CEE Ph.D. Defense Announcement: Machine Learning and Remote Sensing for Environmental Modeling - From Large-Scale Streamflow Forecasting to Malaria Risk Mapping
Jinyang Li, Ph.D. Candidate
UC Irvine, 2025
Professor Kuo-lin Hsu
Abstract: Remote sensing and machine learning (ML) are transforming how we model environmental systems and enabling innovative solutions. This dissertation develops ML- and remote sensing-based frameworks for two environmental problems. In Part I, we build advanced ML models that (i) improve continental U.S. streamflow forecasts, (ii) scale to the global scope while reducing computational cost about 50% while preserving predictive skill for extreme events, and (iii) better represent inter-basin heterogeneity and improve flood-peak timing estimates. In Part II, we combine multisource remote sensing with ensemble ML to map fine-scale malaria risk in East Africa, supporting targeted surveillance and vector-control strategies.
Share
Upcoming Events
-
EECS Seminar: Less Compute, More Intelligence – Efficient and Autonomous Generative AI and Agents
-
MAE 298: Microscopic Robots that Sense, Act and Compute
-
CBE 298 Seminar: Interface Modification for Electrocatalysis
-
CEE Ph.D. Defense Announcement: Machine Learning and Remote Sensing for Environmental Modeling - From Large-Scale Streamflow Forecasting to Malaria Risk Mapping
-
CBE Special Seminar: Operando Electrochemical Methods at Dynamic Energy Materials Interfaces