Publication detail

Efficient Q-learning modification aplied on active magnetic bearing control

BŘEZINA, T., KREJSA, J.

Original Title

Efficient Q-learning modification aplied on active magnetic bearing control

Type

journal article - other

Language

English

Original Abstract

The paper is focused on use of Q-learning for active magnetic bearing (AMB) control. Q-learning belongs to the reinforcement learning methods which are the part of real time machine learning approaches. The essence of proposed method is in separating the Q-learning into two phases – prelearning phase, which use mathematical model of real system and tutorage phase, which works with the real system and is used for further improvement of Q-values found during the prelearning phase. Proposed learning method, used in prelearning phase, proved to be highly efficient. Controller based on Q-learning show better results (regarding the number of successful trials) than referential PID controller after only 1000 table passes. The control quality criterion results are comparable. The policy found by learning also shows high robustness against errors of system variables observations, even only very simple reinforcement function in shape of simple reduced penalty is used.

Keywords

Reinforcement learning, Q-learning, Active magnetic bearing

Authors

BŘEZINA, T., KREJSA, J.

RIV year

2004

Released

1. 11. 2004

Publisher

Association for engineering mechanics, Czech Republic

ISBN

1210-2717

Periodical

Inženýrská mechanika - Engineering Mechanics

Year of study

11/2004

Number

2

State

Czech Republic

Pages from

83

Pages to

96

Pages count

14

BibTex

@article{BUT45424,
  author="Tomáš {Březina} and Jiří {Krejsa}",
  title="Efficient Q-learning modification aplied on active magnetic bearing control",
  journal="Inženýrská mechanika - Engineering Mechanics",
  year="2004",
  volume="11/2004",
  number="2",
  pages="14",
  issn="1210-2717"
}