Near Optimal Online Distortion Minimization for Energy Harvesting Nodes

2017 IEEE International Symposium on Information Theory (ISIT)(2017)

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摘要
We consider online scheduling for an energy harvesting communication system where a sensor node collects samples from a Gaussian source and sends them to a destination node over a Gaussian channel. The sensor is equipped with a finite-sized battery that is recharged by an independent and identically distributed (i.i.d.) energy harvesting process over time. The goal is to minimize the long term average distortion of the source samples received at the destination. We study two problems: the first is when sampling is cost-free, and the second is when there is a sampling cost incurred whenever samples are collected. We show that fixed fraction policies [Shaviv-Ozgur], in which a fixed fraction of the battery state is consumed in each time slot, are near-optimal in the sense that they achieve a long term average distortion that lies within a constant additive gap from the optimal solution for all energy arrivals and battery sizes. For the problem with sampling costs, the transmission policy is bursty; the sensor can collect samples and transmit for only a portion of the time.
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关键词
near optimal online distortion minimization,energy harvesting nodes,online scheduling,energy harvesting communication system,sensor node,Gaussian source,destination node,Gaussian channel,finite-sized battery,energy harvesting process,long term average distortion,sampling cost,fixed fraction policies,battery state,constant additive gap,optimal solution,transmission policy
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