed using reinforcement learning. In th...
Can active control strategies that include learning and self-repair be applied to civil structures
Advisors: Brianno D. Coller.Committee members: Sachit Butail; Ji-Chul Ryu.Includes illustrations.Inc...
The semi-active control system is widely used to reduce the seismic response of building structures....
Structural learning in motor control refers to a metalearning process whereby an agent extracts (abs...
Reactive controllers has been widely used in mobile robots since they are able to achieve suc-cessfu...
A self-organising architecture, loosely based upon a particular implementation of adaptive resonance...
While operational space control is of essential importance for robotics and well-understood from an ...
A multi-objective search method is adapted for supporting structural control of an active tensegrity...
This paper presents a self-improving reactive control system for autonomous robotic navigation. Th...
REINFORCEMENT LEARNING AND ITS APPLICATION TO CONTROL February 1992 Vijaykumar Gullapalli, B.S., Bir...