EGU23-1675
https://doi.org/10.5194/egusphere-egu23-1675
EGU General Assembly 2023
© Author(s) 2023. This work is distributed under
the Creative Commons Attribution 4.0 License.

Mapping Retrogressive Thaw Slumps Using Satellite Data With Deep Learning

Yili Yang1, Brendan M. Rogers1, Greg Fiske1, Jennifer Watts1, Stefano Potter1, Tiffany Windholz1, Andrew Mullen1, Ingmar Nitze2, and Sue Natali1
Yili Yang et al.
  • 1Woodwell Climate Research Center, Arctic, United States of America (yyang@woodwellclimate.org)
  • 2Alfred Wegener Institute, Germany

Retrogressive thaw slumps (RTS) are thermokarst features in ice-rich hillslope permafrost terrain and can cause dynamic changes to the landscape. Their occurrence in the Arctic has become increasingly frequent. RTS can significantly impact permafrost stability and generate substantial carbon emissions. Understanding the spatial distribution of RTS is critical to understanding and modelling global warming factors from permafrost thaw. Mapping RTS using conventional Earth observation approaches is challenging due to the highly dynamic nature and often small scale of RTS in the Arctic. In this study, we trained deep neural network models to map RTS across several landscapes in Siberia and Canada. Convolutional neural networks were trained with 965 RTS features, where 509 were from the Yamal and Gydan peninsulas in Siberia, and 456 from six other pan-Arctic regions including Canada and Northeastern Siberia. We used 4-m Maxar commercial imagery as the base map, 10-m NDVI derived from Sentinel-2 as the vegetation feature and 2-m ArcticDEM as the elevation feature. The best-performing model reached a validation Intersection over Union (IoU) score of 0.74 and a test IoU score of 0.71. Compared to past efforts to map RTS features, this represents one of the best-performing models and generalises well for mapping RTS in different permafrost regions, representing a critical step towards pan-Arctic deployment. Our experiments shed light on the impact of within-class and between-class variances of RTS in different regions on the model performance and provided critical implications for our follow-up study. We propose this method as an effective, accurate and computationally undemanding approach for RTS mapping.

How to cite: Yang, Y., M. Rogers, B., Fiske, G., Watts, J., Potter, S., Windholz, T., Mullen, A., Nitze, I., and Natali, S.: Mapping Retrogressive Thaw Slumps Using Satellite Data With Deep Learning, EGU General Assembly 2023, Vienna, Austria, 24–28 Apr 2023, EGU23-1675, https://doi.org/10.5194/egusphere-egu23-1675, 2023.