Learning-based modeling and control of soft robots is advantageous due to neural network’s ability to capture complex dynamical effects with low computational cost. Continual Learning techniques add further value to these methods by allowing networks to learn from continuously available data without incurring into catastrophic forgetting. In the context of soft robotic control, such capability can be exploited to design controllers able to continuously adapt to changes in robot dynamics, frequently due to material degradation or external interactions. This should be done without forgetting the control under normal working conditions which can be recovered as soon as the external interactions return to normal. In this letter elastic weight c...
Dynamic control of soft robotic manipulators is a challenging field still in its nascent stages. Mod...
grantor: University of TorontoAn artificial neural network (ANN) control method is develop...
Fully exploiting soft robots' capabilities requires devising strategies that can accurately control ...
Learning-based modeling and control of soft robots is advantageous due to neural network's ability t...
The characteristic compliance of soft/continuum robot manipulators entails them with the desirable f...
Recently, learning-based controllers that leverage mechanical models of soft robots have shown promi...
Dynamic control of soft robotic manipulators is an open problem yet to be well explored and analyzed...
Soft robots are extremely challenging in modeling and control due to their high dimensionality. The ...
This thesis develops a novel approach to robot control that learns to account for a robot's dynamic ...
The focus of the research community in the soft robotic field has been on developing innovative mate...
In the last few decades, soft robotics technologies have challenged conventional approaches by intro...
Interactions between robots and the environment frequently occur during most modern robotic applicat...
Soft robots are made of compliant materials, which increase their flexibility but also presents mode...
The focus of the research community in the soft robotic field has been on developing innovative mate...
Dynamic control of soft robotic manipulators is a challenging field still in its nascent stages. Mod...
grantor: University of TorontoAn artificial neural network (ANN) control method is develop...
Fully exploiting soft robots' capabilities requires devising strategies that can accurately control ...
Learning-based modeling and control of soft robots is advantageous due to neural network's ability t...
The characteristic compliance of soft/continuum robot manipulators entails them with the desirable f...
Recently, learning-based controllers that leverage mechanical models of soft robots have shown promi...
Dynamic control of soft robotic manipulators is an open problem yet to be well explored and analyzed...
Soft robots are extremely challenging in modeling and control due to their high dimensionality. The ...
This thesis develops a novel approach to robot control that learns to account for a robot's dynamic ...
The focus of the research community in the soft robotic field has been on developing innovative mate...
In the last few decades, soft robotics technologies have challenged conventional approaches by intro...
Interactions between robots and the environment frequently occur during most modern robotic applicat...
Soft robots are made of compliant materials, which increase their flexibility but also presents mode...
The focus of the research community in the soft robotic field has been on developing innovative mate...
Dynamic control of soft robotic manipulators is a challenging field still in its nascent stages. Mod...
grantor: University of TorontoAn artificial neural network (ANN) control method is develop...
Fully exploiting soft robots' capabilities requires devising strategies that can accurately control ...