Algorithms for local sensor synchronization

Lixing Wang, Y. Yang, Xin Miao, D. Papadias, Yunhao Liu
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Abstract

In a wireless sensor network (WSN), each sensor monitors environmental parameters, and reports its readings to a base station, possibly through other nodes. A sensor works in cycles, in each of which it stays active for a fixed duration, and then sleeps until the next cycle. The frequency of such cycles determines the portion of time that a sensor is active, and is the dominant factor on its battery life. The majority of existing work assumes globally synchronized WSN where all sensors have the same frequency. This leads to waste of battery power for applications that entail different accuracy of measurements, or environments where sensor readings have large variability. To overcome this problem, we propose LS, a query processing framework for locally synchronized WSN. We consider that each sensor ni has a distinct sampling frequency fi, which is determined by the application or environment requirements. The complication of LS is that ni has to wake up with a network frequency Fi≥fi, in order to forward messages of other sensors. Our goal is to minimize the sum of Fi without delaying packet transmissions. Specifically, given a routing tree, we first present a dynamic programming algorithm that computes the optimal network frequency of each sensor; then, we develop a heuristic for finding the best tree topology, if this is not fixed in advance.
局部传感器同步算法
在无线传感器网络(WSN)中,每个传感器监测环境参数,并将其读数报告给基站(可能通过其他节点)。传感器按周期工作,在每个周期中,它在固定的时间内保持活动状态,然后休眠直到下一个周期。这种循环的频率决定了传感器处于活动状态的时间部分,并且是其电池寿命的主要因素。现有的大部分工作假设所有传感器具有相同频率的全局同步WSN。对于需要不同测量精度的应用或传感器读数具有较大可变性的环境,这会导致电池功率的浪费。为了克服这个问题,我们提出了一种用于本地同步WSN的查询处理框架LS。我们认为每个传感器ni都有不同的采样频率fi,这是由应用或环境要求决定的。LS的复杂之处在于ni必须以网络频率Fi≥Fi唤醒,以便转发其他传感器的消息。我们的目标是在不延迟数据包传输的情况下最小化Fi的总和。具体来说,给定一棵路由树,我们首先提出了一种动态规划算法,计算每个传感器的最优网络频率;然后,我们开发了一种启发式方法来寻找最佳的树拓扑,如果这不是预先确定的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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