Elsevier

Urban Climate

Volume 35, January 2021, 100739
Urban Climate

Mapping urban temperature using crowd-sensing data and machine learning

https://doi.org/10.1016/j.uclim.2020.100739Get rights and content
Under a Creative Commons license
open access

Highlights

  • Uses citizen weather stations for mapping urban temperature at high resolution.

  • Uses quantile regression forest algorithm for prediction.

  • Shows that this approach achieves a high predictive accuracy.

  • Shows how uncertainty of predictions can be assessed in a spatially explicit way.

Abstract

Understanding the patterns of urban temperature a high spatial and temporal resolution is of large importance for urban heat adaptation and mitigation. Machine learning offers promising tools for high-resolution modeling of urban heat, but it requires large amounts of data. Measurements from official weather stations are too sparse but could be complemented by crowd-sensed measurements from citizen weather stations (CWS). Here we present an approach to model urban temperature using the quantile regression forest algorithm and CWS, open government and remote sensing data. The analysis is based on data from 691 sensors in the city of Zurich (Switzerland) during a heat wave using data from for 25-30th June 2019. We trained the model using hourly data from for 25-29th June (n = 71,837) and evaluate the model using data from June 30th (n = 14,105). Based on the model, spatiotemporal temperature maps of 10 × 10 m resolution were produced. We demonstrate that our approach can accurately map urban heat at high spatial and temporal resolution without additional measurement infrastructure. We furthermore critically discuss and spatially map estimated prediction and extrapolation uncertainty. Our approach is able to inform highly localized urban policy and decision-making.

Keywords

Random forest
Urban heat
Low-cost sensors
Crowd-sensing
Machine learning

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