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On Simulation and Trajectory Prediction with Gaussian Process Dynamics

Authors :
Hewing, Lukas
Arcari, Elena
Fröhlich, Lukas
Zeilinger, Melanie N.
Bayen, Alexandre M.
Jadbabaie, Ali
Pappas, George
Parrilo, Pablo A.
Recht, Benjamin
Tomlin, Claire
Zeilinger, Melanie
Source :
Proceedings of Machine Learning Research, 120, Proceedings of the 2nd Conference on Learning for Dynamics and Control
Publication Year :
2020
Publisher :
PMLR, 2020.

Abstract

Established techniques for simulation and prediction with Gaussian process (GP) dynamics implicitly make use of an independence assumption on successive function evaluations of the dynamics model. This can result in significant error and underestimation of the prediction uncertainty, potentially leading to failures in safety-critical applications. This paper proposes methods that explicitly take the correlation of successive function evaluations into account. We first describe two sampling-based techniques; one approach provides samples of the true trajectory distribution, suitable for ‘ground truth’ simulations, while the other draws function samples from basis function approximations of the GP. Second, we present a linearization-based technique that directly provides approximations of the trajectory distribution, taking correlations explicitly into account. We demonstrate the procedures in simple numerical examples, contrasting the results with established methods. ISSN:2640-3498

Details

Language :
English
ISSN :
26403498
Database :
OpenAIRE
Journal :
Proceedings of Machine Learning Research, 120, Proceedings of the 2nd Conference on Learning for Dynamics and Control
Accession number :
edsair.od.......150..fe6eaec259d81a3711ce28678299b1d5