Published on 01 January 2023
Observations and Machine-Learned Models of Near-Surface Permafrost along the Koyukuk River, Alaska, USA
View DatasetDescription
This dataset contains GeoTIFs (raster) and GeoPackages (vector) that map observations of near-surface permafrost and not-permafrost from a field campaign conducted near the village of Huslia, AK along the Koyukuk River and its floodplain in July 2018. These data were collected as part of a campaign to understand if and how permafrost impacts riverbank erosion. This problem cannot be assessed without knowing where permafrost exists. Permafrost was observed via frost probing (to a maximum depth of one meter), coring (to a maximum depth of two meters) and bank/bar excavations. An additional boat survey was performed wherein expert (Joel Rowland) judgment assessed the presence or absence of distinctive permafrost features (e.g., overhanging tundra mats, thermoerosional niching, ice wedges, active drainage of ice melt from soils). This dataset also contains the input features and results of two machine learning models (random forest and convolutional neural network) that extrapolate the observations to the full floodplain that may be useful for building, testing, or validating other machine-learned permafrost models. Permafrost data are provided as georasters of the same shape and geovectors (polylines/polygons) and are all projected into EPSG:32605. All data can be visualized with a GIS (QGIS, ArcGIS, etc.).
Citations (3)
- https://doi.org/10.1029/2024av001175DataCite OpenAlex
Cited on 05 July 2024
Weight: 1.23
- https://doi.org/10.1029/2023jf007101DataCite MDC OpenAlex
Cited on 08 July 2023
Weight: 1.00
Cited on 09 February 2023
Weight: 1.00
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Publication Details
DOI
Publisher
Environmental System Science Data Infrastructure for a Virtual Ecosystem
Subfield
Ecology
Field
Environmental Science
Domain
Physical Sciences
Confidence Score
99%
Source
Open Alex