Monitoring multi-water quality of internationally important karst wetland through deep learning, multi-sensor and multi-platform remote sensing images: A case study of Guilin, China

被引:22
|
作者
Yang, Wenlan [1 ]
Fu, Bolin [1 ]
Li, Sunzhe [1 ]
Lao, Zhinan [1 ]
Deng, Tengfang [1 ]
He, Wen [2 ]
He, Hongchang [1 ]
Chen, Zhikun [3 ]
机构
[1] Guilin Univ Technol, Coll Geomat & Geoinformat, Guilin 541004, Peoples R China
[2] Guangxi Zhuang Autonomous Reg & Chinese Acad Sci, Guangxi Key Lab Plant Conservat & Restorat Ecol K, Guangxi Inst Bot, Guilin 541006, Peoples R China
[3] Beibu Gulf Univ, Coll Resource & Environm, Qinzhou 535000, Peoples R China
关键词
Karst wetlands; Water quality parameters; Model inversion; Deep learning and machine learning; UAV and satellite platform; Multispectral and hyperspectral images; DISSOLVED ORGANIC-MATTER; CHLOROPHYLL-A; ECOSYSTEM SERVICES; LANDSAT; ALGORITHMS; INDICATORS; TURBIDITY; IMPACT;
D O I
10.1016/j.ecolind.2023.110755
中图分类号
X176 [生物多样性保护];
学科分类号
090705 ;
摘要
Karst wetlands are widely distributed throughout the southwest China, and play an important role in enhancing carbon sequestration and improving water quality in karst areas. The internationally important karst wetland of Huixian is the largest karst wetland in China, but its water quality has continued to deteriorate as a result of human influences in recent years. Remote sensing technology has become an important approach to estimate water quality parameters (WQPs). However, the feasibility of combining multi-sensor remote sensing images with deep learning to estimate different WQPs in karst wetlands has not been demonstrated yet. To resolve this issue, this study constructed multiple retrieval models of WQPs (Chlorophyll-a (Chla), Phycocyanin (PC), Turbidity (Turb), Dissolved Oxygen (DO)) in karst wetlands using deep learning (Transformer and Mixture Density Network (MDN)) and optimized shallow machine learning (Random Forest (RF), XGBoost (XGB) and Gradient Boosting (GB)) based on multi-sensor images from satellite and UAV platforms. The performance of deep learning in the inversion of WQPs demonstrated to compare with shallow machine learning using multi-spectral and hyperspectral images. We further quantitatively evaluated the retrieval performance of UAV and satellite, multispectral and hyperspectral images, and presented predictive mapping of the gradient distribution of WQPs. Finally, this study adopted the SHapley Additive exPlanations (SHAP) to tackle the local and global interpretability of the input features contribution to the output of retrieval models. The results showed that (1) Transformer model presented a good prediction of PC and DO (R-2 = 0.649 -0.844), XGB and GB models achieved the highest accuracy estimation of Chla and Turb (R-2 = 0.75). (2) The estimation results of WQPs based on UAV platform (R-2 = 0.419 -0.695) was higher than that of satellite-based images. The estimation accuracy of multispectral images (R-2 = 0.338 -0.718) was slightly higher than that of Zhuhai-1 Orbita hyperspectral (OHS) images. The average accuracy of Turb estimated by UAV images (R-2 = 0.565 -0.752) was higher than that of satellite-based images. OHS hyperspectral images had the best DO estimation (R-2 = 0.314 -0.649). (3) This study found 32.66% and 23.01% of water area with the Chla and Turb concentrations exceeding 60 mu g/L and 60 NTU, respectively, which revealed that the Huixian karst wetland has suffered serious water pollution. (4) The SHAP analysis reveals that near infra-red and red band are sensitive to predict Chla and DO, red and red-edge bands are sensitive to predict PC and Turb in the karst wetland.
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页数:16
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