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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Time series decomposition of remotely sensed land surface temperature and investigation of trends and seasonal variations in surface urban heat islands
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Time series decomposition of remotely sensed land surface temperature and investigation of trends and seasonal variations in surface urban heat islands

机译:遥感地表温度的时间序列分解以及地表城市热岛的趋势和季节变化研究

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Previous time seriesmethods have difficulties in simultaneous characterization of seasonal, gradual, and abrupt changes of remotely sensed land surface temperature (LST). This study proposed a model to decompose LST time series into trend, seasonal, and noise components. The trend component indicates long-term climate change and land development and is described as a piecewise linear function with iterative breakpoint detection. The seasonal component illustrates annual insolation variations and is modeled as a sinusoidal function on the detrended data. This model is able to separate the seasonal variation in LST from the long-term (including gradual and abrupt) change. Model application to nighttime Moderate Resolution Imaging Spectroradiometer (MODIS)/LST time series during 2000–2012 over Beijing yielded an overall root-mean-square error of 1.62 K between the combination of the decomposed trend and seasonal components and the actual MODIS/LSTs. LST decreased (~ -0.086 K/yr, p<0.1) in 53% of the study area, whereas it increased with breakpoints in 2009 (~0.084 K/yr before and ~0.245 K/yr after 2009) between the fifth and sixth ring roads. The decreasing trend was stronger over croplands than over urban lands (p<0.05), resulting in an increasing trend in surface urban heat island intensity (SUHII, 0.022 ± 0.006 K/yr). This was mainly attributed to the trends in urban-rural differences in rainfall and albedo. The SUHII demonstrated a concave seasonal variation primarily due to the seasonal variations of urban-rural differences in temperature cooling rate (related to canyon structure, vegetation, and soil moisture) and surface heat dissipation (affected by humidity and wind).
机译:以前的时间序列方法很难同时表征遥感地表温度(LST)的季节性,渐变和突变。这项研究提出了一个模型,将LST时间序列分解为趋势,季节和噪声成分。趋势分量表示长期的气候变化和土地开发,并被描述为带有迭代断点检测的分段线性函数。季节成分说明了每年的日照变化,并在趋势数据上建模为正弦函数。该模型能够将LST的季节性变化与长期(包括逐渐的和突变的)变化区分开。 2000年至2012年北京夜间适中分辨率成像光谱仪(MODIS)/ LST时间序列的模型应用得出,分解趋势和季节分量与实际MODIS / LST的组合之间的均方根误差为1.62K。在53%的研究区域中,LST降低了(〜-0.086 K / yr,p <0.1),而在2009年的第五至第六年间,LST随断点而增加(2009年之前为〜0.084 K / yr,2009年之后为〜0.245 K / yr)环路。耕地的下降趋势要强于城市土地(p <0.05),导致城市地表热岛强度上升趋势(SUHII,0.022±0.006 K / yr)。这主要归因于城乡降水和反照率差异的趋势。 SUHII表现出凹的季节性变化,这主要是由于城乡温度降温速率(与峡谷结构,植被和土壤湿度有关)和地表散热(受湿度和风影响)差异的季节变化所致。

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