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Machine learning-based estimation of buildings' characteristics employing electrical and chilled water consumption data: Pipeline optimization

Abstract

Smart meter-driven remote auditing of buildings, as an alternative to the labor-intensive on-site visits, permits large-scale and rapid identification of buildings with low energy performance. The existing literature has mainly focused on electricity meters' data from a rather small set of buildings and efforts have often not been made to facilitate the models' physical interpretability. Accordingly, the present work focuses on the implementation and optimization of ML-based pipelines for building characterization (by use type (A), performance class (B), and operation group (C)) employing hourly electrical and chilled-water consumption data. Utilizing the Building Data Genome Project II dataset (with data from 1636 buildings), feature generation, feature selection, and pipeline optimization steps are performed for each pipeline. Results demonstrate that performing the latter two steps improves the model's accuracy (5.3%, 2.9%, and 3.9% for pipelines A, B, and C compared to a benchmark model), while notably reduces the number of utilized features (94.7%, 88.3%, 89.4%), enhancing the models' interpretability. Furthermore, adding features extracted from chilled-water consumption data boosts the accuracy (with respect to baseline) for the second subset by 12.4%, 13.5%, and 7.2%, while decreasing the feature count by 97.2%, 96.4%, and 96.5%, respectively.
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Category

Academic article

Language

English

Author(s)

  • Farhang Raymand
  • Behzad Najafi
  • Alireza Haghighat Mamaghani
  • Amin Moazami
  • Fabio Rinaldi

Affiliation

  • SINTEF Community / Architectural Engineering
  • Politecnico di Milano University
  • Radboud University
  • Norwegian University of Science and Technology
  • Concordia University

Year

2023

Published in

Energy and Buildings

ISSN

0378-7788

Volume

295

View this publication at Norwegian Research Information Repository