低功耗网络中有损压缩对信息时代的影响

Frederick M. Chache, Sean Maxon, R. Narayanan, Ramesh Bharadwaj
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摘要

低功耗,远程无线传感器网络(wsn)是一个具有许多现实世界用途的领域,如灾害,农业和工业应用。这些网络中的节点通常通过射频(RF)调制方案进行通信,以牺牲数据速率为代价优先考虑长距离和低功耗。这些低数据速率可能会导致网络迅速饱和,因为传感器通常会以高于网络容量的速率生成数据。为了解决这个问题,已经提出了远程估计技术,以减少网络的负载,同时仍然传输足够的数据来准确地重建原始信号。这与信息时代(AoI)的概念相结合,已被证明是一种有效的解决方案。压缩算法,无论是无损的还是有损的,都已被用于通过增加给定字节数中编码的信息量来提高数据吞吐量。在低功耗无线传感器网络中,使用压缩算法可以提高网络的有效数据率,而不需要对信号进行下采样,也不需要丢弃数据点。但是压缩也有缺点,因为具有非常高压缩比的算法可能导致不必要的信息失真,以及节点等待正确填充数据包的传输间隔时间过长。在这项工作中,开发了仿真环境和现实世界测试平台来了解这些影响,并开发了自适应压缩率算法来优化网络以最小化平均AoI。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of Lossy Compression on the Age of Information in a Low Power Network
Low power, long range wireless sensor networks (WSNs) are a field with many real world uses such as disaster, agricultural, and industrial applications. The nodes in these networks often communicate via radio frequency (RF) modulation schemes that prioritize long range and low power consumption at the expense of data rates. These low data rates can cause the network to quickly become saturated, as sensors can often generate data at rates higher than the network capacity. To address this issue, remote estimation techniques have been proposed to reduce the loads on the network, while still transmitting enough data to accurately reconstruct the original signal. This, paired with the concepts of Age of Information (AoI), has been shown to be an effective solution. Compression algorithms, both lossless and lossy, have been used to improve data throughput by increasing the amount of information encoded in a given number of bytes. In a low power WSN, the use of compression algorithms could improve the effective data rate of the network, without the need to downsample the signal, and discard data points. But compression can also have drawbacks, as algorithms with very high compression ratios can lead to needless distortion of information, as well as excessive time between transmissions as the node waits to properly fill a packet. In this work, a simulation environment and real world test bed were developed to understand these effects, and adaptive compression rate algorithms were developed to optimize the network to minimize average AoI.
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