Deep learning based regression for optically inactive inland water quality parameter estimation using airborne hyperspectral imagery*

被引:79
|
作者
Niu, Chao [1 ]
Tan, Kun [1 ,2 ]
Jia, Xiuping [3 ]
Wang, Xue [1 ]
机构
[1] East China Normal Univ, Key Lab Geog Informat Sci, Minist Educ, Shanghai 200241, Peoples R China
[2] China Univ Min & Technol, NASG Key Lab Land Environm & Disaster Monitoring, Xuzhou 221116, Jiangsu, Peoples R China
[3] Univ New South Wales, Sch Engn & Informat Technol, Canberra, ACT 2600, Australia
基金
中国国家自然科学基金;
关键词
Optically inactive water quality parameters; Airborne hyperspectral imagery; Deep learning based regression; CHLOROPHYLL-A CONCENTRATION; SUPPORT VECTOR MACHINES; REMOTE ESTIMATION; NEURAL-NETWORKS; IN-SITU; MODEL; RIVER; CLASSIFICATION; PHYTOPLANKTON; ALGORITHMS;
D O I
10.1016/j.envpol.2021.117534
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Airborne hyperspectral remote sensing has the characteristics of high spatial and spectral resolutions, and provides an opportunity for accurate and efficient inland water qauality monitoring. Many studies have focused on evaluating and quantifying the concentrations of the optically active water quality parameters, for parameters such as chlorophyll-a (Chla), cyanobacteria, and colored dissolved organic matter (CDOM). For the optically inactive parameters, such as the permanganate index (CODMn), total nitrogen (TN), total phosphorus (TP), ammoniacal nitrogen (NH3-N), and heavy metals, it is difficult to estimate the concentrations directly, and the traditional indirect estimation models cannot meet the accuracy requirements, especially in heavily polluted inland waters. In this study, 60 water samples were collected at a depth of 50 cm from the Guanhe River in China, at the same time as the airborne data acquisition. We also developed and investigated two deep learning based regression models-a pixel-based deep neural network regression (pixel_DNNR) model and a patch-based deep neural network regression (patch_DNNR) model-to estimate seven optically inactive water quality parameters. Compared with the partial least squares regression (PLSR) and support vector regression (SVR) models, the deep learning based regression models can obtain a superior accuracy, especially the patch_DNNR model, which obtained a superior prediction accuracy for all parameters, with the prediction dataset coefficient of determination (Rp2) and the residual prediction deviation (RPD) values being greater than 0.6 and 1.6, respectively. In addition, thematic maps of the water quality classification results and water parameter concentrations were generated and the overall water quality and pollution sources were analyzed in the study area. The experimental results demonstrate that the deep learning based regression models show a good performance in the feature extraction and image understanding of high-dimensional data, and they provide us with a new approach for optically inactive inland water quality parameter estimation.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Water Quality Measurement and Modelling Based on Deep Learning Techniques: Case Study for the Parameter of Secchi Disk
    Lin, Feng
    Gan, Libo
    Jin, Qiannan
    You, Aiju
    Hua, Lei
    [J]. SENSORS, 2022, 22 (14)
  • [32] Leaf water content determination of oilseed rape using near-infrared hyperspectral imaging with deep learning regression methods
    Zhang, Chu
    Li, Cheng
    He, Mengyu
    Cai, Zeyi
    Feng, Zhongping
    Qi, Hengnian
    Zhou, Lei
    [J]. INFRARED PHYSICS & TECHNOLOGY, 2023, 134
  • [33] Accurate water extraction using remote sensing imagery based on normalized difference water index and unsupervised deep learning
    Li, Junjie
    Meng, Yizhuo
    Li, Yuanxi
    Cui, Qian
    Yang, Xining
    Tao, Chongxin
    Wang, Zhe
    Li, Linyi
    Zhang, Wen
    [J]. Journal of Hydrology, 2022, 612
  • [34] Accurate water extraction using remote sensing imagery based on normalized difference water index and unsupervised deep learning
    Li, Junjie
    Meng, Yizhuo
    Li, Yuanxi
    Cui, Qian
    Yang, Xining
    Tao, Chongxin
    Wang, Zhe
    Li, Linyi
    Zhang, Wen
    [J]. JOURNAL OF HYDROLOGY, 2022, 612
  • [35] Water quality prediction model using Gaussian process regression based on deep learning for carbon neutrality in papermaking wastewater treatment system
    Wan, Xin
    Li, Xiaoyong
    Wang, Xinzhi
    Yi, Xiaohui
    Zhao, Yinzhong
    He, Xinzhong
    Wu, Renren
    Huang, Mingzhi
    [J]. ENVIRONMENTAL RESEARCH, 2022, 211
  • [36] Comprehensive Review on Application of Machine Learning Algorithms for Water Quality Parameter Estimation Using Remote Sensing Data
    Wagle, Nimisha
    Acharya, Tri Dev
    Lee, Dong Ha
    [J]. SENSORS AND MATERIALS, 2020, 32 (11) : 3879 - 3892
  • [37] Prediction of quality in production using optimized Hyper-parameter tuning based deep learning model
    Rajendra Kannammal, G.
    Sivamalar, P.
    Santhi, P.
    Vetriselvi, T.
    Kalpana, V.
    Nithya, T.M.
    [J]. Materials Today: Proceedings, 2022, 69 : 703 - 709
  • [38] Developing deep learning based regression approaches for prediction of firmness and pH in Kyoho grape using Vis/NIR hyperspectral imaging
    Xu, Min
    Sun, Jun
    Yao, Kunshan
    Cai, Qiang
    Shen, Jifeng
    Tian, Yan
    Zhou, Xin
    [J]. INFRARED PHYSICS & TECHNOLOGY, 2022, 120
  • [39] Estimation of Potato Above-Ground Biomass Using UAV-Based Hyperspectral images and Machine-Learning Regression
    Liu, Yang
    Feng, Haikuan
    Yue, Jibo
    Fan, Yiguang
    Jin, Xiuliang
    Zhao, Yu
    Song, Xiaoyu
    Long, Huiling
    Yang, Guijun
    [J]. REMOTE SENSING, 2022, 14 (21)
  • [40] Rapid Vitality Estimation and Prediction of Corn Seeds Based on Spectra and Images Using Deep Learning and Hyperspectral Imaging Techniques
    Pang, Lei
    Men, Sen
    Yan, Lei
    Xiao, Jiang
    [J]. IEEE ACCESS, 2020, 8 : 123026 - 123036