多汇无线传感器网络空间相关数据采集

B. Cheng, Zhezhuang Xu, Cailian Chen, X. Guan
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引用次数: 20

摘要

由于无线传感器网络中节点的高密度部署,使得空间上邻近位置节点的感知数据高度相关。通过在数据收集过程中有效地利用这种空间相关性,可以大大减少冗余数据传输的不必要能源成本。本文主要研究多汇场景下空间相关数据的采集。这种情况下的主要挑战是数据收集过程应考虑如何利用空间相关性,同时决定数据传输到哪个sink。为了解决这一挑战,我们提出了一种基于空间相关感知读数选择传感器节点子集来表示整个多汇传感器网络的算法。在此算法中,只有这些指定的代表源需要将其数据上传到所选的接收器。该问题首先被表述为二进制整数线性规划(BILP)。由于证明了问题是np完全的,设计了两种启发式算法进行逼近。仿真结果表明,提出的算法可以大大减少源的数量,从而显著提高能源效率。
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Spatial correlated data collection in wireless sensor networks with multiple sinks
Due to the high density of node deployment in wireless sensor network, the sensing data of nodes in spatially proximate locations are highly correlated. By effectively exploiting this spatial correlation in the data collection process, unnecessary energy costs for redundant data transmission can be largely reduced. In this paper, we focus on collecting spatial correlated data in multi-sink scenario. The main challenge in this scenario is that data collection process should consider how to exploit the spatial correlation and decide which sink the data are transmitted to at the same time. To address this challenge, we propose an algorithm to select a subset of sensor nodes to represent the whole multi-sink sensor network based on the spatial correlated sensing readings. In this algorithm, only these representatives named sources need to upload their data to the chosen sinks. The problem is firstly formulated as a Binary Integer Linear Programming (BILP). Since the problem is proved to be NP-Complete, two heuristic algorithms are designed for approximation. The simulation results show that the proposed algorithms can largely reduce the number of the sources and then significantly improve energy efficiency.
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