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  5. Urban building energy performance prediction and retrofit analysis using data-driven machine learning approach
 
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Urban building energy performance prediction and retrofit analysis using data-driven machine learning approach

Author(s)
Ali, Usman  
Bano, Sobia  
Shamsi, Mohammad Haris  
Sood, Divyanshu  
Hoare, Cathal  
Zuo, Wangda  
Hewitt, Neil  
O'Donnell, James  
Uri
http://hdl.handle.net/10197/28280
Date Issued
2024-01-15
Date Available
2025-06-16T14:20:47Z
Abstract
Stakeholders such as urban planners and energy policymakers use building energy performance modeling and analysis to develop strategic sustainable energy plans with the aim of reducing energy consumption and emissions from the built environment. However, inconsistent energy data and the lack of scalable building models create a gap between building energy modeling and traditional planning practices. An alternative approach is to conduct a large-scale energy usage survey, which is time-consuming. Similarly, existing studies rely on traditional machine learning or statistical approaches for calculating large-scale energy performance. This paper proposes a solution that employs a data-driven machine learning approach to predict the energy performance of urban residential buildings, using both ensemble-based machine learning and end-use demand segregation methods. The proposed methodology consists of five steps: data collection, archetype development, physics-based parametric modeling, machine learning modeling, and urban building energy performance analysis. The devised methodology is tested on the Irish residential building stock and generates a synthetic building dataset of one million buildings through the parametric modeling of 19 identified vital variables for four residential building archetypes. As a part of the machine learning modeling process, the study implemented an end-use demand segregation method, including heating, lighting, equipment, photovoltaic, and hot water, to predict the energy performance of buildings at an urban scale. Furthermore, the model's performance is enhanced by employing an ensemble-based machine learning approach, achieving 91% accuracy compared to the traditional approach's 76%. Accurate prediction of building energy performance enables stakeholders, including energy policymakers and urban planners, to make informed decisions when planning large-scale retrofit measures.
Sponsorship
Science Foundation Ireland
Other Sponsorship
Department for the Economy in Northern Ireland
U.S. National Science Foundation
Type of Material
Journal Article
Publisher
Elsevier
Journal
Energy and Buildings
Volume
303
Copyright (Published Version)
2023 the Authors
Subjects

Building energy perfo...

Data-driven approache...

Urban building energy...

Machine learning

Building retrofit

DOI
10.1016/j.enbuild.2023.113768
Language
English
Status of Item
Peer reviewed
ISSN
0378-7788
This item is made available under a Creative Commons License
https://creativecommons.org/licenses/by/3.0/ie/
File(s)
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NSF_Journal_I.pdf

Size

1.22 MB

Format

Adobe PDF

Checksum (MD5)

85133252734e8d71153ba67668321c58

Owning collection
Mechanical & Materials Engineering Research Collection
Mapped collections
Energy Institute Research Collection

Item descriptive metadata is released under a CC-0 (public domain) license: https://creativecommons.org/public-domain/cc0/.
All other content is subject to copyright.

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