Retrieval of TP Concentration from UAV Multispectral Images Using IOA-ML Models in Small Inland Waterbodies

被引:7
作者
Hu, Wentong [1 ]
Liu, Jie [1 ]
Wang, He [1 ]
Miao, Donghao [1 ]
Shao, Dongguo [1 ]
Gu, Wenquan [1 ]
机构
[1] Wuhan Univ, State Key Lab Water Resources & Hydropower Engn Sc, Wuhan 430072, Peoples R China
基金
中国国家自然科学基金;
关键词
TP retrieval; IOA-ML models; UAV multispectral images; spatial distribution; WATER-QUALITY; PHOSPHORUS CONCENTRATIONS; TRANSFERABILITY; REGRESSION; RESERVOIR; TAIHU; BAY;
D O I
10.3390/rs15051250
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Total phosphorus (TP) concentration is high in countless small inland waterbodies in Hubei province, middle China, which is threating the water environment. However, there are almost no ground-based water quality monitoring points in small inland waterbodies, because the cost of time, labor, and money is high and it does not meet the needs of spatiotemporal dynamic monitoring. Remote sensing provides an effective tool for TP concentration monitoring spatiotemporally. However, monitoring the TP concentration of small inland waterbodies is challenging for satellite remote sensing due to the inadequate spatial resolution. Recently, unmanned aerial vehicles (UAV) have been applied to quantitatively retrieve the spatiotemporal distribution of TP concentration without the challenges of cloud cover and atmospheric effects. Although state-of-the-art algorithms to retrieve TP concentration have been improved, specific models are only used for specific water quality parameters or regions, and there are no robust and reliable TP retrieval models for small inland waterbodies at this time. To address this issue, six machine learning methods optimized by intelligent optimization algorithms (IOA-ML models) have been developed to quantitatively retrieve TP concentration combined with the reflectance of original bands and selected band combinations of UAV multispectral images. We evaluated the performances of models in terms of coefficient of determination (R-2), root mean squared error (RMSE), and residual prediction deviation (RPD). The results showed that the R-2 of the six IOA-ML models for training, validation, and test sets were 0.8856-0.984, 0.8054-0.8929, and 0.7462-0.9045, respectively, indicating the methods had high precision and transferability. The extreme gradient boosting optimized by genetic algorithm (GA-XGB) performed best, with the highest precision for the validation and test sets. The spatial distribution of TP concentration of each flight derived from different models had similar distribution characteristics. This paper provides a reference for promoting the intelligent and automatic level of water environment monitoring in small inland waterbodies.
引用
收藏
页数:18
相关论文
共 48 条
[1]   Modeling Water Quality Parameters Using Landsat Multispectral Images: A Case Study of Erlong Lake, Northeast China [J].
Al-Shaibah, Bazel ;
Liu, Xingpeng ;
Zhang, Jiquan ;
Tong, Zhijun ;
Zhang, Mingxi ;
El-Zeiny, Ahmed ;
Faichia, Cheechouyang ;
Hussain, Muhammad ;
Tayyab, Muhammad .
REMOTE SENSING, 2021, 13 (09)
[2]   Semisupervised PSO-SVM regression for biophysical parameter estimation [J].
Bazi, Yakoub ;
Melgani, Farid .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2007, 45 (06) :1887-1895
[3]   Estimation of Maize Foliar Temperature and Stomatal Conductance as Indicators of Water Stress Based on Optical and Thermal Imagery Acquired Using an Unmanned Aerial Vehicle (UAV) Platform [J].
Brewer, Kiara ;
Clulow, Alistair ;
Sibanda, Mbulisi ;
Gokool, Shaeden ;
Odindi, John ;
Mutanga, Onisimo ;
Naiken, Vivek ;
Chimonyo, Vimbayi G. P. ;
Mabhaudhi, Tafadzwanashe .
DRONES, 2022, 6 (07)
[4]   A machine learning approach to estimate chlorophyll-a from Landsat-8 measurements in inland lakes [J].
Cao, Zhigang ;
Ma, Ronghua ;
Duan, Hongtao ;
Pahlevan, Nima ;
Melack, John ;
Shen, Ming ;
Xue, Kun .
REMOTE SENSING OF ENVIRONMENT, 2020, 248
[5]   Near-infrared reflectance spectroscopy-principal components regression analyses of soil properties [J].
Chang, CW ;
Laird, DA ;
Mausbach, MJ ;
Hurburgh, CR .
SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 2001, 65 (02) :480-490
[6]   Exploring spatiotemporal patterns of phosphorus concentrations in a coastal bay with MODIS images and machine learning models [J].
Chang, Ni-Bin ;
Xuan, Zhemin ;
Yang, Y. Jeffrey .
REMOTE SENSING OF ENVIRONMENT, 2013, 134 :100-110
[7]   A review of remote sensing applications for water security: Quantity, quality, and extremes [J].
Chawla, Ila ;
Karthikeyan, L. ;
Mishra, Ashok K. .
JOURNAL OF HYDROLOGY, 2020, 585
[8]   Machine learning-based inversion of water quality parameters in typical reach of the urban river by UAV multispectral data [J].
Chen, Botao ;
Mu, Xi ;
Chen, Peng ;
Wang, Biao ;
Choi, Jaewan ;
Park, Honglyun ;
Xu, Sheng ;
Wu, Yanlan ;
Yang, Hui .
ECOLOGICAL INDICATORS, 2021, 133
[9]   XGBoost: A Scalable Tree Boosting System [J].
Chen, Tianqi ;
Guestrin, Carlos .
KDD'16: PROCEEDINGS OF THE 22ND ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2016, :785-794
[10]  
Du Cheng-gong, 2016, Huanjing Kexue, V37, P862