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Showing results 111 - 114 of 114.
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"water storage"×

High-Rate Manufacturing of Corrosion Resistant Composite Piping for Water-Energy Infrastructure Resilience

The work focuses on rapid and cost-efficient manufacturing of composite piping for hydropower, waste-water infrastructure and data center thermal management offering extended service life and minimal inspection-maintenance requirement under corrosive and high temperature environme...
Saha, S., Kim, P., Kumar, V., Spencer, R., and Hassen, A.

Adaptive 3D Printed Micro-Hydropower for Resilient Grids: Digital-to-Deployment Framework

We propose to enhance the resilience of the U.S. electricity grid by enabling the rapid, adaptive, and on-demand manufacturing of site-specific micro-to-small hydropower systems for low-head dams. This approach directly addresses the nation's untapped 85,000+ non-powered dams (NPD...
Kim, P., Chawla, K., Hassen, A., Roschli, A., Post, B., Saha, S., and Mueller, R.

A Hybrid AI-Optimization Framework for Resilient Hydropower Operations to Support Grid Stability, Extreme Weather Management, and Large-Scale Industrial Loads

This white paper supports a two-stage decision-support framework that links fast, probabilistic inflow forecasts from modern machine learning and generative AI with multistage stochastic optimization for hydropower scheduling. By propagating uncertainty from prediction into operat...
Ploussard, Q., and Feinstein, J.

A Framework for Improving Locational Marginal Price Estimates for Technoeconomic Analysis of Hydropower Investments and Operational Decisions

The focus is on improving the analytics supporting hydropower investment decisions through the more accurate characterization of the locational marginal prices (LMPs) that will define future energy payments. Enhanced analytics around LMP prediction could also be used to improve op...
Balducci, P., DeSomber, K., and Zhou, Z.

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