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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License
Smoothing GNSS Time Series with Asymmetric Simple Moving Averages
Jose Nuno Lima and Joao Casaca
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DOI:10.17265/1934-7359/2012.06.013
National Laboratory of Civil Engineering, Lisbon, Portugal
There is an increasing trend to apply GNSS continuous observation of short baselines to the monitoring of engineering works, such as bridges and dams, for their structural analysis and safety control. In the case of large dams, one important application of the GNSS continuous observation is the establishment of early warning systems that demand accurate, frequently updated information and where the analysis of the baseline time series, in order to separate signal from noise is mandatory. The paper presents a study on the performance of linear filters of the asymmetric moving average type to smooth baseline time series. The transfer function of the filter is adopted as a smoothing criterion to choose an adequate order for the moving average, in face of the spectral density function of the baseline time series. One series of measurements of a short test baseline (325 m), materialized in the campus of the National Laboratory for Civil Engineering, is used as an example of the proposed strategy.
GNSS, moving averages, spectral density.