Using Clustering to Understand Intra-city Warming in Heatwaves: Insights into Paris, Montreal, and Zurich
Yongling Zhao, Dominik Strebel, Dominique Derome, Igor Esau, Qi Li,, Jan Carmeliet

TL;DR
This paper presents a new clustering method combining near-surface air temperature and planetary boundary layer height to analyze intra-city heatwave dynamics in Paris, Montreal, and Zurich, revealing consistent heat flux patterns.
Contribution
It introduces a novel clustering approach for intra-city heatwave analysis by integrating temperature and boundary layer data, enhancing urban climate understanding.
Findings
Consistent refueling-restoration mode observed during heatwaves.
Hysteresis loop strength varies between urban and rural clusters.
Methodology applicable for comprehensive urban climate analytics.
Abstract
We introduce a novel methodological advancement by clustering paired near-surface air temperature with the planetary boundary layer height (PBLH) to characterize intra-city clusters for analytics. To illustrate this approach, we analyze three heatwaves (HW): the 2019 HW in Paris, the 2018 HW in Montreal, and the 2017 HW in Zurich. We assess cluster-based characteristics before, during, and after heatwave events. Using the objective hysteresis model, we determine the overall strength coefficient of the hysteresis loop between ground storage flux and all-wave downward radiative flux, ranging from 0.414 to 0.457 for urban clusters and from 0.126 to 0.157 for rural clusters during the heatwave periods. Across all cities, we observe a consistent refueling-restoration mode in the cumulative ground heat flux as the heatwaves progress. Future developments of this proposed two-component…
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Taxonomy
TopicsUrban Heat Island Mitigation · Remote Sensing and Land Use · Land Use and Ecosystem Services
