Learning from the Past: Intelligent On-Line Weather Monitoring Based on Matrix Completion

Kun Xie, Lele Wang, Xin Wang, Jigang Wen, Gaogang Xie
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引用次数: 27

Abstract

Matrix completion has emerged very recently and provides a new venue for low cost data gathering in WSNs. Existing schemes often assume that the data matrix has a known and fixed low-rank, which is unlikely to hold in a practical monitoring system such as weather data gathering. Weather data varies in temporal and spatial domain with time. By analyzing a large set of weather data collected from 196 sensors in ZhuZhou, China, we reveal that weather data have the features of low-rank, temporal stability, and relative rank stability. Taking advantage of these features, we propose an on-line data gathering scheme based on matrix completion theory, named MC-Weather, to adaptively sample different locations according to environmental and weather conditions. To better schedule sampling process while satisfying the required reconstruction accuracy, we propose several novel techniques, including three sample learning principles, an adaptive sampling algorithm based on matrix completion, and a uniform time slot and cross sample model. With these techniques, our MC-Weather scheme can collect the sensory data at required accuracy while largely reduce the cost for sensing, communication and computation. We perform extensive simulations based on the real weather data sets and the simulation results validate the efficiency and efficacy of the proposed scheme.
借鉴过去:基于矩阵补全的智能在线天气监测
矩阵补全是最近才出现的,为wsn的低成本数据采集提供了新的途径。现有方案通常假设数据矩阵具有已知和固定的低秩,这在实际监测系统(如天气数据收集)中不太可能成立。天气资料在时空上随时间而变化。通过对株洲地区196个传感器采集的大量天气数据的分析,发现天气数据具有低秩、时间稳定性和相对秩稳定性的特征。利用这些特点,我们提出了一种基于矩阵补全理论的在线数据采集方案MC-Weather,根据环境和天气条件自适应采样不同的地点。为了在满足重构精度要求的同时更好地调度采样过程,我们提出了几种新技术,包括三个样本学习原理、基于矩阵补全的自适应采样算法以及均匀时隙和交叉样本模型。利用这些技术,我们的MC-Weather方案可以以所需的精度收集传感器数据,同时大大降低了传感、通信和计算的成本。我们基于真实的天气数据集进行了大量的模拟,模拟结果验证了所提出方案的效率和有效性。
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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