Predicting Long-term Urban Overheating and Their Mitigations from Nature Based Solutions Using Machine Learning and Field Measurements
Jiwei Zou, Lin Wang, Senwen Yang, Michael Lacasse, Liangzhu (Leon), Wang

TL;DR
This study combines field measurements and machine learning to predict urban overheating in Ottawa, emphasizing the importance of urban greening in mitigating heat under future climate scenarios.
Contribution
It introduces a novel integration of field data with advanced machine learning models to forecast long-term urban overheating and assess greening strategies.
Findings
LSTM achieved the best prediction accuracy among models.
Urban greening significantly reduces extreme heat conditions.
Climate change increases thermal stress across all greening levels.
Abstract
Urban overheating, exacerbated by climate change, threatens public health and urban sustainability. Traditional approaches, such as numerical simulations and field measurements, face challenges due to uncertainties in input data. This study integrates field measurements with machine learning models to predict the duration and severity of future urban overheating events, focusing on the role of urban greening under different global warming (GW) scenarios. Field measurements were conducted in summer 2024 at an office campus in Ottawa, a cold-climate city. Microclimate data were collected from four locations with varying levels of greenery: a large lawn without trees (Lawn), a parking lot without greenery (Parking), an area with sparsely distributed trees (Tree), and a fully covered forested area (Forest). Machine learning models, including Artificial Neural Networks (ANN), Recurrent…
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Taxonomy
TopicsUrban Heat Island Mitigation · Plant Water Relations and Carbon Dynamics · Urban Green Space and Health
