How can we improve data integration to enhance urban air temperature estimations?
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- @Article{Wen:2025:jag,
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author = "Zitong Wen and Lu Zhuo and Meiling Gao and Dawei Han",
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title = "How can we improve data integration to enhance urban
air temperature estimations?",
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journal = "International Journal of Applied Earth Observation and
Geoinformation",
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year = "2025",
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volume = "140",
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pages = "104599",
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keywords = "genetic algorithms, genetic programming, Air
temperature, High resolution, Data integration, Weather
radar, Crowdsourced weather station",
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ISSN = "1569-8432",
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URL = "
https://www.sciencedirect.com/science/article/pii/S1569843225002468",
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DOI = "
doi:10.1016/j.jag.2025.104599",
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abstract = "High-resolution urban air temperatures are
indispensable for analysing excess mortality during
heatwaves. As a crucial method for obtaining
high-resolution data, multi-source data integration has
been widely used in urban temperature estimations.
However, current research predominantly focuses solely
on integrating official weather station observations,
satellite products, and reanalysis datasets. Despite
the significant cooling effect of rainfall on air
temperatures, no studies have explored the contribution
of rainfall-related variables to high-resolution air
temperature estimations. Additionally, due to the
scarcity of official weather stations, quantifying the
impact of station density remains an underexplored
research direction. To tackle these challenges, we
innovatively integrated satellite products, reanalysis
datasets, and weather radar data with air temperature
observations from crowdsourced weather stations. Using
genetic programming, we developed statistical
downscaling models to estimate high spatiotemporal
resolution (1-km, hourly) air temperatures in London
during the summers of 2019 and 2022. The models
achieved RMSEs of 1.694 degreeC (2019) and 1.785
degreeC (2022), R-squared values of 0.867 and 0.862,
and MAEs of 1.276 degreeC and 1.278 degreeC,
respectively. Notably, the accuracy of the models was
found to improve with increased weather station
density, particularly when the density was below 0.5
stations per 100 km2. Moreover, high-resolution
rainfall observations significantly impacted the
accuracy of air temperature estimations, second only to
elevation, highlighting the potential of integrating
radar data. These findings can provide valuable
insights for scholars aiming to improve data
integration for enhancing urban air temperature
estimations",
- }
Genetic Programming entries for
Zitong Wen
Lu Zhuo
Meiling Gao
Dawei Han
Citations