Emulating Hydrodynamic Models with Neural Operators for Rapid Storm Assessment

Authors

DOI:

https://doi.org/10.59297/3vypkq61

Keywords:

Flood Modeling, Flood Nowcasting, Neural Surrogates, Physics Emulators, Graph Neural Network, Neural Operator, Climate Resilience, Flood Risk, Decision Support, Floods, Work-in-progress

Abstract

Timely, accurate, and trustworthy flood models for rapid decision making during and after extreme storms do not exist in an operational capacity, as flood models often compromise between physical accuracy and speed. Physics-based flood models that explicitly simulate mass and momentum balances can be accurate, but are prohibitively computationally expensive. Stochastic models built from synthesizing sparse amounts of existing flood data are timely, but do not model the underlying hydrodynamics of a flood, limiting simulations to water levels alone. Capturing the full impact of a flood disaster requires models that include strong currents that can harm people, flood momentum that damages infrastructure, and debris flows that can block water outflows and evacuation routes. To address this operational gap, we are developing a near-real-time "nowcast" flood disaster simulation fusing physics-based models with machine learning. As a part of this effort, we are creating training datasets using physics-based hydrodynamic models verified against recent historical flood events in the United States. These data will inform a timely flood model that simulates more than water levels: flow properties such as velocity can improve damage and risk calculations, as well as situational awareness of regions that could be hazardous during a flood. With this nowcast, we aim to build the timely, trustworthy foundation of tools that decision-makers can use to prepare for, respond to, and recover from flood disasters. 

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Author Biographies

  • Emma L. McDaniel, MIT Lincoln Laboratory

    Dr. Emma L. McDaniel is a technical staff member in MIT Lincoln Laboratory’s Human Resilience Technology Group, specializing in the application of natural language processing and geospatial data science to address critical challenges in crisis response and human resilience. Her work focuses on developing large language model frameworks for analyzing unstructured data, designing decision support systems, and developing simulation methodologies. McDaniel earned her BA degree in English and religion with a minor in feminist studies from Southwestern University and her PhD in computer science at Georgia State University, where she was a founding member of the Center for Disaster Informatics and Computational Epidemiology. Her research emphasizes collaboration with stakeholders to translate complex data into actionable insights, aligning with Lincoln Laboratory's mission of advancing societal resilience through technology. 

  • Jeffrey Liu, MIT Lincoln Laboratory

    Dr. Jeffrey Liu is a technical staff member in MIT Lincoln Laboratory’s Human Resilience Technology Group, and specializes in artificial intelligence and machine learning, optimization, and data science for humanitarian assistance and disaster relief and climate applications. He is particularly interested in computer vision, anomaly detection, uncertainty quantification, and data visualization. Liu received his PhD degree in civil engineering and computation from MIT, and his BS degree in engineering physics from the University of Michigan. He is passionate about education and open source and open data initiatives. 

  • Teresa Fazio, MIT Lincoln Laboratory

    Dr. Teresa A. Fazio is a technical staff member in the Human Resilience Technology Group at MIT Lincoln Laboratory. She holds a BS degree in physics from the Massachusetts Institute of Technology, a PhD in materials science from Columbia University, and an MFA in nonfiction from the Bennington Writing Seminars. Prior to joining the Human Resilience Technology Group, Fazio worked in the Technology Transfer Office where she assisted small businesses in working with the Laboratory and created a defined process by which Laboratory staff members could spin out startup companies. Prior to joining the Laboratory, she worked in venture capital as a tech scout for the firm Allied Minds as well as in academic technology transfer as a licensing officer at Columbia Technology Ventures. She is also a veteran of the United States Marine Corps.

  • Julia Hopkins, MIT Lincoln Laboratory

    Dr. Julia Ann Hopkins is a technical staff member in the Human Resilience Technology Group at MIT Lincoln Laboratory. She specializes in geophysical fluid dynamics, flood disasters, and sustainable solutions for infrastructure resilience. Her research ranges from modeling the impact of storm waves on coastal infrastructure, to field observations of fluid dynamics and analyzing complex natural and built systems through the lens of water resilience. Hopkins earned a BS degree in both mathematics and civil and environmental engineering from MIT and a PhD in applied ocean science and engineering from the MIT-WHOI Joint Program. Her post-doctoral research was in coastal dynamics at Delft University of Technology in the Netherlands, during which she separately helped launch a start-up to design and evaluate floating wetlands for flood defense. Prior to joining the Laboratory, Hopkins was an assistant professor in civil and environmental engineering at Northeastern University with a research portfolio focused on urban flood resilience, including understanding the impact of intensified storms on cities, collecting novel observations of high-energy waves in complex harbors, and developing robust methods to leverage remote sensing for critical coastal processes.

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Published

2026-05-22

Conference Proceedings Volume

Section

ISCRAM Proceedings

How to Cite

McDaniel, E., Liu, J., Council, C., Rowlett, J., Fazio, T., & Hopkins, J. (2026). Emulating Hydrodynamic Models with Neural Operators for Rapid Storm Assessment. Proceedings of the International ISCRAM Conference, 23. https://doi.org/10.59297/3vypkq61

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