DocumentCode :
1676186
Title :
Reinforcement Learning-Based Dynamic Power Management of a Battery-Powered System Supplying Multiple Active Modes
Author :
Triki, M. ; Ammari, Ahmed C. ; Yanzhi Wang ; Pedram, Massoud
Author_Institution :
MMA Lab., Carthage Univ., Tunis, Tunisia
fYear :
2013
Firstpage :
437
Lastpage :
442
Abstract :
This paper addresses the problem of extending battery service lifetime in a portable electronic system while maintaining an acceptable performance degradation level. The proposed dynamic power management (DPM) framework is based on model-free reinforcement learning (RL) technique. In this DPM framework, the Power Manager (PM) adapts the system operating mode to the actual battery state of charge. It uses RL technique to accurately define the optimal battery voltage threshold value and use it to specify the system active mode. In addition, the PM automatically adjusts the power management policy by learning the optimal timeout value. Moreover, the SoC and latency tradeoffs can be precisely controlled based on a user-defined parameter. Experiments show that the proposed method outperforms existing methods by 35% in terms of saving battery service lifetime.
Keywords :
battery management systems; learning (artificial intelligence); power engineering computing; secondary cells; DPM; RL technique; SoC; battery service lifetime; battery state of charge; battery-powered system; model-free reinforcement learning technique; portable electronic system; reinforcement learning-based dynamic power management; Batteries; Degradation; Learning (artificial intelligence); Mathematical model; Performance evaluation; System-on-chip; Threshold voltage; Dynamic power management; battery-powered system design; extending battery lifetime; reinforcement learning;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Modelling Symposium (EMS), 2013 European
Conference_Location :
Manchester
Print_ISBN :
978-1-4799-2577-3
Type :
conf
DOI :
10.1109/EMS.2013.74
Filename :
6779885
Link To Document :
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