Multi-Task Learning of System Dynamics with Maximum Information Gain
This paper introduces a new approach to adaptively learn the dynamics of a robotic system. The methodology is based on maximizing the information gain from new observations while modeling the dynamics with a Multiple Output Gaussian Process (MOGP). High-dimensional stateaction spaces with unknown dependencies between inputs and outputs can be highly computationally expensive to learn. Gaussian process modeling is a Bayesian technique that naturally overcomes one of the most difficult problems in machine learning known as over-fitting. This makes it very appealing for on-line problems where testing multiple hypothesis is difficult. The computational cost of the learning task is reduced by having a smaller dataset of informative training points. Therefore we introduce a learning strategy capable of determining the most informative training set for the MOGP. This method can be implemented for learning the behavior of dynamic systems where due to their complexity and disturbances are infeasible to be analytically defined. The benefits of our approach are verified in two experiments: learning the dynamics of a cartpole system in simulation and the dynamics of a robotic blimp.
Jose F. Zubizarreta-Rodriguez Fabio Ramos
Australian Centre for Field Robotics,School of Information Technologies The University of Sydney,Australia
国际会议
2011 IEEE International Conference on Robotics and Automation(2011年IEEE世界机器人与自动化大会 ICRA 2011)
上海
英文
5709-5715
2011-05-09(万方平台首次上网日期,不代表论文的发表时间)