Title
Semi-parametric Gaussian process for robot system identification
Abstract
One reason why control of biomimetic robots is so difficult is the fact that we do not have sufficiently accurate mathematical models of their system dynamics. Recent nonparametric machine learning approaches to system identification have shown good promise, outperforming parameterized mathematical models when applied to complex robot system identification problems. Unfortunately, non-parametric methods perform poorly when applied to regions of the state space that are not densely covered by the training dataset. This problem becomes particularly critical as the state space grows. Parametric methods use the available data very efficiently but, on the flip side, they only provide crude approximations to the actual system dynamics. In practice the systematic deviations between the parametric mathematical model and its physical realization results in control laws that do not take advantage of the compliance and complex dynamics of the robot. Here we present an approach to robot system identification, named Semi-Parametric Gaussian Processes (SGP), that elegantly combines the advantages of parametric and non-parametric approaches. Computer simulations and a physical implementation of an underactuated robot system identification problem show very promising results. We also demonstrate the applicability of SGP to articulated tree-structured robots of arbitrary complexity. In all experiments, SGP significantly out-performed previous parametric and non-parametric approaches as well as previous methods for combining the two approaches.
Year
DOI
Venue
2012
10.1109/IROS.2012.6385977
IROS
Keywords
Field
DocType
complex dynamics,parametric mathematical model,arbitrary complexity,robot dynamics,state-space methods,identification,nonparametric methods,actual system dynamics,learning (artificial intelligence),control laws,systematic deviations,control engineering computing,physical realization,nonparametric statistics,training dataset,underactuated robot system identification problem,state space,sgp,parameterized mathematical models,gaussian processes,complex robot system identification problems,tree-structured robots,nonparametric machine learning approaches,semiparametric gaussian process,biomimetic robot control,biomimetics,computer simulations,mathematical model,training data,acceleration,robots,learning artificial intelligence,parametric statistics
Computer vision,Complex dynamics,Computer science,Nonparametric statistics,Control engineering,Parametric statistics,System dynamics,Artificial intelligence,Mathematical model,Robot,System identification,State space
Conference
ISSN
ISBN
Citations 
2153-0858
978-1-4673-1737-5
5
PageRank 
References 
Authors
0.43
8
2
Name
Order
Citations
PageRank
Tingfan Wu1138285.10
Javier R. Movellan21853150.44