Contact Us

AI: Cutting-Edge Overviews & Tutorials with Dr Gege Wen

Key Details:

Time: 14.00 – 15.00
Date: Tuesday 14 May
Location: Hybrid Event | Online and in I-X Conference Room, Level 5
Translation and Innovation Hub (I-HUB)
Imperial White City Campus
84 Wood Lane
W12 0BZ

 

Any questions, please contact Andreas Joergensen (a.joergensen@imperial.ac.uk)

Registration is
now closed

Speaker

Dr Gege Wen

Gege Wen is an Assistant Professor at Imperial College London, co-appointed by the Earth Science Engineering department and the newly launched I-X initiative on Artificial Intelligence. She obtained her Ph.D. in Energy Sciences and Engineering at Stanford University, advised by Professor Sally Benson. Prior to her Ph.D., she received her M.S. in Fluid Mechanics and Hydrology from Stanford University and her B.S. in Mineral Engineering from the University of Toronto. Her research interest is developing computational methods for Earth and environmental science problems to help fulfil society’s energy needs and transition toward a low-carbon future. She specializes in (1) multiphase flow and transport for CO2 geological storage, (2) sustainable subsurface energy storage, and (3) ML for scientific computing.

Talk Title

Machine learning for Climate Change Mitigation and CO2 Geological Storage Modelling

Talk Summary

CO2 geological storage plays an essential role in global decarbonization and the energy transition. Predicting the transport of CO2 in subsurface formations requires the numerical simulation of multiphase flow through porous media. However, such simulations are challenging at scale due to the high computational costs of existing numerical methods. In this seminar, we will discuss how machine learning can help address this challenge, support engineering decisions, and reduce uncertainties in CO2 storage deployment.

More Events

Jan
08

In his Inaugural Lecture, Professor Hamed Haddadi discusses his academic journey towards building networked systems.

Jan
08

Join the winter edition of Multi-Service Networks workshop, which will cover all aspects of networked systems.

Jan
13

This workshop aims to bring together researchers in stochastic analysis, statistics and theoretical machine learning for an exchange of ideas at the forefront of the field. The