中国主要省会城市地表与冠层热岛日内逐时变化特征差异研究
Investigating Diurnal Differences between Surface and Canopy Heat Islands in Major Provincial Capital Cities of China
- 2024年 页码:1-15
网络出版日期: 2024-03-12
DOI: 10.11834/jrs.20243362
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苏博阳,占文凤,杜惠琳,江斯达,王晨光,董攀,王春丽,刘紫涵.XXXX.中国主要省会城市地表与冠层热岛日内逐时变化特征差异研究.遥感学报,XX(XX): 1-15
SU Boyang,ZHAN Wenfeng,DU Huilin,JIANG Sida,WANG Chenguang,DONG Pan,WANG Chunli,LIU Zihan. XXXX. Investigating Diurnal Differences between Surface and Canopy Heat Islands in Major Provincial Capital Cities of China. National Remote Sensing Bulletin, XX(XX):1-15
探究城市地表热岛(Surface urban heat island,
I
s
)和冠层热岛(Canopy layer urban heat island,
I
c
)日内逐时变化特征的差异有助于更好地理解城市热环境在精细时间尺度的垂向空间多层次演变规律。然而,由于城市内部近地表空气温度观测站点分布较为稀疏,并且极轨卫星提供的中高空间分辨率遥感地表温度数据局限于日内特定时刻,这使得前人研究往往聚焦于单个或少数几个城市,从而导致不同气候背景下城市地表与冠层热岛日内逐时变化特征差异尚不明晰。本研究以我国27座省会城市为研究区,基于地表温度日循环(Diurnal Temperature Cycle, DTC)模型对2017-2019年MODIS地表温度产品模拟得到逐时地表温度,利用1544个高密度气象站点的气温资料获取逐时空气温度,探究了地表与冠层热岛强度差值(ΔUHI)的逐时变化曲线的形态特征(含ΔUHI最大值和ΔUHI最小值及对应时刻、ΔUHI大于0 °C的持续时长等)。结果表明:(1)就全国平均而言,ΔUHI日内变化曲线整体呈“山峰”形态,且ΔUHI在日内24个时刻均为正值。具体而言,ΔUHI从08:00开始迅速增大,并于16:00前后达到最大值(1.7 °C),之后逐渐开始下降,其中在日落时刻下降速率最大,并于凌晨02:00达到最小值(0.1 °C),之后基本保持稳定。(2)就不同气候区而言,从南亚热带到中温带,随着城市所属气候区纬度的升高,ΔUHI最大值和最小值逐渐减小,其对应的日内时刻逐渐推迟,且ΔUHI大于0 °C的持续时长也逐渐减小。(3)就不同规模城市而言,随着城市规模的增加,ΔUHI最大值呈现不断减小的趋势,其达到最大值的日内时刻逐渐提前,且ΔUHI大于0 °C的持续时长逐渐增加。本研究明晰了较大地理空间范围下不同气候背景城市的两种热岛逐时变化特征差异,研究结果有助于增进对精细时间尺度下城市热岛垂向空间特征的深入认知。
Investigations into the diurnal evolution differences between surface urban heat islands and canopy urban heat islands (termed
I
s
and
I
c
respectively) hold significant values in enhancing our comprehension of the vertical structure of urban climates at a fine time-scale. However
both the hourly surface air temperature (
T
a
) from densely distributed weather stations within cities and the hourly land surface temperature (
T
s
) that possesses a relatively high spatial resolution and that can be employed for monitoring thermal conditions of urban surfaces are largely absent. Previous studies comparing hourly
I
s
and
I
c
have mostly focused on individual cities. In this study
we utilize hourly
T
a
measurements from high-density meteorological stations (1544 stations) and
T
s
observations derived from a diurnal temperature cycle (DTC) model to examine the hourly
I
s
I
c
and the associated hourly differences (quantified as ΔUHI
calculated by subtracting
I
s
from
I
c
) over 27 Chinese megalopolises. Furthermore
we analyze the hourly patterns of ΔUHI (e.g.
maximum ΔUHI
minimum ΔUHI
and duration of ΔUHI
>
0) across cities with different climate backgrounds and city sizes. We obtain the following findings: (1) At the national scale
the annual mean ΔUHI remains positive throughout the diurnal cycle. The hourly ΔUHI pattern generally exhibits a peak shape
with the ΔUHI increasing from morning and reaching its maximum (1.7 °C) at around 4:00 PM. Subsequently
it gradually decreases and reaches its daily minimum (0.1 °C) at around 2:00 AM
with the most rapid decline occurring around sunset. (2) Across different climate zones
from subtropical to temperate cities
both the maximum and minimum ΔUHIs follow a decreasing trend
the times at which they occur are gradually delayed
and the duration of ΔUHI greater than 0 °C gradually decreases. (3) For cities with different sizes
the variation magnitude of ΔUHI curve generally decreases and the time of minimum ΔUHI advances as city size increases. The duration of ΔUHI greater than 0 °C also increases with city size. We consider this study can promote the understanding of the contrasting patterns between hourly differences in surface urban heat islands and canopy urban heat islands across cities with diverse background climates. The research results contribute to a deeper understanding of the vertical spatial characteristics of urban heat islands at a fine time scale.
地表热岛冠层热岛日内逐时变化气候区城市规模热红外遥感
Surface urban heat islandCanopy urban heat islandDiurnal variationClimate zoneCity sizeThermal infrared remote sensing
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