Ground-based GNSS (Global Navigation Satellite System) has efficiently been used since the 1990s as a meteorological observing system. Recently scientists have used GNSS time series of precipitable water vapor (PWV) for climate research. In this work, we compare the temporal trends estimated from GNSS time series with those estimated from European Center for Medium-Range Weather Forecasts (ECMWF) reanalysis (ERA-Interim) data and meteorological measurements. We aim to evaluate climate evolution in Germany by monitoring different atmospheric variables such as temperature and PWV. PWV time series were obtained by three methods: (1) estimated from ground-based GNSS observations using the method of precise point positioning, (2) inferred from ERA-Interim reanalysis data, and (3) determined based on daily in situ measurements of temperature and relative humidity. The other relevant atmospheric parameters are available from surface measurements of meteorological stations or derived from ERA-Interim. The trends are estimated using two methods: the first applies least squares to deseasonalized time series and the second uses the Theil-Sen estimator. The trends estimated at 113 GNSS sites, with 10 to 19 years temporal coverage, vary between 1.5 and 2.3mmdecade1 with standard deviations below 0.25mmdecade1. These results were validated by estimating the trends from ERA-Interim data over the same time windows, which show similar values. These values of the trend depend on the length and the variations of the time series. Therefore, to give a mean value of the PWV trend over Germany, we estimated the trends using ERA-Interim spanning from 1991 to 2016 (26 years) at 227 synoptic stations over Germany. The ERA-Interim data show positive PWV trends of 0.33-0.06mmdecade1 with standard errors below 0.03mmdecade1. The increment in PWV varies between 4.5 and 6.5%per degree Celsius rise in temperature, which is comparable to the theoretical rate of the Clausius- Clapeyron equation.
CITATION STYLE
Alshawaf, F., Balidakis, K., Dick, G., Heise, S., & Wickert, J. (2017). Estimating trends in atmospheric water vapor and temperature time series over Germany. Atmospheric Measurement Techniques, 10(9), 3117–3132. https://doi.org/10.5194/amt-10-3117-2017
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