High-Resolution Maps of Near-Surface Permafrost for Three Watersheds on the Seward Peninsula, Alaska Derived From Machine Learning

被引:4
作者
Thaler, E. A. [1 ]
Uhleman, S. [2 ]
Rowland, J. C. [1 ]
Schwenk, J. [1 ]
Wang, C. [2 ]
Dafflon, B. [2 ]
Bennett, K. E. [1 ]
机构
[1] Los Alamos Natl Lab, Div Earth & Environm Sci, Los Alamos, NM 87545 USA
[2] Lawrence Berkeley Natl Lab, Earth & Environm Sci Area, Berkeley, NM USA
关键词
permafrost extent; machine learning; high-resolution; TUNDRA PLANT-COMMUNITIES; DISTRIBUTED TEMPERATURE; MOUNTAIN PERMAFROST; SNOW; CLIMATE; SOIL; VARIABILITY; VEGETATION; THAW;
D O I
10.1029/2023EA003015
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Permafrost soils are a critical component of the global carbon cycle and are locally important because they regulate the hydrologic flux from uplands to rivers. Furthermore, degradation of permafrost soils causes land surface subsidence, damaging infrastructure that is crucial for local communities. Regional and hemispherical maps of permafrost are too coarse to resolve distributions at a scale relevant to assessments of infrastructure stability or to illuminate geomorphic impacts of permafrost thaw. Here we train machine learning models to generate meter-scale maps of near-surface permafrost for three watersheds in the discontinuous permafrost region. The models were trained using ground truth determinations of near-surface permafrost presence from measurements of soil temperature and electrical resistivity. We trained three classifiers: extremely randomized trees (ERTr), support vector machines (SVM), and an artificial neural network (ANN). Model uncertainty was determined using k-fold cross validation, and the modeled extents of near-surface permafrost were compared to the observed extents at each site. At-a-site near-surface permafrost distributions predicted by the ERTr produced the highest accuracy (70%-90%). However, the transferability of the ERTr to the sites outside of the training data set was poor, with accuracies ranging from 50% to 77%. The SVM and ANN models had lower accuracies for at-a-site prediction (70%-83%), yet they had greater accuracy when transferred to the non-training site (62%-78%). These models demonstrate the potential for integrating high-resolution spatial data and machine learning models to develop maps of near-surface permafrost extent at resolutions fine enough to assess infrastructure vulnerability and landscape morphology influenced by permafrost thaw. Accurate spatial assessments of the extent of near-surface permafrost in regions of discontinuous permafrost are essential for evaluating the potential impacts of permafrost thaw. Most current estimates of permafrost extent are provided at the scale of 10s of meters to kilometers, which is often too coarse to understand the impacts thaw might have on infrastructure or geomorphic processes. We trained machine learning models to generate maps of near-surface permafrost at 3 m spatial resolution in three sites in western Alaska. These maps provide an advancement in evaluating the extent of permafrost in the region as well as highlighting the landscape and ecological factors most important in driving predictions. High-resolution maps of near-surface permafrost on hillslopes were generated from machine learning modelsThe normalized difference vegetation index was the most important feature in prediction of near-surface permafrostThe support vector machines generally generated the highest balanced accuracy for predictions at sites where the model was not trained
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页数:17
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共 70 条
  • [1] Using field observations to inform thermal hydrology models of permafrost dynamics with ATS (v0.83)
    Atchley, A. L.
    Painter, S. L.
    Harp, D. R.
    Coon, E. T.
    Wilson, C. J.
    Liljedahl, A. K.
    Romanovsky, V. E.
    [J]. GEOSCIENTIFIC MODEL DEVELOPMENT, 2015, 8 (09) : 2701 - 2722
  • [2] Spatial prediction of permafrost occurrence in Sikkim Himalayas using logistic regression, random forests, support vector machines and neural networks
    Baral, Prashant
    Haq, M. Anul
    [J]. GEOMORPHOLOGY, 2020, 371
  • [3] Spatial patterns of snow distribution in the sub-Arctic
    Bennett, Katrina E.
    Miller, Greta
    Busey, Robert
    Chen, Min
    Lathrop, Emma R.
    Dann, Julian B.
    Nutt, Mara
    Crumley, Ryan
    Dillard, Shannon L.
    Dafflon, Baptiste
    Kumar, Jitendra
    Bolton, W. Robert
    Wilson, Cathy J.
    Iversen, Colleen M.
    Wullschleger, Stan D.
    [J]. CRYOSPHERE, 2022, 16 (08) : 3269 - 3293
  • [4] ResIPy, an intuitive open source software for complex geoelectrical inversion/modeling
    Blanchy, Guillaume
    Saneiyan, Sina
    Boyd, Jimmy
    McLachlan, Paul
    Binley, Andrew
    [J]. COMPUTERS & GEOSCIENCES, 2020, 137
  • [5] Sediment and nutrient delivery from thermokarst features in the foothills of the North Slope, Alaska: Potential impacts on headwater stream ecosystems
    Bowden, W. B.
    Gooseff, M. N.
    Balser, A.
    Green, A.
    Peterson, B. J.
    Bradford, J.
    [J]. JOURNAL OF GEOPHYSICAL RESEARCH-BIOGEOSCIENCES, 2008, 113 (G2)
  • [6] Surface Geophysical Methods for Characterising Frozen Ground in Transitional Permafrost Landscapes
    Briggs, Martin A.
    Campbell, Seth
    Nolan, Jay
    Walvoord, Michelle A.
    Ntarlagiannis, Dimitrios
    Day-Lewis, Frederick D.
    Lane, John W.
    [J]. PERMAFROST AND PERIGLACIAL PROCESSES, 2017, 28 (01) : 52 - 65
  • [7] Brown J., 2002, CIRCUM ARCTIC MAP PE
  • [8] Ground-penetrating radar, electromagnetic induction, terrain, and vegetation observations coupled with machine learning to map permafrost distribution at Twelvemile Lake, Alaska
    Campbell, Seth William
    Briggs, Martin
    Roy, Samuel G.
    Douglas, Thomas A.
    Saari, Stephanie
    [J]. PERMAFROST AND PERIGLACIAL PROCESSES, 2021, 32 (03) : 407 - 426
  • [9] Active layer thickness as a function of soil water content
    Clayton, Leah K.
    Schaefer, Kevin
    Battaglia, Michael J.
    Bourgeau-Chavez, Laura
    Chen, Jingyi
    Chen, Richard H.
    Chen, Albert
    Bakian-Dogaheh, Kazem
    Grelik, Sarah
    Jafarov, Elchin
    Liu, Lin
    Michaelides, Roger John
    Moghaddam, Mahta
    Parsekian, Andrew D.
    Rocha, Adrian, V
    Schaefer, Sean R.
    Sullivan, Taylor
    Tabatabaeenejad, Alireza
    Wang, Kang
    Wilson, Cathy J.
    Zebker, Howard A.
    Zhang, Tingjun
    Zhao, Yuhuan
    [J]. ENVIRONMENTAL RESEARCH LETTERS, 2021, 16 (05)
  • [10] A distributed temperature profiling system for vertically and laterally dense acquisition of soil and snow temperature
    Dafflon, Baptiste
    Wielandt, Stijn
    Lamb, John
    McClure, Patrick
    Shirley, Ian
    Uhlemann, Sebastian
    Wang, Chen
    Fiolleau, Sylvain
    Brunetti, Carlotta
    Akins, Franklin H.
    Fitzpatrick, John
    Pullman, Samuel
    Busey, Robert
    Ulrich, Craig
    Peterson, John
    Hubbard, Susan S.
    [J]. CRYOSPHERE, 2022, 16 (02) : 719 - 736