一种分布式节能传感器网络数据采集算法

Sarah Sharafkandi, D. Du, Alireza Razavi
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引用次数: 10

摘要

在无线传感器网络中,在基站收集原始传感器数据提供了对数据进行离线详细分析的灵活性,这在网络数据聚合中可能是不可能的。然而,无损数据采集需要消耗大量的通信能量,而传感器通常只有有限的能量。在本文中,我们提出了一种分布式和节能的算法,用于收集传感器网络中的原始数据,称为DECOR。DECOR利用空间相关性来减少传感器网络中高度相关数据的通信能量。在我们的方法中,在每个邻域,一个传感器共享其原始数据作为参考与其他传感器没有任何抑制或压缩。其他传感器利用这些参考数据以互差的形式表示它们的观测值,从而压缩它们的观测值。在高度相关的网络中,传输参考数据要比传输压缩数据消耗更多的能量。因此,我们首先尝试最小化参考传输的数量。然后,我们尽量减少彼此之间的差异。我们推导了这两个阶段的解析下界,并基于我们的理论结果,我们提出了一种两步分布式数据收集算法,与现有方法相比,该算法显著降低了通信能量。此外,我们还针对有损通信信道对算法进行了改进,并通过仿真对其性能进行了评价。
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A Distributed and Energy Efficient Algorithm for Data Collection in Sensor Networks
In wireless sensor networks, collection of raw sensor data at a base station provides the flexibility to perform offline detailed analysis on the data which may not be possible with innetwork data aggregation. However, lossless data collection consumes considerable amount of energy for communication while sensors usually have limited energy. In this paper, we propose a Distributed and Energy efficient algorithm for Collection of Raw data in sensor networks called DECOR. DECOR exploits spatial correlation to reduce the communication energy in sensor networks with highly correlated data. In our approach, at each neighborhood, one sensor shares its raw data as a reference with the rest of sensors without any suppression or compression. Other sensors use this reference data to compress their observations by representing them in the forms of mutual differences. In a highly correlated network, transmission of reference data consumes significantly more energy than transmission of compressed data. Thus, we first attempt to minimize the number of reference transmissions. Then, we try to minimize the size of mutual differences. We derive analytical lower bounds for both these phases and based on our theoretical results, we propose a twostep distributed data collection algorithm which reduces the communication energy significantly compared to existing methods. In addition, we modify our algorithm for lossy communication channels and we evaluate its performance through simulation.
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