Review of data-driven models for quantifying load shed by non-residential buildings in the United States

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作者
Malhotra, Yashvi [1 ]
Polly, Ben [2 ]
MacDonald, Jason [3 ]
Clark, Jordan D. [1 ]
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[1] The Ohio State University, United States
[2] National Renewable Energy Laboratory, United States
[3] Lawrence Berkeley National Laboratory, United States
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114870
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TM72 [输配电技术];
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