A Data-Efficient Approach to Precise and Controlled Pushing
CoRL 2018 Decades of research in control theory have shown that simple controllers, when provided with timely feedback, can control complex systems. Pushing is an example of a complex mechanical system that is difficult to model accurately due to unknown system parameters such as coefficients of fri...
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Zusammenfassung: | CoRL 2018 Decades of research in control theory have shown that simple controllers,
when provided with timely feedback, can control complex systems. Pushing is an
example of a complex mechanical system that is difficult to model accurately
due to unknown system parameters such as coefficients of friction and pressure
distributions. In this paper, we explore the data-complexity required for
controlling, rather than modeling, such a system. Results show that a
model-based control approach, where the dynamical model is learned from data,
is capable of performing complex pushing trajectories with a minimal amount of
training data (10 data points). The dynamics of pushing interactions are
modeled using a Gaussian process (GP) and are leveraged within a model
predictive control approach that linearizes the GP and imposes actuator and
task constraints for a planar manipulation task. |
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DOI: | 10.48550/arxiv.1807.09904 |