Sparse sampling for sensing temporal data — building an optimized envelope

M. Domb, G. Leshem, Elisheva Bonchek-Dokow, Esther David, Yuh-Jye Lee
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Abstract

IoT systems collect vast amounts of data which can be used in order to track and analyze the structure of future recorded data. However, due to limited computational power, bandwith, and storage capabilities, this data cannot be stored as is, but rather must be reduced in such a way so that the abilities to analyze future data, based on past data, will not be compromised. We propose a parameterized method of sampling the data in an optimal way. Our method has three parameters — an averaging method for constructing an average data cycle from past observations, an envelope method for defining an interval around the average data cycle, and an entropy method for comparing new data cycles to the constructed envelope. These parameters can be adjusted according to the nature of the data, in order to find the optimal representation for classifying new cycles as well as for identifying anomalies and predicting future cycle behavior. In this work we concentrate on finding the optimal envelope, given an averaging method and an entropy method. We demonstrate with a case study of meteorological data regarding El Ninio years.
用于感知时间数据的稀疏采样——构建优化包络
物联网系统收集大量数据,可用于跟踪和分析未来记录数据的结构。然而,由于有限的计算能力、带宽和存储能力,这些数据不能按原样存储,而必须以一种不影响基于过去数据分析未来数据的能力的方式进行缩减。我们提出了一种参数化的数据最优采样方法。我们的方法有三个参数——从过去的观察中构造平均数据周期的平均方法,定义平均数据周期周围间隔的包络方法,以及将新数据周期与构造包络进行比较的熵方法。这些参数可以根据数据的性质进行调整,以便找到对新周期进行分类以及识别异常和预测未来周期行为的最佳表示。在这项工作中,我们专注于寻找最优包络,给出平均方法和熵方法。我们以厄尔尼诺年的气象数据为例进行了论证。
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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