4.7 Article

Monitoring of Urban Black-Odor Water Based on Nemerow Index and Gradient Boosting Decision Tree Regression Using UAV-Borne Hyperspectral Imagery

期刊

REMOTE SENSING
卷 11, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/rs11202402

关键词

unmanned aerial vehicle; hyperspectral imagery; Nemerow index; gradient boosting decision tree; urban water; black-odor water

资金

  1. National Key Research and Development Program of China [2017YFB0504202]
  2. National Natural Science Foundation of China [41622107]
  3. Special projects for technological innovation in Hubei [2018ABA078]
  4. Open Fund of Key Laboratory of Ministry of Education for Spatial Data Mining and Information Sharing [2018LSDMIS05]
  5. Open Fund of the State Laboratory of Information Engineering in Surveying, Mapping, and Remote Sensing, Wuhan University [18R02]
  6. Open fund of Key Laboratory of Agricultural Remote Sensing of the Ministry of Agriculture [20170007]
  7. central government guides local science and technology development projects(Ecological Remote Sensing Monitoring and Wetland Restoration in the Yangtze River Basin)

向作者/读者索取更多资源

The formation of black-odor water in urban rivers has a long history. It not only seriously affects the image of the city, but also easily breeds germs and damages the urban habitat. The prevention and treatment of urban black-odor water have long been important topics nationwide. Action Plan for Prevention and Control of Water Pollution issued by the State Council shows Chinese government's high attention to this issue. However, treatment and monitoring are inextricably linked. There are few studies on the large-scale monitoring of black-odor water, especially the cases of using unmanned aerial vehicle (UAV) to efficiently and accurately monitor the spatial distribution of urban river pollution. Therefore, in order to get rid of the limitations of traditional ground sampling to evaluate the point source pollution of rivers, the UAV-borne hyperspectral imagery was applied in this paper. It is hoped to grasp the pollution status of the entire river as soon as possible from the surface. However, the retrieval of multiple water quality parameters will lead to cumulative errors, so the Nemerow comprehensive pollution index (NCPI) is introduced to characterize the pollution level of urban water. In the paper, the retrieval results of six regression models including gradient boosting decision tree regression (GBDTR) were compared, trying to find a regression model for the retrieval NCPI in the current scenario. In the first study area, the retrieval accuracy of the training dataset (adjusted_R-2 = 0.978), and test dataset (adjusted_R-2 = 0.974) was higher than that of the other regression models. Although the retrieval effect of random forest is similar to that of GBDTR in both training accuracy and image inversion, it is more computationally expensive. Finally, the spatial distribution graphs of NCPI and its technical feasibility in monitoring pollution sources were investigated, in combination with field observations.

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