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Convolutional versus dense neural networks: comparing the two neural networks’ performance in predicting building operational energy use based on the building shape

Farnaz Nazari, Wei Yan

2021Building Simulation Conference proceedings18 citationsDOI

Abstract

A building’s self-shading shape impacts substantially on the amount of direct sunlight received by the building and contributes significantly to building’s operational energy use, in addition to other major contributing variables, such as materials and window-to-wall ratios. Deep Learning has the potential to assist designers and engineers by efficiently predicting building energy performance. This paper assesses the applicability of two different neural networks’ structures, Dense Neural Network (DNN) and Convolutional Neural Network (CNN), for predicting building operational energy use with respect to building shape. The comparison between the two neural networks shows that the DNN model surpasses the CNN model in performance, simplicity, and computation time. However, image-based CNN has the benefit of utilizing architectural graphics that facilitates design communication.

Topics & Concepts

Convolutional neural networkComputer scienceArtificial neural networkBuilding automationArtificial intelligenceSimplicityComputationBuilding designDeep learningEnergy (signal processing)Building management systemComputer graphicsEfficient energy useGraphicsEnergy consumptionMachine learningArchitectural engineeringEngineeringAlgorithmComputer graphics (images)StatisticsMathematicsControl (management)ThermodynamicsPhysicsElectrical engineeringEpistemologyPhilosophyBuilding Energy and Comfort Optimization
Convolutional versus dense neural networks: comparing the two neural networks’ performance in predicting building operational energy use based on the building shape | Litcius