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Fleet Control using Coregionalized Gaussian Process Policy Iteration

Authors :
Verstraeten, Timothy
Libin, Pieter JK
Now��, Ann
De Giacomo, Giuseppe
Catala, Alejandro
Dilkina, Bistra
Milano, Michela
Barro, Senen
Bugarin, Alberto
Lang, Jerome
Faculty of Sciences and Bioengineering Sciences
Informatics and Applied Informatics
Artificial Intelligence
Electronics and Informatics
Computational Modelling
Publication Year :
2019

Abstract

In many settings, as for example wind farms, multiple machines are instantiated to perform the same task, which is called a fleet. The recent advances with respect to the Internet of Things allow control devices and/or machines to connect through cloud-based architectures in order to share information about their status and environment. Such an infrastructure allows seamless data sharing between fleet members, which could greatly improve the sample-efficiency of reinforcement learning techniques. However in practice, these machines, while almost identical in design, have small discrepancies due to production errors or degradation, preventing control algorithms to simply aggregate and employ all fleet data. We propose a novel reinforcement learning method that learns to transfer knowledge between similar fleet members and creates member-specific dynamical models for control. Our algorithm uses Gaussian processes to establish cross-member covariances. This is significantly different from standard transfer learning methods, as the focus is not on sharing information over tasks, but rather over system specifications. We demonstrate our approach on two benchmarks and a realistic wind farm setting. Our method significantly outperforms two baseline approaches, namely individual learning and joint learning where all samples are aggregated, in terms of the median and variance of the results.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....efee6579bb89be0bb4f9dbb8188459d5