Framework for emulation and uncertainty quantification of a stochastic building performance simulator

Applied Energy - Tập 258 - Trang 113759 - 2020
P. Wate1, M. Iglesias2, V. Coors3, D. Robinson1
1Sheffield School of Architecture, The University of Sheffield, UK
2School of Mathematical Sciences, The University of Nottingham, UK
3Centre for Geodesy and Applied Informatics, Stuttgart University of Applied Sciences, Germany

Tài liệu tham khảo

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