Suspended Sediment Concentration Estimation from Landsat Imagery along the Lower Missouri and Middle Mississippi Rivers Using an Extreme Learning Machine

被引:103
作者
Peterson, Kyle T. [1 ]
Sagan, Vasit [1 ]
Sidike, Paheding [1 ]
Cox, Amanda L. [2 ]
Martinez, Megan [2 ]
机构
[1] St Louis Univ, Dept Earth & Atmospher Sci, St Louis, MO 63108 USA
[2] St Louis Univ, Dept Civil Engn, Pk Coll Engn Aviat & Technol, St Louis, MO 63108 USA
关键词
machine learning; water quality; suspended sediment; Landsat; extreme learning machine; PARTICULATE MATTER CONCENTRATIONS; WATER-QUALITY; NEURAL-NETWORK; ETM PLUS; LAKE; RETRIEVAL; MODIS; BAY; TURBIDITY; SELECTION;
D O I
10.3390/rs10101503
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Monitoring and quantifying suspended sediment concentration (SSC) along major fluvial systems such as the Missouri and Mississippi Rivers provide crucial information for biological processes, hydraulic infrastructure, and navigation. Traditional monitoring based on in situ measurements lack the spatial coverage necessary for detailed analysis. This study developed a method for quantifying SSC based on Landsat imagery and corresponding SSC data obtained from United States Geological Survey monitoring stations from 1982 to present. The presented methodology first uses feature fusion based on canonical correlation analysis to extract pertinent spectral information, and then trains a predictive reflectance-SSC model using a feed-forward neural network (FFNN), a cascade forward neural network (CFNN), and an extreme learning machine (ELM). The trained models are then used to predict SSC along the Missouri-Mississippi River system. Results demonstrated that the ELM-based technique generated R-2 > 0.9 for Landsat 4-5, Landsat 7, and Landsat 8 sensors and accurately predicted both relatively high and low SSC displaying little to no overfitting. The ELM model was then applied to Landsat images producing quantitative SSC maps. This study demonstrates the benefit of ELM over traditional modeling methods for the prediction of SSC based on satellite data and its potential to improve sediment transport and monitoring along large fluvial systems.
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页数:17
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