高光谱成像
遥感
环境科学
水质
污染
鉴定(生物学)
多光谱图像
有色溶解有机物
化学
地理
生态学
生物
植物
浮游植物
有机化学
营养物
作者
Xiaolan Cai,Luyao Wu,Yunmei Li,Shaohua Lei,Jie Xu,Heng Lyu,Junda Li,Huaijing Wang,Xianzhang Dong,Yuxing Zhu,Gaolun Wang
标识
DOI:10.1016/j.jhazmat.2023.132080
摘要
Owing to accelerated urbanisation, increased pollutants have degraded urban water quality. Timely identification and control of pollution sources enable relevant departments to effectively perform water treatment and restoration. To achieve this goal, a remote sensing identification method for urban water pollution sources applicable to unmanned aerial vehicle (UAV) hyperspectral images was established. First, seven fluorescent components were obtained through three-dimensional excitation-emission matrix fluorescence spectroscopy of dissolved organic matter (DOM) combined with parallel factor analysis. Based on the hierarchical cluster analysis of the seven fluorescence components and three spectral indices, four pollution source (PS) types were determined, namely, domestic sewage, terrestrial input, agricultural and algal, and industrial wastewater sources. Second, several water colour and optical parameters, including the absorption coefficient of chromophoric DOM at 254 nm, humification index, chlorophyll-a concentration, and hue angle, were utilised to develop an identification method with a recognition accuracy exceeding 70% for the four PSs that is suitable for UAV hyperspectral data. This study demonstrated the potential of identifying PSs by combining the fluorescence characteristics of DOM with the optical properties of water, thus expanding the application of remote sensing technologies and providing more comprehensive and reliable information for urban water quality management.
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