Session outline
| Multidisciplinary and Interdisciplinary (M) | ||
|---|---|---|
| Session Sub-category | Technology & Techniques(TT) | |
| Session ID | M-TT45 | |
| Title | Artificial Intelligence in Earth and Environmental sciences | |
| Short Title | AI in Earth and Environmental sciences | |
| Main Convener | Name | Dmitri A Kondrashov |
| Affiliation | University of California Los Angeles | |
| Co-Convener 1 | Name | Mikhail Krinitskiy |
| Affiliation | Shirshov Institute of Oceanology, Russian Academy of Sciences | |
| Co-Convener 2 | Name | Ingo Richter |
| Affiliation | JAMSTEC Japan Agency for Marine-Earth Science and Technology | |
| Co-Convener 3 | Name | Tomoki Tozuka |
| Affiliation | Department of Earth and Planetary Science, Graduate School of Science, The University of Tokyo | |
| Session Language |
E |
|
| Scope |
Cutting-edge developments in artificial intelligence (AI) are revolutionizing Earth and environmental sciences. This session provides a forum to explore and advance AI-driven innovations that leverage data to deepen insights into our planet's history, current state, and future trajectories. We welcome research on sophisticated AI approaches -- such as machine learning (ML), neural networks, and deep learning -- applied to diverse fields like atmospheric science, oceanography, climate studies, geospace, and other geophysical domains. Topics of interest include, but are not limited to, techniques for analyzing large datasets (e.g., pattern recognition, inverse problems); data-driven modeling and forecasting (e.g., dimensionality reduction, inverse modeling); methods integrating data with physical models (e.g., physics-informed ML, data assimilation); and advanced mathematical, statistical, or theory-driven ML approaches (e.g., optimization, causal inference, Koopman and Mori-Zwanzig frameworks). Join us for engaging presentations and discussions in this dynamic, interdisciplinary domain. |
|
| Presentation Format | Oral and Poster presentation | |
| Time | Presentation No | Title | Presenter |
|---|---|---|---|
| Oral Presentation May 24 PM1 | |||
| 13:45 - 14:00 | MTT45-01 | SeedAI: Sustainable Data and Energy Efficient AI Model Training Framework | Srihith Chennareddy |
| 14:00 - 14:15 | MTT45-02 | Improving Seasonal Climate Prediction with Nonlinear Inverse Modeling | Justin Lien |
| 14:15 - 14:30 | MTT45-03 | Neural Network Based Reconstruction of Mesoscale Atmospheric Dynamics Over the Barents and Kara Seas | Vadim Rezvov |
| 14:30 - 14:45 | MTT45-04 | Machine-Learning-Enhanced Geostatistical Modeling for Robust Coal Quality Prediction under Sparse Drilling | Angesom Gebretsadik Abraha |
| 14:45 - 15:00 | MTT45-05 | CropViT: Climate-Aware Vision Transformer Model for Crop Yield Prediction | Andrew Yingzhi Ma |
| 15:00 - 15:15 | MTT45-06 | Contrastive Learning for Pacific Ocean State Modeling | Mikhail Borisov |
| Oral Presentation May 24 PM2 | |||
| 15:30 - 15:45 | MTT45-07 | Parameter optimization of land ecosystem models by deep learning emulator | Takuma Sakauchi |
| 15:45 - 16:00 | MTT45-08 | Statistical downscaling of extreme precipitation in complex terrain, a case study of Black Sea coast | Alen Kospanov |
| 16:00 - 16:15 | MTT45-09 | River Discharge Prediction in Global Ungauged Basins using a Hybrid Multi-Model Ensemble and Reservoir Computing Framework | Mizuki Funato |
| 16:15 - 16:30 | MTT45-10 | Objective classification for solid hydrometeor particles using deep learning | Asuka Yoshimura |
| 16:30 - 16:45 | MTT45-11 |
Data Augmentation Should Follow the Classification Task: A Categorical View on Quotient Mismatch in Neural Classification |
Kunihiro Aoki |
| 16:45 - 17:00 | MTT45-12 | Explainable Novel Vision Transformer Architecture for Automatic Classification of Plutonic Rocks | Sittiporn - Kongsukho |
| Presentation No | Title | Presenter |
|---|---|---|
| Poster Presentation May 24 PM3 | ||
| MTT45-P01 | Enhanced PointNet++ and Point Transformer V3 for Automated Classification of Power Transmission Corridors using UAV LiDAR | TSUNG-YI CHOU |
| MTT45-P02 | Spatial Mapping of Soil Organic Carbon in Highly Heterogeneous Mangrove Wetlands Using Machine Learning and Geostatistical Approaches | I-Hao Hung |
| MTT45-P03 | Automated Carbon Footprint Inventory for Civil and Hydraulic Engineering in the Planning and Design Phase: An LLM-based Approach | Chun-Yu Lin |
| MTT45-P04 | Deep Embedded Clustering and Information-Theoretic Channel Attribution for Automated Glitch Analysis in Gravitational-Wave Detectors | John J. Oh |
| MTT45-P05 | Adapting Large Language Model Backbones for Rapid Seismic Intensity Predictions in Taiwan | Da-Yi Chen |
| MTT45-P06 | DEFINING CHARACTERISTIC STATES OF THE STRATOSPHERIC POLAR VORTEX IN THE NORTHERN HEMISPHERE USING MACHINE LEARNING METHODS | Ekaterina Demidova |
| MTT45-P07 | Seasonal prediction of equatorial Atlantic variability using a hierarchy of data-driven models | Ingo Richter |