CAIG: AI-Guided Water Availability Tracking and Twin Systems for Infrastructure Resilience
University Of Alabama Tuscaloosa, Tuscaloosa AL
Investigators
Abstract
The rapid expansion of artificial intelligence (AI) infrastructure across the United States presents challenges for water resource management. AI infrastructure requires a large water supply for cooling. This project will develop three new AI models for water resources. The models will identify where water resources exist that can reliably support the growth of AI infrastructure. First, a large-scale AI model will provide insights for water availability to choose sites. Second, digital twins will be created to reveal hazards that may disrupt local water supply. Finally, an AI method will help predict impacts of wastewater and thermal pollution. The broader impacts include practical guidance on water management and sustainability. The project’s primary scientific goal is to develop a multi-scale hydrologic modeling framework that integrates physics-informed AI and hierarchical digital twin technologies to inform water management for AI infrastructure development. The project consists of three main technical components for analyzing water resource sustainability and identifying optimal sites for AI infrastructure. First, an AI-driven hydrologic model will analyze geospatial data across the contiguous United States to identify regions with adequate water resources. Second, digital twins will be created for selected sites, enabling scenario analysis to understand the potential impacts of natural hazards and water availability fluctuations. Third, a fractional-calculus-based modeling framework will be developed to assess environmental outputs associated with data centers. The outcomes include novel methods for large-scale water resource analysis, new AI algorithms tailored specifically to geoscience applications, and practical guidance on environmental management strategies. The research team includes experts in hydrology, AI, and applied mathematics, supported by collaborations with national labs and water management agencies. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
View original record on NSF Award Search →