Machine learning-based evaluation of dynamic thermal-tempering performance and thermal diversity for 107 Cambridge courtyards

Journal Article (2023)
Author(s)

Zhikai Peng (University of Cambridge, TU Delft - Building Physics)

Ramit Debnath (University of Cambridge, California Institute of Technology)

R. Bardhan (University of Cambridge)

Koen Steemers (University of Cambridge)

Research Group
Building Physics
Copyright
© 2023 Zhikai Peng, Ramit Debnath, Ronita Bardhan, Koen Steemers
DOI related publication
https://doi.org/10.1016/j.scs.2022.104275
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 Zhikai Peng, Ramit Debnath, Ronita Bardhan, Koen Steemers
Research Group
Building Physics
Volume number
88
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Abstract

The dynamic thermal conditions profoundly impact on the quality of physical, cultural, and social experiences in courtyard spaces. This research aims to identify the microclimatic dissimilarities between courtyards in terms of tempering seasonal–diurnal thermal extremes and enriching ground-level thermal textures. The methodology included field measurements in summer-2021 and winter-2022 in Cambridge, UK; microclimatic simulations of 107 courtyards in ENVI-met and model validations; and machine learning-driven clustering using Super Organising Maps (SuperSOM). The results indicate that the diurnal thermal range of the spatial-UTCI mean in summer (DTR(M)<24C) is double that in winter (DTR(M)<12C); meanwhile the maximum spatial-UTCI deviation is three times as significant (δ>3Cat 7:00 BST versus δ>1Cat 12:00 GMT). SuperSOM analysis was performed using K-means and hierarchical agglomerative clustering to partition all courtyards into seven subclusters on its graph-lattice structure. Clusters Km_I, Hac_I, and Hac_IV feature a positive synergy between the thermal-tempering and thermal-enriching potentials. In contrast, the other four clusters exhibit conflicting scenarios during the day and night across the two seasons analysed. These data-driven outcomes enabled us to optimise spatial and landscape strategies for designing and retrofitting courtyard microclimates, contributing to the current discussions on climate-responsive and sensation-inclusive design in historical urban contexts.