End-Use Load Profiles for the U.S. Building Stock

查看更多>>作者:Wilson Eric;Parker Andrew;Fontanini Anthony;Present Elaina;Reyna Janet;Adhikari Rajendra;Bianchi Carlo;CaraDonna Christopher;Dahlhausen Matthew;Kim Janghyun;LeBar Amy;Liu Lixi;Praprost Marlena;White Philip;Zhang Liang;DeWitt Peter;Merket Noel;Speake Andrew;Hong Tianzhen;Li Han;Mims Frick Natalie;Wang Zhe;Blair Aileen;Horsey Henry;Roberts David;Trenbath Kim;Adekanye Oluwatobi;Bonnema Eric;El Kontar Rawad;Gonzalez Jonathan;Horowitz Scott;Jones Dalton;Muehleisen Ralph;Platthotam Siby;Reynolds Matthew;Robertson Joseph;Sayers Kevin;Li Qu
  • 创建日期:2024-04-11
  • 发布日期:2024-04-11
  • 最新更新日期:2021-10-01
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查看更多>>The United States is embarking on an ambitious transition to a 100% clean energy economy by 2050, which will require improving the flexibility of electric grids. One way to achieve grid flexibility is to shed or shift demand to align with changing grid needs. To facilitate this, it is critical to understand how and when energy is used. High quality end-use load profiles (EULPs) provide this information, and can help cities, states, and utilities understand the time-sensitive value of energy efficiency, demand response, and distributed energy resources. Publicly available EULPs have traditionally had limited application because of age and incomplete geographic representation. To help fill this gap, the U.S. Department of Energy (DOE) funded a three-year project, End-Use Load Profiles for the U.S. Building Stock, that culminated in this publicly available dataset of calibrated and validated 15-minute resolution load profiles for all major residential and commercial building types and end uses, across all climate regions in the United States. These EULPs were created by calibrating the ResStock and ComStock physics-based building stock models using many different measured datasets, as described in the "Technical Report Documenting Methodology" linked in the submission.
DOI10.25984/1876417
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V1 在线更新2024-04-11 00:00:00
V1 在线发布2022-11-01 00:00:00
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