高光谱成像
遥感
有效载荷(计算)
环境科学
图像分辨率
成像光谱仪
桥接(联网)
污染
差分吸收光谱
卫星
气象学
足迹
窄带
水色仪
光谱分辨率
鉴定(生物学)
海洋色
空间分析
计算机科学
可扩展性
作者
Chengzhi Xing,Haochen Peng,Tiliang Zou,Yuhang Song,Cheng Liu
标识
DOI:10.1021/acs.analchem.5c06398
摘要
Accurate localization and quantification of pollution sources are critical for effective air quality management, yet existing monitoring technologies struggle to resolve emission hotspots beneath clouds or bridge the spatial gap between satellite and ground-based observations. Here, we present an unmanned aerial vehicle (UAV)-based hyperspectral imaging system that overcomes these limitations by combining meter-scale spatial resolution and 20-30 min temporal resolution to directly pinpoint and quantify pollutant outfalls from industrial facilities. To address UAV remote sensing challenges─including payload constraints, low spectral signal-to-noise ratios (SNR), surface albedo variability, and turbulent-induced observation shifts─we developed: (1) a lightweight hyperspectral payload optimized for UAV deployment; (2) enhanced SNR module for ground-level pollutant detection; (3) a robust air mass factor correction accounting for surface heterogeneity; (4) stabilized observation angles under atmospheric turbulence. Validation against mobile differential optical absorption spectroscopy (DOAS) demonstrated strong agreement (R = 0.94 for NO2). Unlike satellites, our technology captures subcloud pollution plumes and identifies high-emission facilities, effectively bridging the observational gap between orbital and ground monitoring. This technology will facilitate the refinement of regional emission models, leveraging its strengths in scalability and precise source identification to drive a paradigm shift in pollution control.
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