Machine Learning-Based Framework to Predict Single and Multiple Daylighting Simulation Outputs Using Neural Networks
Subject
Machine Learning for DaylightingBuilding Performance Simulations
BPS
Artifical Intelligence
Daylighting
Deep Learning
Neural Network
Parametric Daylighting
High Performance Computing
IBPSA
Daylight Autonomy
Department
ArchitectureCollections
Citation
Labib, Rania (2021). Machine Learning-Based Framework to Predict Single and Multiple Daylighting Simulation Outputs Using Neural Networks. The17th IBPSA Conference, Bruges, Belgium. Available electronically from https : / /hdl .handle .net /1969 .1 /196863.
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