Toward energy efficient multistream collaborative compression in wireless sensor networks

Tommy Szalapski, S. Madria
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引用次数: 2

Abstract

Wireless sensor networks possess significant limitations in storage, bandwidth, and power. This has led to the development of several compression algorithms designed for sensor networks. Many of these methods exploit the correlation often present between the data on different sensor nodes in the network; however, correlation can also exist between different sensing modules on the same sensor node. Exploiting this correlation can improve compression ratios and reduce energy consumption without the cost of increased traffic in the network. We investigate and analyze approaches for compression utilizing collaboration between separate sensing modules on the same sensor node. The compression can be lossless or lossy with a parameter for maximum tolerable error. Performance evaluations over real world sensor data show increased energy efficiency and bandwidth utilization with a decrease in latency compared to some recent approaches for both lossless and loss tolerant compression.
无线传感器网络中节能多流协同压缩的研究
无线传感器网络在存储、带宽和功率方面有很大的限制。这导致了为传感器网络设计的几种压缩算法的发展。其中许多方法利用了网络中不同传感器节点上的数据之间经常存在的相关性;但是,同一传感器节点上的不同传感模块之间也可能存在相关性。利用这种相关性可以提高压缩比并减少能源消耗,而不会增加网络中的流量。我们研究和分析了利用同一传感器节点上不同传感模块之间的协作进行压缩的方法。压缩可以是无损的,也可以是带有最大可容忍误差参数的有损压缩。对真实世界传感器数据的性能评估表明,与最近的一些无损和容损压缩方法相比,该方法提高了能效和带宽利用率,降低了延迟。
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