Rastegarpanah, Alireza and Hathaway, Jamie and Stolkin, Rustam (2021) Vision-Guided MPC for Robotic Path Following Using Learned Memory-Augmented Model. Frontiers in Robotics and AI, 8. ISSN 2296-9144
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Abstract
The control of the interaction between the robot and environment, following a predefined geometric surface path with high accuracy, is a fundamental problem for contact-rich tasks such as machining, polishing, or grinding. Flexible path-following control presents numerous applications in emerging industry fields such as disassembly and recycling, where the control system must adapt to a range of dissimilar object classes, where the properties of the environment are uncertain. We present an end-to-end framework for trajectory-independent robotic path following for contact-rich tasks in the presence of parametric uncertainties. We formulate a combination of model predictive control with image-based path planning and real-time visual feedback, based on a learned state-space dynamic model. For modeling the dynamics of the robot-environment system during contact, we introduce the application of the differentiable neural computer, a type of memory augmented neural network (MANN). Although MANNs have been as yet unexplored in a control context, we demonstrate a reduction in RMS error of ∼
21.0% compared with an equivalent Long Short-Term Memory (LSTM) architecture. Our framework was validated in simulation, demonstrating the ability to generalize to materials previously unseen in the training dataset.
Item Type: | Article |
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Subjects: | Opene Prints > Mathematical Science |
Depositing User: | Managing Editor |
Date Deposited: | 27 Jun 2023 04:59 |
Last Modified: | 11 Oct 2023 05:08 |
URI: | http://geographical.go2journals.com/id/eprint/2259 |