Atmospheric Measurement Techniques Discussions | 2021

An algorithm to detect non-background signals in greenhouse gas\ntime series from European tall tower and mountain stations

 
 
 
 
 
 
 
 
 
 
 
 
 
 

Abstract


Abstract. We present a statistical framework for near real-time signal processing to identify regional signals in CO2 time series recorded at stations which are normally uninfluenced by local processes. A curve-fitting function is first applied to the detrended time series to derive a harmonic describing the annual CO2 cycle. We then combine a polynomial fit to the data with a short-term residual filter to estimate the smoothed cycle and define a seasonally-adjusted noise component, equal to two standard deviations of the smoothed cycle about the annual cycle. Spikes in the smoothed daily data which rise above this 2σ threshold are classified as anomalies. Examining patterns of anomalous behavior across multiple sites allows us to quantify the impacts of synoptic-scale weather events and better understand the regional carbon cycling implications of extreme seasonal occurrences such as droughts.\n

Volume None
Pages 1-26
DOI 10.5194/AMT-2021-16
Language English
Journal Atmospheric Measurement Techniques Discussions

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