Design considerations of reinforcement learning power controllers in Wireless Body Area Networks.

PIMRC(2012)

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摘要
A Wireless Body Area Network (WBAN) comprises a number of tiny devices implanted in/on the body that sample physiological signals of the human body and send them to a coordinator node for medical or other purposes. As these miniature devices run on built-in batteries, energy is the most valuable resource in WBANs. This makes signal interference between neighboring WBANs a serious threat because it causes energy waste in these systems. To mitigate this internetwork interference, we propose a dynamic power control mechanism in WBANs which employs reinforcement learning (RL) to learn from experience and improve its performance. This paper presents guidelines in designing efficient RL power controllers in WBANs and provides an analysis of the effect of the reward function, discount factor, learning rate and eligibility trace parameter where the main performance criteria used are convergence and solution optimality in terms of throughput and energy consumption per bit.
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关键词
biomedical communication,body area networks,control engineering computing,control system synthesis,interference suppression,learning (artificial intelligence),medical computing,medical control systems,power control,prosthetics,RL,WBAN,eligibility trace parameter,energy consumption,energy waste,human body implantation,internetwork interference mitigation,medical coordinator node,physiological signal,power control mechanism,reinforcement learning,signal interference,wireless body area network,Game,Interference,Power Control,Reinforcement Learning,WBAN,convergence,multi agent,optimality
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