Energy-based adaptive compression in water network control systems

Sokratis Kartakis, Marija Milojevic-Jevric, G. Tzagkarakis, J. Mccann
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引用次数: 4

Abstract

Contemporary water distribution networks exploit Internet of Things (IoT) technologies to monitor and control the behavior of water network assets. Smart meters/sensor and actuator nodes have been used to transfer information from the water network to data centers for further analysis. Due to the underground position of water assets, many water companies tend to deploy battery driven nodes which last beyond the 10-year mark. This prohibits the use of high-sample rate sensing therefore limiting the knowledge we can obtain from the recorder data. To alleviate this problem, efficient data compression enables high-rate sampling, whilst reducing significantly the required storage and bandwidth resources without sacrificing the meaningful information content. This paper introduces a novel algorithm which combines the accuracy of standard lossless compression with the efficiency of a compressive sensing framework. Our method balances the tradeoffs of each technique and optimally selects the best compression mode by minimizing reconstruction errors, given the sensor node battery state. To evaluate our algorithm, real high-sample rate water pressure data of over 170 days and 25 sensor nodes of our real world large scale testbed was used. The experimental results reveal that our algorithm can reduce communication around 66% and extend battery life by 46% compared to traditional periodic communication techniques.
水管网控制系统中基于能量的自适应压缩
当代配水网络利用物联网(IoT)技术来监测和控制供水网络资产的行为。智能仪表/传感器和执行器节点已被用于将信息从供水网络传输到数据中心进行进一步分析。由于水资产位于地下,许多水务公司倾向于部署电池驱动的节点,这些节点的使用寿命超过10年。这禁止使用高采样率传感,因此限制了我们可以从记录仪数据中获得的知识。为了缓解这个问题,有效的数据压缩可以实现高速率采样,同时显着减少所需的存储和带宽资源,而不会牺牲有意义的信息内容。本文介绍了一种将标准无损压缩的精度与压缩感知框架的效率相结合的新算法。我们的方法平衡了每种技术的权衡,并在给定传感器节点电池状态的情况下,通过最小化重构误差来优化选择最佳压缩模式。为了评估我们的算法,我们使用了超过170天的真实高采样率水压数据和25个真实大型测试平台的传感器节点。实验结果表明,与传统的周期性通信技术相比,我们的算法可以减少约66%的通信,延长46%的电池寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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