Reconstruction of all-weather land surface temperature based on a combined physical and data-driven model

被引:0
|
作者
Xuepeng Zhang
Peng Gou
Fengjiao Zhang
Yingshuang Huang
Zhe Wang
Guangchao Li
Jianghe Xing
机构
[1] Research Center of Big Data Technology,College of Geoscience and Surveying Engineering
[2] Nanhu Laboratory,School of Urban Planning and Design
[3] Beijing Big Data Advanced Technology Institute,undefined
[4] China University of Mining & Technology,undefined
[5] Peking University Shenzhen Graduate School,undefined
[6] Peking University,undefined
关键词
Land surface temperature ; All weather; Physical model; Data-driven; MODIS;
D O I
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中图分类号
学科分类号
摘要
At present, the remote sensing (RS) thermal infrared (TIR) images that are commonly used to obtain land surface temperature (LST) are contaminated by clouds and thus cannot obtain spatiotemporal integrity of LST. To solve this problem, this study combined a physical model with strong interpretability with a data-driven model with high data adaptability. First, the physical model (Weather Research and Forecast (WRF) model) was used to generate LST source data. Then, combined with multisource RS data, a data-driven method (random forest (RF)) was used to improve the accuracy of the LST, and a model framework for a data-driven auxiliary physical model was formed. Finally, all-weather MODIS-like data with a spatial resolution of 1 km were generated. Beijing, China, was used as the study area. The results showed that in cases of more clouds and fewer clouds, the reconstructed all-weather LST had a high spatial continuity and could restore the spatial distribution details of the LST well. The mean absolute error (MAE), root mean square error (RMSE), and correlation coefficient (ρ) in the case of more (fewer) clouds were ranked as follows: MAE < 1 K (< 2 K), RMSE < 2 K (< 2 K), and ρ > 0.9. The errors obeyed an approximately normal distribution. The total MAE, RMSE, and ρ were 0.80 K, 1.09 K, and 0.94 K, respectively. Generally, the LST reconstructed in this paper had a high accuracy, and the model could provide all-weather MODIS-like LST to compensate for the disadvantages of satellite TIR images (i.e., contamination by clouds and inability to obtain complete LST values).
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页码:78865 / 78878
页数:13
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