NH33B - Toward Reliable and Scalable Geohazard Intelligence: From Multiscale Sensing to Open Data Foundations II Oral
Session Overview
To address the growing challenges of geohazards, we invite contributions that advance reliable and scalable machine learning/artificial intelligence (ML/AI) approaches for the detection, monitoring, and prediction of geohazards, such as earthquakes, tsunamis, volcanoes, landslides, and surface subsidence.
Event Details
Date: Wednesday, December 17, 2025
Time: 14:15 - 15:45
Location: 297 (NOLA CC)
Type: Oral Session
Focus Areas
We especially welcome works that:
- Multi-scale Sensing Integration: Integrate multi-scale sensing technologies (e.g., remote sensing and distributed fiber-optic sensing) with ML/AI to support both pre- and post-event assessment of geohazards as well as their cascading impacts in diverse environmental settings, such as urbanized, remote, post-disturbance, and cold landscapes.
- Interpretable ML/AI: Develop interpretable and knowledge-guided (e.g., physics-informed) ML/AI to reveal the driving factors and physical mechanisms.
- Model Robustness: Evaluate and improve model robustness in extreme and data-scarce scenarios through cross-region and cross-scenario model transfer, uncertainty quantification, and real-time data fusion.
- Open-Source Datasets: Develop open-source, multi-scale geohazard datasets to support the training and testing of foundation models toward reliable, scalable, real-world AI deployment.
Session Organizers
Primary Convener
Xin Wei - University of Michigan Ann Arbor
Conveners
- Chuxuan Li
- Jingxiao Liu
- Bingxu Luo
Student/Early Career Convener
Ann Sinclair
Featured Talks (10)
NH33B-01 (Invited)
Foundational geospatial databases and long-term monitoring to support the next generation of data-driven landslide hazard and risk assessments
NH33B-02 (Invited)
Multi-Scale Imagery and AI for Extreme Events: Integrating UAS and Ground-Level Sensing with Machine Learning for Post-Event Assessment
NH33B-03 (Invited)
Leveraging conventional and DAS seismic networks through novel processing paradigms
NH33B-04
Physics-Informed Multi-Scale Sensing Framework for Cascading Geohazard Assessment
NH33B-05
From Complexity to Clarity: Enhancing Landslide Susceptibility Mapping with Backward Elimination and Explainable AI
NH33B-06
A Machine Learning Benchmark Dataset for Generalizable Landslide Susceptibility Mapping