Satellite-Derived Annual Glacier Surface Flow Velocity Products for the European Alps, 2015–2021
Abstract
:1. Summary
- GoLive (https://nsidc.org/data/golive, accessed on 1 March 2023), or the Global Land Ice Velocity Extraction from Landsat (GoLIVE) project, was created by the National Snow and Ice Data Center thanks to NASA funding. GoLIVE is a processing and staging system for near-real-time global ice velocity data derived from Landsat 8 panchromatic imagery applied to image pairs covering all glaciers > 5 km2 and both ice sheets.
- ITS_LIVE (https://its-live.jpl.nasa.gov/, accessed on 1 March 2023), or the Intermission Time Series of Land Ice Velocity and Elevation (ITS_LIVE) project, part of NASA’s MEaSUREs program, provides measurements of glacier and ice sheet surface velocity and elevation change at a high temporal resolution. The ITS_LIVE data product is a set of regional compilations of annual mean surface velocities for major glacier-covered regions, spanning the time period from 1985 to 2018, subject to image availability and quality, with a spatial resolution varying between 120 m × 120 m and 240 m × 240 m. Data scarcity and/or low radiometric quality are significant limiting factors for many regions in the earlier product years. Annual coverage is nearly complete for the years following the Landsat 8 launch in 2013.
- The data set “Alps glacier velocities 2013–2015” [12] (https://zenodo.org/record/3244871, accessed on 1 March 2023) contains the median glacier surface velocity for the Alps for the years 2013–2015 (Landsat 8). The velocities have been obtained by feature tracking Landsat images acquired 1 year apart.
- The data set “glacier surface velocities derived from Sentinel-1” [13] contains glacier surface velocity data for 12 glacierized regions on Earth, including the European Alps. Sentinel-1 radar data acquired within a time interval ranging from 6 to 48 days have been processed over the period January 2015 to January 2021. The velocity product is available at a 200 m × 200 m spatial resolution.
2. Data Description
2.1. Data Format and Content
- v2015–2016—annually aggregated glacier surface flow velocity for the hydrological year 2015–2016 (the hydrological year starts the 1st of October and finishes the 30 of September of the following year).
- v2016–2017—same as before but for the hydrological year 2016–2017.
- v2017–2018—same as before but for the hydrological year 2017–2018.
- v2018–2019—same as before but for the hydrological year 2018–2019.
- v2019–2020—same as before but for the hydrological year 2019–2020.
- v2020–2021—same as before but for the hydrological year 2020–2021.
- a—flow direction (= angle between the flow vector and x-axis, in radians).
- cnt—number of image pairs used to generate the displacement maps that have been aggregated to obtain the glacier surface flow velocity products (data per pixel).
- stdev—standard deviation on the velocity for each pixel.
- stdeva—standard deviation on the direction of glacier surface flow.
- flag—error flag mask on pixels considered as unreliable. Unreliable pixels—0; reliable pixels—1. Such pixels have been flagged according to the following criteria:
- ○
- Coefficient of variation of the glacier surface flow velocity higher than 75% to mask areas with unreliable variability (e.g., glacier edges).
- ○
- Standard deviation of the glacier flow direction higher than 2.5° to mask areas with unreliable flow direction changes.
- trend_2015–2021—trend on surface flow velocity over the study period (2015–2021).
- trend_mask—mask on pixels considered with a nonsignificant trend. Pixels showing time series with a nonsignificant trend (Kendall rank-of-correlation test with a p-value > 0.05) are masked. Masked pixels—0; nonmasked pixels—1.
2.2. Overall Description, Strengths and Weaknesses
2.3. Overall Trends in Glacier Surface Flow Velocity
3. Methods
3.1. Step 1a: Database Initialization and Image Search
3.2. Step 1b: Image Preparation and Preprocessing
3.3. Step 2: Glacier Surface Displacement
3.4. Step 3a: Calibration of the Velocity Maps
3.5. Step 3b: netCDF Geocubes Database
3.6. Step 4. Postprocessing
- Apply a median spatial filtering. We eliminate pixels for which the pixel displacement deviates by more than three units from the 9 × 9 pixels’ median value [10,31]. This filtering is separately applied on the two components of speed (vx and vy). When one component is filtered out, the other component is also removed.
- Filter out the temporal baselines (time between two acquisitions of a pair of images used to estimate displacement) on the basis of the glacier flow magnitude vs. the expected accuracy. Indeed, the noise associated with the measured displacements increases inversely with the temporal baseline [10]. Thus, the noise associated with short cycles makes it impossible to measure the shortest displacements. Conversely, the longest temporal baselines do not capture the fastest displacements.
- Filter out the flow direction as it is unexpected that the flow direction significantly varies over the study period from 2015 to 2021. We test different angles for which the direction of the velocity vector is allowed to vary around the median flow direction. Angle values from ±45° have been tested. Each displacement value whose direction is outside the tested range is discarded.
- Filter out the distribution of the surface flow velocities. For each pixel, we consider the distribution of the surface flow velocities quantified over the entire study period (2015–2021). We then eliminate the distribution tails for the percentile values below 20% and above 80%. Thus, 40% of the extreme values of the distribution have been filtered out.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Product | Spatial Coverage | Spatial Resolution | Temporal Coverage | Temporal Resolution | Sensors |
---|---|---|---|---|---|
This study | European Alps | 50 m × 50 m | Since September 2015 | Annual average | Sentinel-2 |
GoLIVE (https://nsidc.org/data/golive, accessed on 1 March 2023) | Global for glaciers > 5 km2 | data | Since May 2013 | 16 days | Landsat-8 |
“Alps glacier velocities 2013–2015” [12] | European Alps | 30 m × 30 m | 2013–2015 | Annual average | Landsat-8 |
“Glacier surface velocities derived from Sentinel-1” [13] | 12 glacierized regions on Earth | 200 m × 200 m | January 2015–January 2021 | 6 to 48 days | Sentinel-1 |
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Rabatel, A.; Ducasse, E.; Millan, R.; Mouginot, J. Satellite-Derived Annual Glacier Surface Flow Velocity Products for the European Alps, 2015–2021. Data 2023, 8, 66. https://doi.org/10.3390/data8040066
Rabatel A, Ducasse E, Millan R, Mouginot J. Satellite-Derived Annual Glacier Surface Flow Velocity Products for the European Alps, 2015–2021. Data. 2023; 8(4):66. https://doi.org/10.3390/data8040066
Chicago/Turabian StyleRabatel, Antoine, Etienne Ducasse, Romain Millan, and Jérémie Mouginot. 2023. "Satellite-Derived Annual Glacier Surface Flow Velocity Products for the European Alps, 2015–2021" Data 8, no. 4: 66. https://doi.org/10.3390/data8040066
APA StyleRabatel, A., Ducasse, E., Millan, R., & Mouginot, J. (2023). Satellite-Derived Annual Glacier Surface Flow Velocity Products for the European Alps, 2015–2021. Data, 8(4), 66. https://doi.org/10.3390/data8040066