Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments

Ground surface temperatures (GST) are widely measured in mountain permafrost areas, but their time series data can be interrupted by gaps. Gaps complicate the calculation of aggregates and indices required for analysing temporal and spatial variability between loggers and sites. We present an algori...

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Main Authors: Staub, Benno, Hasler, Andreas, Noetzli, Jeannette, Delaloye, andReynald
Language:English
Published: 2017
Subjects:
Online Access:http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0001-GST_gapfilling_functions.R.R
http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0002-GST_gapfilling_script.R.R
http://doc.rero.ch/record/288638/files/del_gfa.pdf
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spelling ftreroch:oai:doc.rero.ch:20170504085032-IO 2023-05-15T17:57:10+02:00 Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments Staub, Benno Hasler, Andreas Noetzli, Jeannette Delaloye, andReynald 2017-05-04T06:53:45Z http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0001-GST_gapfilling_functions.R.R http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0002-GST_gapfilling_script.R.R http://doc.rero.ch/record/288638/files/del_gfa.pdf eng eng http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0001-GST_gapfilling_functions.R.R http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0002-GST_gapfilling_script.R.R http://doc.rero.ch/record/288638/files/del_gfa.pdf 2017 ftreroch 2023-02-16T17:27:25Z Ground surface temperatures (GST) are widely measured in mountain permafrost areas, but their time series data can be interrupted by gaps. Gaps complicate the calculation of aggregates and indices required for analysing temporal and spatial variability between loggers and sites. We present an algorithm to estimate daily mean GST and the resulting uncertainty. The algorithm is designed to automatically fill data gaps in a database of several tens to hundreds of time series, for example, the Swiss Permafrost Monitoring Network (PERMOS). Using numerous randomly generated artificial gaps, we validated the performance of the gap-filling routine in terms of (1) the bias resulting on annual means, (2) thawing and freezing degree-days, and (3) the accuracy of the uncertainty estimation. Although quantile mapping provided the most reliable gap-filling approach overall, linear interpolation between neighbouring values performed equally well for gap durations of up to 3–5 days. Finding the most similar regressors is crucial and also the main source of errors, particularly because of the large spatial and temporal variability of ground and snow properties in high-mountain terrains. Applying the gap-filling technique to the PERMOS GST data increased the total number of complete hydrological years available for analysis by 70 per cent (>450-filled gaps), likely without exceeding a maximal uncertainty of ± 0.25 °C in calculated annual mean values Other/Unknown Material permafrost RERO DOC Digital Library
institution Open Polar
collection RERO DOC Digital Library
op_collection_id ftreroch
language English
description Ground surface temperatures (GST) are widely measured in mountain permafrost areas, but their time series data can be interrupted by gaps. Gaps complicate the calculation of aggregates and indices required for analysing temporal and spatial variability between loggers and sites. We present an algorithm to estimate daily mean GST and the resulting uncertainty. The algorithm is designed to automatically fill data gaps in a database of several tens to hundreds of time series, for example, the Swiss Permafrost Monitoring Network (PERMOS). Using numerous randomly generated artificial gaps, we validated the performance of the gap-filling routine in terms of (1) the bias resulting on annual means, (2) thawing and freezing degree-days, and (3) the accuracy of the uncertainty estimation. Although quantile mapping provided the most reliable gap-filling approach overall, linear interpolation between neighbouring values performed equally well for gap durations of up to 3–5 days. Finding the most similar regressors is crucial and also the main source of errors, particularly because of the large spatial and temporal variability of ground and snow properties in high-mountain terrains. Applying the gap-filling technique to the PERMOS GST data increased the total number of complete hydrological years available for analysis by 70 per cent (>450-filled gaps), likely without exceeding a maximal uncertainty of ± 0.25 °C in calculated annual mean values
author Staub, Benno
Hasler, Andreas
Noetzli, Jeannette
Delaloye, andReynald
spellingShingle Staub, Benno
Hasler, Andreas
Noetzli, Jeannette
Delaloye, andReynald
Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
author_facet Staub, Benno
Hasler, Andreas
Noetzli, Jeannette
Delaloye, andReynald
author_sort Staub, Benno
title Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
title_short Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
title_full Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
title_fullStr Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
title_full_unstemmed Gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
title_sort gap‐filling algorithm for ground surface temperature data measured in permafrost and periglacial environments
publishDate 2017
url http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0001-GST_gapfilling_functions.R.R
http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0002-GST_gapfilling_script.R.R
http://doc.rero.ch/record/288638/files/del_gfa.pdf
genre permafrost
genre_facet permafrost
op_relation http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0001-GST_gapfilling_functions.R.R
http://doc.rero.ch/record/288638/files/PPP_1913_Supp-0002-GST_gapfilling_script.R.R
http://doc.rero.ch/record/288638/files/del_gfa.pdf
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