Feature extraction for enhancing data-driven urban building energy models
DOI: 10.35490/EC3.2023.291
Abstract: Building energy demand assessment plays a crucial role in designing energy-efficient building stocks. However, most data-driven studies feel the deficiency of datasets with building-specific information in building energy consumption estimation. Hence, the research objective of this study is to extract new features within the climate, demographic, and building use type categories and increase the accuracy of a non-parametric regression model estimating the energy consumption of a building stock in Seattle. The results show that adding new features to the original dataset from the building use type category increased the regression results with a 6.8% less error and a 30.8% higher R2 Score.
Keywords: Feature Extraction, Machine Learning, Urban Building Energy Demand Prediction