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From self-tuning regulators to reinforcement learning and back again

Authors :
Matni, Nikolai
Proutiere, Alexandre
Rantzer, Anders
Tu, Stephen
Publication Year :
2019

Abstract

Machine and reinforcement learning (RL) are increasingly being applied to plan and control the behavior of autonomous systems interacting with the physical world. Examples include self-driving vehicles, distributed sensor networks, and agile robots. However, when machine learning is to be applied in these new settings, the algorithms had better come with the same type of reliability, robustness, and safety bounds that are hallmarks of control theory, or failures could be catastrophic. Thus, as learning algorithms are increasingly and more aggressively deployed in safety critical settings, it is imperative that control theorists join the conversation. The goal of this tutorial paper is to provide a starting point for control theorists wishing to work on learning related problems, by covering recent advances bridging learning and control theory, and by placing these results within an appropriate historical context of system identification and adaptive control.<br />Comment: Tutorial paper, 2019 IEEE Conference on Decision and Control, to appear

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1906.11392
Document Type :
Working Paper