DocumentCode :
579331
Title :
Learning strategies for wet clutch control
Author :
Pinte, G. ; Stoev, J. ; Symens, Wim ; Dutta, Arin ; Yu Zhong ; Wyns, B. ; De Keyser, Robin ; Depraetere, B. ; Swevers, Jan ; Gagliolo, M. ; Nowe, Ann
Author_Institution :
Flanders´ Mechatron. Technol. Centre, Heverlee, Belgium
fYear :
2011
fDate :
14-16 Oct. 2011
Abstract :
This paper presents an overview of model-based (Iterative Learning Control, Model Predictive Control and Iterative Optimization) and non-model-based (Genetic-based Machine Learning and Reinforcement Learning) learning strategies for the control of wet clutches. Based on theoretical considerations and a validation on an experimental test bench containing wet clutches, the benefits and drawbacks of the different strategies are compared. Although after convergence a good engagement quality can be obtained by all strategies, only model-based strategies are suited for online applicability. The convergence time for non-model-based strategies is too long such that they can only be applied during an offline calibration phase.
Keywords :
clutches; control engineering computing; convergence; genetic algorithms; iterative methods; learning (artificial intelligence); predictive control; convergence time; genetic-based machine learning; iterative learning control; iterative optimization; model predictive control; model-based learning strategies; nonmodel-based learning strategies; offline calibration phase; reinforcement learning; wet clutch control; Computational modeling; Convergence; Optimization; Pistons; Torque; Trajectory;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
System Theory, Control, and Computing (ICSTCC), 2011 15th International Conference on
Conference_Location :
Sinaia
Print_ISBN :
978-1-4577-1173-2
Type :
conf
Filename :
6365369
Link To Document :
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