能量收集中的学习与公平:一个最大化的多武装强盗方法

D. Ghosh, Arun Verma, M. Hanawal
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引用次数: 1

摘要

无线射频(RF)能量收集的最新进展允许传感器节点通过远程为电池充电来延长其使用寿命。节点收集的能量取决于其周围环境和与能量源的接近程度,传感器网络的寿命取决于节点在网络中可以收集的最小能量。因此,了解节点收集的最少能量是很重要的,这样源就可以在最大限度地提高能量的频带上传输。我们将该学习问题建模为一种新的随机Maximin多臂强盗(Maximin MAB)问题,并提出了一种基于上置信度界(Upper Confidence Bound, UCB)的Maximin UCB算法。Maximin MAB是对标准MAB的推广,Maximin UCB具有与UCBI算法相同的性能保证。实验结果验证了该算法的性能保证。
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Learning and Fairness in Energy Harvesting: A Maximin Multi-Armed Bandits Approach
Recent advances in wireless radio frequency (RF) energy harvesting allows sensor nodes to increase their lifespan by remotely charging their batteries. The amount of energy harvested by the nodes varies depending on their ambient environment, and proximity to the energy source, and lifespan of the sensor network depends on the minimum amount of energy a node can harvest in the network. It is thus important to learn the least amount of energy harvested by nodes so that the source can transmit on a frequency band that maximizes this amount. We model this learning problem as a novel stochastic Maximin Multi-Armed Bandits (Maximin MAB) problem and propose an Upper Confidence Bound (UCB) based algorithm named Maximin UCB. Maximin MAB is a generalization of standard MAB, and Maximin UCB enjoys the same performance guarantee as to the UCBI algorithm. Our experimental results validate the performance guarantees of the proposed algorithm.
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