High-Resolution Aerosol Optical Depth Retrieval in Urban Areas Based on Sentinel-2

Yunping Chen, Yue Yang, Lei Hou, Kangzhuo Yang, J. Yu, Yuan Sun
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引用次数: 1

Abstract

In this paper, an improved aerosol optical depth (AOD ) retrieval algorithm is proposed based on Sentinel-2 and AErosol RObotic NETwork (AERONET ) data. The surface reflectance for AOD retrieval was estimated from the image that had minimal aerosol contamination in a temporal window determined by AERONET data. Validation of the Sentinel-2 AOD retrievals was conducted against four Aerosol Robotic Network (AERONET ) sites located in Beijing. The results show that the Sentinel-2 AOD retrievals are highly consistent with the AERONET AOD measurements (R = 0.942), with 85.56% falling within the expected error. The mean absolute error and the root-mean-square error are 0.0688 and 0.0882, respectively. In addition, the AOD distribution map obtained by this algorithm well reflects the fine-spatial-resolution changes in AOD distribution. These results suggest that the improved high-resolution AOD retrieval algorithm is robust and has the potential advantage of retrieving high-resolution AOD over urban areas.
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基于Sentinel-2的城市地区高分辨率气溶胶光学深度反演
本文提出了一种基于Sentinel-2和气溶胶机器人网络(AERONET)数据的改进气溶胶光学深度(AOD)检索算法。用于AOD检索的表面反射率是根据AERONET数据确定的时间窗口中气溶胶污染最小的图像估计的。在位于北京的四个气溶胶机器人网络(AERONET)站点上对Sentinel-2 AOD检索结果进行了验证。结果表明,Sentinel-2 AOD反演结果与AERONET AOD测量值高度吻合(R = 0.942), 85.56%的反演结果在预期误差范围内。平均绝对误差为0.0688,均方根误差为0.0882。此外,该算法得到的AOD分布图较好地反映了AOD分布的精细空间分辨率变化。这些结果表明,改进的高分辨率AOD检索算法具有鲁棒性,在城市地区高分辨率AOD检索中具有潜在优势。
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