Data-driven predictive control for unlocking building energy flexibility: A review

Renewable and Sustainable Energy Reviews - Tập 135 - Trang 110120 - 2021
Anjukan Kathirgamanathan1,2, Mattia De Rosa1,2, Eleni Mangina2,3, Donal P. Finn1,2
1School of Mechanical and Materials Engineering, University College Dublin, Ireland
2UCD Energy Institute, O’Brien Centre for Science, University College Dublin, Ireland
3School of Computer Science, University College Dublin, Ireland

Tài liệu tham khảo

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