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Adaptive learning-enforced broadcast policy for solar energy harvesting wireless sensor networks

机译:太阳能采集无线传感器网络的自适应学习强制广播策略

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摘要

The problem of message broadcast from the base station (BS) to sensor nodes (SNs) in solar energy harvesting enabled wireless sensor networks is considered in this paper. The aim is to ensure fast and reliable broadcast without disturbing upstream communications (from SNs to BS), while taking into account constraints related to the energy harvesting (EH) environment. A new policy is proposed where from the one hand, the BS first selects the broadcast time-slots adaptively with the SNs schedules (to meet active periods that are constrained by EH conditions), and from the other hand, SNs adapt their schedules to enable optimal selection of the broadcast time-slots that minimizes the number of broadcasts per message and the latency. Compared to the existing solutions, this enables fast broadcast and eliminates the need of adding message overhead to the broadcast message. For this purpose, an analytical energy model, a Hidden Markov Model(HMM), Baum-Welch learning algorithm, and a heuristic algorithm of the minimum covering set problem (MCS) are proposed and combined in a unique solution. The proposed solution is analyzed and compared with a state-of-the-art approach. The results confirm that the former has the advantage of performing the broadcast operation more reliably and in lower delay. (C) 2018 Elsevier B.V. All rights reserved.
机译:本文考虑了启用太阳能收集的无线传感器网络中从基站(BS)到传感器节点(SN)的消息广播问题。目的是在考虑与能量收集(EH)环境相关的约束的同时,确保快速可靠的广播而不会干扰上游通信(从SN到BS)。提出了一种新策略,其中,一方面,BS首先与SN调度一起自适应地选择广播时隙(以满足受EH条件约束的活动时段),另一方面,SN使它们的调度适应以使能。广播时隙的最佳选择,可最大程度地减少每条消息的广播次数和延迟。与现有解决方案相比,这可以实现快速广播,并且无需在广播消息中增加消息开销。为此,提出了一种解析能量模型,一种隐马尔可夫模型(HMM),Baum-Welch学习算法以及最小覆盖集问题(MCS)的启发式算法,并将其组合到一个独特的解决方案中。对提出的解决方案进行了分析,并与最新方法进行了比较。结果证实,前者具有更可靠地执行广播操作并且具有较低延迟的优点。 (C)2018 Elsevier B.V.保留所有权利。

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