A Deep Learning Approach for Meter-Scale Air Quality Estimation in Urban Environments Using Very High-Spatial-Resolution Satellite Imagery.

IF 2.5 4区 地球科学 Q3 ENVIRONMENTAL SCIENCES
Atmosphere Pub Date : 2022-04-27 DOI:10.3390/atmos13050696
Meytar Sorek-Hamer, Michael von Pohle, Adwait Sahasrabhojanee, Ata Akbari Asanjan, Emily Deardorff, Esra Suel, Violet Lingenfelter, Kamalika Das, Nikunj Oza, Majid Ezzati, Michael Brauer
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引用次数: 0

Abstract

High-spatial-resolution air quality (AQ) mapping is important for identifying pollution sources to facilitate local action. Some of the most populated cities in the world are not equipped with the infrastructure required to monitor AQ levels on the ground and must rely on other sources, like satellite derived estimates, to monitor AQ. Current satellite-data-based models provide AQ mapping on a kilometer scale at best. In this study we focus on producing hundred-meter-scale AQ maps for urban environments in developed cities. We examined the feasibility of an image-based object-detection analysis approach using very high-spatial-resolution (2.5 m) commercial satellite imagery. We fed the satellite imagery to a deep neural network (DNN) to learn the association between visual urban features and air pollutants. The developed model, which solely uses satellite imagery, was tested and evaluated using both ground monitoring observations and land-use regression modeled PM2.5 and NO2 concentrations over London, Vancouver (BC), Los Angeles, and New York City. The results demonstrate a low error with a total RMSE < 2 µg/m3 and highlight the contribution of specific urban features, such as green areas and roads, to continuous hundred-meter-scale AQ estimation. This approach offers promise for scaling to global applications in developed and developing urban environments. Further analysis on domain transferability will enable application of a parsimonious model based merely on satellite images to create hundred-meter-scale AQ maps in developing cities, where current and historical ground data is limited.

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Abstract Image

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一种利用超高空间分辨率卫星图像进行城市环境米尺度空气质量估计的深度学习方法。
高空间分辨率空气质量(AQ)制图对于识别污染源以促进地方行动非常重要。世界上一些人口最多的城市没有配备监测地面AQ水平所需的基础设施,必须依靠卫星估算等其他来源来监测AQ。目前基于卫星数据的模型最多提供公里尺度的AQ地图。在这项研究中,我们专注于为发达城市的城市环境制作百米尺度的AQ地图。我们研究了使用非常高的空间分辨率(2.5米)商业卫星图像的基于图像的物体检测分析方法的可行性。我们将卫星图像输入到深度神经网络(DNN)中,以了解视觉城市特征与空气污染物之间的关联。开发的模型仅使用卫星图像,使用地面监测观测和土地利用回归模型对伦敦、温哥华、洛杉矶和纽约市的PM2.5和NO2浓度进行了测试和评估。结果表明,总均方根误差小于2µg/m3的误差很低,并突出了特定城市特征(如绿地和道路)对连续百米尺度AQ估计的贡献。这种方法有望在发达和发展中的城市环境中扩展到全球应用。对领域可转移性的进一步分析将使仅基于卫星图像的简约模型能够在当前和历史地面数据有限的发展中城市中应用,以创建百米尺度的AQ地图。
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来源期刊
Atmosphere
Atmosphere METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
4.60
自引率
13.80%
发文量
1769
审稿时长
1 months
期刊介绍: Atmosphere (ISSN 2073-4433) is an international and cross-disciplinary scholarly journal of scientific studies related to the atmosphere. It publishes reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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