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Data Approximation for Time Series Data in Wireless Sensor Networks

机译:无线传感器网络中时间序列数据的数据近似

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摘要

Data prediction approaches are proposed in many fields to approximate time series data with a tolerable error. These approaches typically build prediction functions based on assumptions of the data variation. Nonetheless, if the variation of real-world time series data does not follow the assumption, the performance of data prediction will be limited. This paper presents a lightweight data approximation approach for time series data. This approach utilizes binary codes to represent original values, directly shortening their lengths in the cost of data precision. Then the author implements this approach in the WSN scenario. Two types of application layer messages and their transmission scheme are presented. These approaches are employed in WSN applications to: (1) report abnormal conditions in time, and (2) reduce data transmissions independently of data variations. Series of simulations are built on the basis of five real datasets. Simulation results based on five real datasets validate the performances of the proposed approach.
机译:在许多领域中提出了数据预测方法来近似具有可容忍误差的时间序列数据。这些方法通常基于数据变化的假设来构建预测功能。但是,如果现实世界中时间序列数据的变化不符合假设,则数据预测的性能将受到限制。本文提出了一种用于时间序列数据的轻量级数据近似方法。该方法利用二进制代码表示原始值,直接缩短了数据精度成本中的长度。然后作者在WSN场景中实现此方法。介绍了两种类型的应用程序层消息及其传输方案。这些方法在WSN应用程序中用于:(1)及时报告异常情况;(2)减少数据传输,独立于数据变化。系列模拟是基于五个真实数据集构建的。基于五个真实数据集的仿真结果验证了该方法的性能。

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