Remote sensing-enabled machine learning for river water quality modeling under multidimensional uncertainty

被引:16
|
作者
Rahat, Saiful Haque [1 ]
Steissberg, Todd [2 ]
Chang, Won [3 ]
Chen, Xi [4 ]
Mandavya, Garima [5 ]
Tracy, Jacob [5 ]
Wasti, Asphota [5 ]
Atreya, Gaurav [5 ]
Saki, Shah [6 ]
Bhuiyan, Md Abul Ehsan [7 ]
Ray, Patrick [5 ]
机构
[1] Geosyntec Consultants, 920 SW 6th Ave Suite,600, Portland, OR 97204 USA
[2] US Army Engineer Res & Dev Ctr ERDC, 707 Fourth St, Davis, CA 95616 USA
[3] Univ Cincinnati, Dept Stat, 5516 French Hall,2815,Commons Way, Cincinnati, OH 45221 USA
[4] Univ Cincinnati, Dept Geog, A&S Geog, Braunstein Hall,0131, Cincinnati, OH 45221 USA
[5] Univ Cincinnati, Engn Res Ctr, Dept Chem & Environm Engn, 601, Cincinnati, OH 45221 USA
[6] Univ Connecticut, Dept Civil & Environm Engn, 261 Glenbrook Rd Unit,3037, Storrs, CT 06269 USA
[7] Natl Ocean & Atmospher Adm NOAA, Climate Predict Ctr, College Pk, MD 20742 USA
基金
美国海洋和大气管理局;
关键词
Water quality; Machine learning; Total suspended solid; Remote sensing; TOTAL SUSPENDED-SOLIDS; CLIMATE-CHANGE; LAND-USE; LSTM; TURBIDITY; BAY; SEDIMENT; NETWORK; IMPACT; CHLOROPHYLL;
D O I
10.1016/j.scitotenv.2023.165504
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Two fundamental problems have inhibited progress in the simulation of river water quality under climate (and other) uncertainty: 1) insufficient data, and 2) the inability of existing models to account for the complexity of factors (e.g., hydro-climatic, basin characteristics, land use features) affecting river water quality. To address these concerns this study presents a technique for augmenting limited ground-based observations of water quality variables with remote-sensed surface reflectance data by leveraging a machine learning model capable of accommodating the multidimensionality of water quality influences. Total Suspended Solids (TSS) can serve as a surrogate for chemical and biological pollutants of concern in surface water bodies. Historically, TSS data collection in the United States has been limited to the location of water treatment plants where state or federal agencies conduct regularly-scheduled water sampling. Mathematical models relating riverine TSS concentration to the explanatory factors have therefore been limited and the relationships between climate extremes and water contamination events have not been effectively diagnosed. This paper presents a method to identify these issues by utilizing a Long Short-Term Memory Network (LSTM) model trained on Moderate Resolution Imaging Spectroradiometer (MODIS) satellite reflectance data, which is calibrated to TSS data collected by the Ohio River Valley Water Sanitation Commission (ORSANCO). The methodology developed enables a thorough empirical analysis and data-driven algorithms able to account for spatial variability within the watershed and provide effective water quality prediction under uncertainty.
引用
收藏
页数:13
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