Performance of deep learning in mapping water quality of Lake Simcoe with long-term Landsat archive

被引:56
作者
Guo, Hongwei [1 ]
Tian, Shang [1 ]
Huang, Jinhui Jeanne [1 ]
Zhu, Xiaotong [1 ]
Wang, Bo [1 ]
Zhang, Zijie [1 ]
机构
[1] Nankai Univ, Coll Environm Sci & Engn, Sinocanada Joint R&D Ctr Water & Environm Safety, Tianjin 300457, Peoples R China
关键词
Deep learning; Remote sensing; Water quality; Total phosphorous; Total nitrogen; CHLOROPHYLL-A; VEGETATION INDEX; LEAF-AREA; REMOTE; INLAND; ALGORITHMS; RETRIEVAL; PRODUCTS; PATTERNS; BLOOMS;
D O I
10.1016/j.isprsjprs.2021.11.023
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
Remote sensing provides full-coverage and dynamic water quality monitoring with high efficiency and low consumption. Deep learning (DL) has been progressively used in water quality retrieval because it efficiently captures the potential relationship between target variables and imagery. In this study, the multimodal deep learning (MDL) models were developed and rigorously validated using atmospherically corrected Landsat remote sensing reflectance data and synchronous water quality measurements for estimating long-term Chlorophyll-a (Chl-a), total phosphorus (TP), and total nitrogen (TN) in Lake Simcoe, Canada. Since TP and TN are non optically active, their retrievals were based on the fact that they are closely related to the optically active constituents (OACs) such as Chl-a. We trained the MDL models with one in-situ measured data set (for Chl-a, N = 315, for TP and TN, N = 303), validated the models with two independent data sets (N = 147), and compared the model performances with several DL, machine learning, and empirical algorithms. The results indicated that the MDL models adequately estimated Chl-a (mean absolute error (MAE) = 32.57%, Bias = 10.61%), TP (MAE = 42.58%, Bias =-2.82%), and TN (MAE = 35.05%, Bias = 13.66%), and outperformed several other candidate algorithms, namely the progressively decreasing deep neural network (DNN), a DNN with trainable parameters similar to MDL but without splitting input features, the eXtreme Gradient Boosting, the support vector regression, the NASA Ocean Color two-band and three-band ratio algorithms, and another empirical algorithm of Landsat data in clear lakes. Using the MDL models, we reconstructed the historical spatiotemporal patterns of Chl-a, TP, and TN in Lake Simcoe since 1984, and investigated the effects of two water quality improvement programs. In addition, the physical mechanism and interpretability of the MDL models were explored by quantifying the contribution of each feature to the model outputs. The framework proposed in this study provides a practical method for long-term Chl-a, TP, and TN estimation at the regional scale.
引用
收藏
页码:451 / 469
页数:19
相关论文
共 82 条
[51]   Toward Long-Term Aquatic Science Products from Heritage Landsat Missions [J].
Pahlevan, Nima ;
Balasubramanian, Sundarabalan V. ;
Sarkar, Sudipta ;
Franz, Bryan A. .
REMOTE SENSING, 2018, 10 (09)
[52]   Landsat 8 remote sensing reflectance (Rrs) products: Evaluations, intercomparisons, and enhancements [J].
Pahlevan, Nima ;
Schott, John R. ;
Franz, Bryan A. ;
Zibordi, Giuseppe ;
Markham, Brian ;
Bailey, Sean ;
Schaaf, Crystal B. ;
Ondrusek, Michael ;
Greb, Steven ;
Strait, Christopher M. .
REMOTE SENSING OF ENVIRONMENT, 2017, 190 :289-301
[53]   On-orbit radiometric characterization of OLI (Landsat-8) for applications in aquatic remote sensing [J].
Pahlevan, Nima ;
Lee, Zhongping ;
Wei, Jianwei ;
Schaaf, Crystal B. ;
Schott, John R. ;
Berk, Alexander .
REMOTE SENSING OF ENVIRONMENT, 2014, 154 :272-284
[54]   Remote sensing of inland waters: Challenges, progress and future directions [J].
Palmer, Stephanie C. J. ;
Kutser, Tiit ;
Hunter, Peter D. .
REMOTE SENSING OF ENVIRONMENT, 2015, 157 :1-8
[55]  
Paszke A, 2019, ADV NEUR IN, V32
[56]   Deep learning-based water quality estimation and anomaly detection using Landsat-8/Sentinel-2 virtual constellation and cloud computing [J].
Peterson, Kyle T. ;
Sagan, Vasit ;
Sloan, John J. .
GISCIENCE & REMOTE SENSING, 2020, 57 (04) :510-525
[57]   Water-Quality Classification of Inland Lakes Using Landsat8 Images by Convolutional Neural Networks [J].
Pu, Fangling ;
Ding, Chujiang ;
Chao, Zeyi ;
Yu, Yue ;
Xu, Xin .
REMOTE SENSING, 2019, 11 (14)
[58]   Deep Multimodal Learning A survey on recent advances and trends [J].
Ramachandram, Dhanesh ;
Taylor, Graham W. .
IEEE SIGNAL PROCESSING MAGAZINE, 2017, 34 (06) :96-108
[59]   Deep learning and process understanding for data-driven Earth system science [J].
Reichstein, Markus ;
Camps-Valls, Gustau ;
Stevens, Bjorn ;
Jung, Martin ;
Denzler, Joachim ;
Carvalhais, Nuno ;
Prabhat .
NATURE, 2019, 566 (7743) :195-204
[60]  
RITCHIE JC, 1976, PHOTOGRAMM ENG REM S, V42, P1539