Predicting annual illuminance and operative temperature in residential buildings using artificial neural networks

Building and Environment - Tập 217 - Trang 109031 - 2022
Tobias Kristiansen1, Faisal Jamil2, Ibrahim A. Hameed2, Mohamed Hamdy1
1Department of Civil and Environmental Engineering, Faculty of Engineering, Norwegian University of Science and Technology (NTNU), Trondheim, 7491, Norway
2Department of ICT and Natural Sciences, Faculty of Information Technology and Electrical Engineering, Norwegian University of Science and Technology (NTNU), Larsgårdsvegen 2, Å lesund, 6009, Norway

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