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Turbulence Time Series Data Hole Filling using Karhunen-Loeve and ARIMA methods

机译:使用Karhunen-Loeve和ARIMA方法的湍流时间序列数据孔填充

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摘要

Measurements of optical turbulence time series data using unattended instruments over long time intervals inevitably lead to data drop-outs or degraded signals. We present a comparison of methods using both Principal Component Analysis, which is also known as the Karhunen--Loeve decomposition, and ARIMA that seek to correct for these event-induced and mechanically-induced signal drop-outs and degradations. We report on the quality of the correction by examining the Intrinsic Mode Functions generated by Empirical Mode Decomposition. The data studied are optical turbulence parameter time series from a commercial long path length optical anemometer/scintillometer, measured over several hundred metres in outdoor environments.
机译:使用无人值守的仪器在长时间间隔内对光学湍流时间序列数据进行测量不可避免地会导致数据丢失或信号劣化。我们对使用主成分分析(也称为Karhunen-Loeve分解)和ARIMA的方法进行了比较,ARIMA试图校正这些事件引起的信号和机械引起的信号丢失和衰减。我们通过检查由经验模式分解生成的固有模式函数来报告校正的质量。所研究的数据是来自商业长路径长度光学风速仪/闪烁仪的光学湍流参数时间序列,在室外环境中测量了数百米。

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