基于线性方法的传感器数据流在线压缩

Olli Väänänen, T. Hämäläinen
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引用次数: 3

摘要

随着物联网应用的不断升级,传感器数据处理方法的不同也呈现出来。传感器数据压缩是减少从传感器节点传输所需数据量的基本方法之一,传感器节点通常由电池供电并无线运行。减少无线传输中的数据量是降低无线传感器节点整体能耗的有效途径。所提出和测试的方法适用于计算能力和能量有限的受限传感器节点。利用压缩比和固有延迟对所提出的方法进行了比较。延迟是在线应用中的一个重要参数。对基于线性回归方法的改进变体RT-LRbTC进行了测试,证明它是一种潜在的方法,可用于具有固定和可预测延迟的无线传感器节点。用实测数据集测试了压缩算法的压缩效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensor Data Stream on-line Compression with Linearity-based Methods
The escalation of the Internet of Things applications has put on display the different sensor data processing methods. The sensor data compression is one of the fundamental methods to reduce the amount of data needed to transmit from the sensor node which is often battery powered and operates wirelessly. Reducing the amount of data in wireless transmission is an effective way to reduce overall energy consumption in wireless sensor nodes. The methods presented and tested are suitable for constrained sensor nodes with limited computational power and limited energy resources. The methods presented are compared with each other using compression ratio and inherent latency. Latency is an important parameter in on-line applications. The improved variation of the linear regression-based method called RT-LRbTC is tested and it has proved to be a potential method to be used in a wireless sensor node with a fixed and predictable latency. The compression efficiency of the compression algorithms is tested with real measurement data sets.
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