使用智能索引和边缘计算支持减少CPS传感器流量的协议

N. Yazdani, D. Lucani
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引用次数: 8

摘要

我们提出了一种新的无损数据压缩方法,将网络物理系统(CPS)传输的数据量减少了几倍。我们的方法使用了一种受广义重复数据删除概念启发的索引技术,通过以下方式压缩数据:a)找到相似(不一定相等)数据块的匹配,以及b)利用以前存储在Edge(或Cloud)中的数据块,这些数据块是由相同甚至其他CPS设备存储的。我们提出了一个数学模型来预测基于先前接收块的数量的增益,并使用模拟来验证它。我们表明,即使在Edge中预先存储的块数量有限,压缩因子也可能达到23倍。即使对于合成数据的小数据块(16b),对不同样本的DEFLATE压缩也可能获得2.8倍的增益。使用真实的CPS数据集,我们表明我们的技术可以提供高达2.9的增益。我们还展示了我们的解决方案在树莓派3上的处理速度可以高达163 MB/s。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Protocols to Reduce CPS Sensor Traffic Using Smart Indexing and Edge Computing Support
We propose a new approach for lossless data compression to reduce the amount of data transmitted by Cyber-Physical Systems (CPS) by several-fold. Our approach uses an indexing technique inspired in the concept of generalized deduplication to compress data by a) finding matches of similar (not necessarily equal) data chunks, and b) exploiting data chunks previously stored in the Edge (or Cloud) by the same or even other CPS devices. We propose a mathematical model to predict the gains based on the number of previously received chunks and validate it using simulations. We show that compression factors of 23-fold are possible even with a limited number of previously stored chunks in the Edge. Gains of 2.8-fold over DEFLATE compression on differential samples are possible even for small data chunks (16 B) for synthetic data. Using real-world CPS data sets, we show that our technique can provide gains of up to 2.9. We also show our solution's processing speed in a Raspberry Pi 3 can be as high as 163 MB/s.
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