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

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Abstract

We present a statistical framework to identify regional signals in station-based CO2 time series with minimal local influence. 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 2 standard deviations of the smoothed cycle about the annual cycle. Spikes in the smoothed daily data which surpass this ±2σ threshold are classified as anomalies. Examining patterns of anomalous behavior across multiple sites allows us to quantify the impacts of synoptic-scale atmospheric transport events and better understand the regional carbon cycling implications of extreme seasonal occurrences such as droughts.

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Resovsky, A., Ramonet, M., Rivier, L., Tarniewicz, J., Ciais, P., Steinbacher, M., … Engelen, R. (2021). An algorithm to detect non-background signals in greenhouse gas time series from European tall tower and mountain stations. Atmospheric Measurement Techniques, 14(9), 6119–6135. https://doi.org/10.5194/amt-14-6119-2021

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