Stochastic learning feedback hybrid automata for dynamic power management in embedded systems

Erbes, Teodora; Shukla, Sandeep K; Kachroo, Pushkin
SMCia 2005, IEEE Mid-Summer Workshop on Soft Computing in Industrial Applications, June 28-30, 2005, Espoo, Finland

Dynamic Power Management (DPM) refers to the strategies employed at system level to reduce energy expenditure (i.e. to prolong battery life) in embedded systems. The trade-off involved in DPM techniques is between the reductions of energy consumption and latency suffered by the tasks. Such trade-offs need to be decided at runtime, making DPM an on-line problem. We formulate DPM as a hybrid automaton control problem and integrate stochastic control. The control strategy is learnt dynamically using Stochastic Learning Hybrid Automata (SLHA) with feedback learning algorithms. Simulation-based experiments show the expediency of the feedback systems in stationary environments. Further experiments reveal that SLHA attains better trade-offs than several former predictive algorithms under certain trace data.


DOI
Type:
Conférence
City:
Espoo
Date:
2005-06-28
Department:
Sécurité numérique
Eurecom Ref:
1702
Copyright:
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