Identifying Nonstationarity in Turbulence Series

被引:0
|
作者
Edgar L Andreas
Cathleen A. Geiger
George Treviño
Kerry J. Claffey
机构
[1] North West Research Associates,Department of Geography, Center for Climatic Research
[2] Inc. (Seattle Division),undefined
[3] University of Delaware,undefined
[4] CHIRES,undefined
[5] Inc.,undefined
[6] U.S. Army Cold Regions Research and Engineering Laboratory,undefined
来源
Boundary-Layer Meteorology | 2008年 / 127卷
关键词
Atmospheric surface layer; Cloud forcing; Integral scale; Nonstationarity; Time-dependent memory method (TDM method); Time series analysis;
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摘要
Because of rapid forcing by varying cloud and sky conditions, turbulence time series collected in the atmospheric surface layer over land may often be nonstationary. The meteorological community, however, has no consensus definition of what nonstationarity is and, thus, no consensus method for how to identify it. This study, therefore, adopts definitions for first-order and second-order stationarity taken from the time series analysis literature and implements new analysis techniques and probabilistic tests to quantify first-order and second-order nonstationarity. First-order nonstationarity manifests as a change in the series mean; second-order nonstationarity, as a change in the variance. The analysis identifies nonstationarity in surface-level turbulent temperature and water vapour series collected during two sample days with solar forcing influenced by cirrus and cirrostratus clouds, but that nonstationarity is not as severe as expected despite the rapid thermal forcing by these clouds. On the other hand, even with negligible cloud forcing, both sample days exhibited severe nonstationarity at night.
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页码:37 / 56
页数:19
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