Monitoring GLOFs via deep learning-based remote sensing and transfer learning
- Fu Foundation School of Engineering and Applied Science, Columbia University, New York, United States of America (chen.thomas@columbia.edu)
As glacial melting and permafrost melting increase in intensity, regions with glaciers experience higher rates of flooding, which can cause immense economic loss and hundreds of lives lost in glacial lake outburst floods (GLOFs). By training a convolutional neural network (CNN) for this problem on multitemporal satellite imagery, we propose enabling deployable technologies that predict GLOF events and impacts on surrounding areas. In particular, we collect high-resolution satellite imagery data from previous GLOFs around the world, such as in Iceland, Alaska (United States), Pakistan, and Tibet, utilizing repositories provided by ESA and NASA. We curate a dataset based on paired images (pre- and post-GLOF). In this way, we can train the CNN on the change detected between these two instances, which can further aid in predictions in the form of an output from 0 to 10 indicating the severity of damage caused. However, because machine learning algorithms require a large quantity of data, we must also employ transfer learning. We propose a Markov logic network framework to achieve this, incorporating data from events that were not necessarily GLOFs but included glacial movement and/or flooding. When deployed, models like the one we propose can allow for both the monitoring of GLOFs in action as well as predict GLOFs in the near future by assessing changes using data collected from satellites in real time.
How to cite: Chen, T. Y.: Monitoring GLOFs via deep learning-based remote sensing and transfer learning, EGU General Assembly 2023, Vienna, Austria, 24–28 Apr 2023, EGU23-11207, https://doi.org/10.5194/egusphere-egu23-11207, 2023.