AI Article Synopsis

  • Significant urbanization has led to the creation of surface urban heat islands (SUHIs), which negatively affect urban ecology and resident comfort, necessitating effective monitoring and mitigation strategies.
  • The study classifies global cities into five SUHI grades using agglomerative hierarchical clustering and quantifies various factors influencing these grades through machine learning techniques.
  • Key findings reveal that climate significantly influences SUHI grades, with vegetation playing a major role during the day, while nighttime conditions are more affected by factors like albedo differences and artificial light.

Article Abstract

Significant urbanization resulted in increasing surface urban heat island (SUHI) that caused negative impacts on urban ecological environment, and residential comfort. Accurately monitoring the spatiotemporal variations and understanding controls of SUHI were essential to propose effective mitigation measurements. However, SUHI grades across global cities remained unknown, which cloud greatly support for global mitigations. Additionally, quantitative evaluating factor weights for different SUHI indicators and grades worldwide remained further investigations. Therefore, this paper proposed SUHI grading based on agglomerative hierarchical clustering, and further quantified factor weights for different indicators and grades based on an interoperable machine learning named TabNet. There were three major findings. (1) Global cities were grouped into five grades, including SUCI (surface urban cool island), insignificant, low-value, medium-value, and high-value SUHI grades, indicating significant differences among different grades. SUHI grades showed significant climate-based variations, wherein the arid climate was dominated by the SUCI grade at daytime but the high-value grade at nighttime. (2) Vegetation difference was an important factor for daytime SUHII accounting for 27%. Daytime frequency of SUHI was controlled by vegetation difference, temperature, evaporation and nighttime light, accounting for 78%. The major factors for nighttime frequency were albedo differences and nighttime light, accounting for 45%. (3) Related factors contributed differently to various SUHI grades. The weight of △EVI for daytime SUHII gradually increased with grades, while it for daytime frequency and maximum duration of SUHI decreased with grades. The nighttime SUHII of the low-value grade was greatly affected by the background climate, while that of the medium-value and high-value grades were strongly impacted by anthropogenic heat flux. The diurnal contrast of grades and coupling effects with heat wave were further discussed. This paper aimed to provide information on grades and controls of SUHI for further mitigation proposal.

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Source
http://dx.doi.org/10.1016/j.envint.2023.108196DOI Listing

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Article Synopsis
  • Significant urbanization has led to the creation of surface urban heat islands (SUHIs), which negatively affect urban ecology and resident comfort, necessitating effective monitoring and mitigation strategies.
  • The study classifies global cities into five SUHI grades using agglomerative hierarchical clustering and quantifies various factors influencing these grades through machine learning techniques.
  • Key findings reveal that climate significantly influences SUHI grades, with vegetation playing a major role during the day, while nighttime conditions are more affected by factors like albedo differences and artificial light.
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