Publications

Guo, XQ; Du, HL; Zhan, WF; Ji, YY; Wang, CG; Wang, CL; Ge, S; Wang, SS; Li, JF; Jiang, SD; Wang, DZ; Liu, ZH; Chen, YS; Li, JR (2025). Global patterns and determinants of year-to-year variations in surface urban heat islands. ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 223, 399-412.

Abstract
Investigations on year-to-year variations in surface urban heat island intensity (Delta I-s, the change in urban heat island intensity between consecutive years) are crucial for capturing the dynamics of urban climates at mid-term scales. While the patterns and underlying drivers of I-s have been extensively studied, their year-to-year variability remains poorly understood, especially across global cities. Using MODIS land surface temperature observations from March 2003 to February 2024, here we examined the spatiotemporal patterns of Delta I-s across 1,642 cities worldwide, by removing the interannual component from yearly I-s observations. We also analyzed the impacts from various background climate and urban surface property factors on these patterns. Additionally, we simulated the Delta I-s by integrating the advanced Light Gradient Boosting Machine (LightGBM) model with various controlling factors. Our analysis yielded three key findings: (1) The global mean absolute Delta I-s (i.e., Delta I-s_mean) was 0.30 +/- 0.02 K (mean +/- S.D.) during the day and 0.18 +/- 0.01 K at night, accounting for approximately 19.40 % and 13.57 % of overall I-s observations. Spatially, both daytime and nighttime Delta I-s_mean were notably higher in snow climates compared to equatorial, arid, and warm climates. (2) In terms of controlling factors, global daytime Delta I-s_mean showed strong negative correlations with year-to-year variations in both urban-rural EVI contrast (r = -0.69, p < 0.01) and background surface air temperature (r = -0.62, p < 0.01). By comparison, these correlations became less significant at night. (3) The LightGBM model demonstrated high accuracy in estimating the Delta I-s across global cities, with r values exceeding 0.96 and MAE values below 0.09 K for both daytime and nighttime. These findings are critical for enriching our understanding of urban heat island patterns at multiple temporal scales. They also provide an efficient approach for identifying abrupt urban climate changes due to extreme climate events or anthropogenic activities.

DOI:
10.1016/j.isprsjprs.2025.03.019

ISSN:
1872-8235