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Material Science Driven Water Technology Innovation
The white paper explores multiple Energy-Water Resilience (EWR) topics, including water for energy, energy for water, and their intersections. It proposes low-cost, scalable water-based material processes to advance water technologies through materials innovation. The existing cha...
Chang, C., and Ajami, N.
State-of-the-Art MABR Technology for Energy-Efficient, Compact and Low N2O Emission Wastewater Solutions
The focal area of this white paper is advancing energy water resilience in wastewater treatment through the deployment of Membrane Aerated Biofilm Reactor (MABR) technology.
The proposed effort advances MABR technology as a treatment intensification solution to address energy inef...
Ali, P., Cecconi, F., Sabba, F., and Downing, L.
Process Design and Optimization for Wastewater Treatment Efficiency and Resilience
This white paper explores the benefits of using digital twins and mathematical programming techniques to optimize energy consumption in wastewater treatment processes, thereby enhancing resilience and efficiency. Key challenges faced by current facilities include high energy consu...
Rawlings, E., Klise, K., and Gunter, D.
From Modeling to Testbeds: Taking an Expanded Look at Wastewater Reuse
The primary focus is on energy for water, considering the myriad tradeoffs influencing the adoption of wastewater reuse, particularly considering its energy intensity.
Wastewater reuse offers a compelling opportunity to concurrently tackle water scarcity and enhance energy effic...
Tidwell, V., Bixler, T., Niazi, H., Marsh, P., and Wild, T.
Integrated Energy-Water Data for Cross-Sector Resilience
Disjointed management of water and energy systems has created systemic vulnerabilities in the United States, particularly as aging infrastructure, population and industrial growth, and severe weather events strain both sectors. High-quality, standardized datasets like those provid...
Hodson, A., Stokes-Draut, J., Chini, C., Rao, P., and Semrod, K.