Efficient Learning of Inverse Dynamics Models for Adaptive Computed Torque Control
David Jorge, Gabriella Pizzuto, Michael Mistry

TL;DR
This paper introduces a deep kernel model approach for efficient, probabilistic inverse dynamics learning in robots, improving control accuracy and adaptability while managing computational costs.
Contribution
It presents a novel combination of deep learning and kernel methods for real-time, uncertainty-aware inverse dynamics modeling in robotic control.
Findings
Deep kernel models outperform state-of-the-art methods in prediction accuracy.
The approach enables adaptive control with improved compliance and tracking.
Model generalizes well across different robotic setups.
Abstract
Modelling robot dynamics accurately is essential for control, motion optimisation and safe human-robot collaboration. Given the complexity of modern robotic systems, dynamics modelling remains non-trivial, mostly in the presence of compliant actuators, mechanical inaccuracies, friction and sensor noise. Recent efforts have focused on utilising data-driven methods such as Gaussian processes and neural networks to overcome these challenges, as they are capable of capturing these dynamics without requiring extensive knowledge beforehand. While Gaussian processes have shown to be an effective method for learning robotic dynamics with the ability to also represent the uncertainty in the learned model through its variance, they come at a cost of cubic time complexity rather than linear, as is the case for deep neural networks. In this work, we leverage the use of deep kernel models, which…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Fault Detection and Control Systems · Control Systems and Identification
