Machine learning-driven energy management of a hybrid nuclear-wind-solar-desalination plant

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作者
Pombo, Daniel Vázquez [1 ,2 ]
Bindner, Henrik W. [1 ]
Spataru, Sergiu V. [3 ]
Sørensen, Poul E. [1 ]
Rygaard, Martin [4 ]
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[1] Wind and Energy Systems, Technical University of Denmark (DTU), Frederikborsvej 399, Roskilde,4000, Denmark
[2] R&D Strategic Development, Vattenfall AB, Evenemangsgatan 13C, Solna,169 56, Sweden
[3] Department of Photonics Engineering, Technical University of Denmark, Frederikborsvej 399, Roskilde,4000, Denmark
[4] Department of Environmental Engineering, Water Technology and Processes, Technical University of Denmark, Lyngby,2800, Denmark
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