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    The Energy Storage and Distributed Resources Division (ESDR) works on developing advanced batteries and fuel cells for transportation and stationary energy storage, grid-connected technologies for a cleaner, more reliable, resilient, and cost-effective future, and demand responsive and distributed energy technologies for a dynamic electric grid.

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    We work closely with academic, government and industry partners to conduct foundational and applied research that provides the groundwork for the development of transformative new energy technologies in the areas of energy storage and conversion, electrical grid, advanced materials for the energy infrastructure, science of manufacturing and water-energy nexus.

    Visit our focus areas and research groups at the right to find out more.

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    • Transportation
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    • Grid Integration
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      • The John S. Newman Early Career Scientist
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2022

Grant, Peter, and Christoph Gehbauer."Evaluating the Impacts of Weather Forecast Inaccuracy on Performance of Model Predictive Control for Dynamic Facades."2022 Building Performance Modeling Conference and SimBuild (2022).

2021

Wang, Zhe, Tianzhen Hong, Han Li, and Mary Ann Piette."Predicting city-scale daily electricity consumption using data-driven models."Advances in Applied Energy 2 (2021) 100025. DOI

2020

Prakash, Anand, Samir Touzani, Mariam Kiran, Shreya Agarwal, Marco Pritoni, and Jessica Granderson."Deep Reinforcement Learning in Buildings: Implicit Assumptions and their Impact."RLEM'20: Proceedings of the 1st International Workshop on Reinforcement Learning for Energy Management in Buildings & Cities (2020). DOI

2004

Xu, Peng, Philip Haves, Mary Ann Piette, and James E Braun."Peak Demand Reduction from Pre-Cooling with Zone Temperature Reset in an Office Building."2004 ACEEE Summer Study on Energy Efficiency in Buildings (2004).

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