物理干扰模型下无线传感器网络联合压缩数据采集与调度

Dariush Ebrahimi, C. Assi
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引用次数: 2

摘要

压缩数据收集(CDG)已成为一种收集大规模传感器网络中传感器数据的有效方法。该技术能够在不引入密集计算的情况下降低全局规模的通信成本,并且能够通过平衡整个网络的聚合和转发负载来延长整个传感器网络的生命周期。使用CDG,构建了多个转发树,每个转发树用于聚合一个编码的测量值,这些测量值在汇聚处收集,用于从传感器恢复未编码的测量值。本文研究了在物理干扰模型下,构建用于采集和聚合网络中感知数据的转发树问题。通过数学公式将聚合树的构建和链路调度问题结合起来讨论,并强调了其复杂性。我们的目标是以最小的延迟和更少的传输在接收器上收集数据。由于联合问题的复杂性,我们提出了一种分散的方法来解决树的构造和链路调度子问题。我们的链路调度子问题依赖于为每条链路定义一个干扰邻域,并协调网络链路之间的传输来控制干扰。给出了数值结果来比较分散解与联合模型的性能以及文献中的先前工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint compressive data gathering and scheduling in wireless sensor networks under the physical interference model
Compressive data gathering (CDG) has emerged as a useful method for collecting sensory data in large scale sensor networks; this technique is able to reduce global scale communication cost without introducing intensive computation, and is capable of extending the lifetime of the entire sensor network by balancing the aggregation and forwarding load across the network. With CDG, multiple forwarding trees are constructed, each for aggregating a coded measurement, and these measurements are collected at the sink for recovering the uncoded measurements from the sensors. This paper studies the problem of constructing forwarding trees for collecting and aggregating sensed data in the network under the physical interference model. The problem of aggregation tree construction and link scheduling is addressed jointly, through a mathematical formulation, and its complexity is underlined. Our objective is to collect data at the sink with minimal delays and fewer transmissions. Owing to the complexity of the joint problem, we present a decentralized method for solving the tree construction and the link scheduling sub-problems. Our link scheduling sub-problem relies on defining an interference neighbourhood for each link and coordinating transmissions among network links to control the interference. Numerical results are presented to compare the performance of the decentralized solution with the joint model as well as prior work from the literature.
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