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Automated classification metrics for energy modelling of residential buildings in the UK with open algorithms

Beck, A.; Long, Gavin; Boyd, Doreen S.; Rosser, Julian F.; Morley, Jeremy; Duffield, Richard; Sanderson, M.; Robinson, Darren

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Authors

A. Beck

GAVIN LONG Gavin.Long@nottingham.ac.uk
Data Scientist Research Fellow

DOREEN BOYD doreen.boyd@nottingham.ac.uk
Professor of Earth Observation

Julian F. Rosser

Jeremy Morley

Richard Duffield

M. Sanderson

Darren Robinson



Abstract

Estimating residential building energy use across large spatial extents is vital for identifying and testing effective strategies to reduce carbon emissions and improve urban sustainability. This task is underpinned by the availability of accurate models of building stock from which appropriate parameters may be extracted. For example, the form of a building, such as whether it is detached, semi-detached, terraced etc and its shape may be used as part of a typology for defining its likely energy use. When these details are combined with information on building construction materials or glazing ratio, it can be used to infer the heat transfer characteristics of different properties. However, these data are not readily available for energy modelling or urban simulation. Although this is not a problem when the geographic scope corresponds to a small area and can be hand-collected, such manual approaches cannot be easily applied at the city or national scale. In this paper, we demonstrate an approach that can automatically extract this information at the city scale using off-the-shelf products supplied by a National Mapping Agency. We present two novel techniques to create this knowledge directly from input geometry. The first technique is used to identify built form based upon the physical relationships between buildings. The second technique is used to determine a more refined internal/external wall measurement and ratio. The second technique has greater metric accuracy and can also be used to address problems identified in extracting the built form. A case study is presented for the City of Nottingham in the United Kingdom using two data products provided by the Ordnance Survey of Great Britain (OSGB): MasterMap and AddressBase. This is followed by a discussion of a new categorisation approach for housing form for urban energy assessment.

Citation

Beck, A., Long, G., Boyd, D. S., Rosser, J. F., Morley, J., Duffield, R., …Robinson, D. (2020). Automated classification metrics for energy modelling of residential buildings in the UK with open algorithms. Environment and Planning B: Urban Analytics and City Science, 47(1), 45-64. https://doi.org/10.1177/2399808318762436

Journal Article Type Article
Acceptance Date Jan 1, 2018
Online Publication Date Mar 22, 2018
Publication Date 2020-01
Deposit Date Feb 9, 2018
Publicly Available Date Mar 22, 2018
Journal Environment and Planning B: Urban Analytics and City Science
Electronic ISSN 2399-8091
Publisher SAGE Publications
Peer Reviewed Peer Reviewed
Volume 47
Issue 1
Pages 45-64
DOI https://doi.org/10.1177/2399808318762436
Keywords Built environment, geographical information systems, urban form
Public URL https://nottingham-repository.worktribe.com/output/920950
Publisher URL http://journals.sagepub.com/doi/full/10.1177/2399808318762436

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