Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments

Remotely sensed data from both in situ and satellite platforms in visible, near-infrared, and shortwave infrared (VNIR–SWIR, 400–2500 nm) regions have been widely used to characterize and model soil properties in a direct, cost-effective, and rapid manner at different scales. In this study, we asses...

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Main Authors: Iman Salehi Hikouei, S. Sonny Kim, Deepak R. Mishra
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/13/4408
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spelling doaj-9db0bf338210449bb3a7e19d3666c57f2021-07-15T15:45:23ZengMDPI AGSensors1424-82202021-06-01214408440810.3390/s21134408Machine-Learning Classification of Soil Bulk Density in Salt Marsh EnvironmentsIman Salehi Hikouei0S. Sonny Kim1Deepak R. Mishra2Appalachian Laboratory, University of Maryland Center for Environmental Science, Frostburg, MD 21532, USACollege of Engineering, University of Georgia, Athens, GA 30602, USADepartment of Geography, University of Georgia, Athens, GA 30602, USARemotely sensed data from both in situ and satellite platforms in visible, near-infrared, and shortwave infrared (VNIR–SWIR, 400–2500 nm) regions have been widely used to characterize and model soil properties in a direct, cost-effective, and rapid manner at different scales. In this study, we assess the performance of machine-learning algorithms including random forest (RF), extreme gradient boosting machines (XGBoost), and support vector machines (SVM) to model salt marsh soil bulk density using multispectral remote-sensing data from the Landsat-7 Enhanced Thematic Mapper Plus (ETM+) platform. To our knowledge, use of remote-sensing data for estimating salt marsh soil bulk density at the vegetation rooting zone has not been investigated before. Our study reveals that blue (band 1; 450–520 nm) and NIR (band 4; 770–900 nm) bands of Landsat-7 ETM+ ranked as the most important spectral features for bulk density prediction by XGBoost and RF, respectively. According to XGBoost, band 1 and band 4 had relative importance of around 41% and 39%, respectively. We tested two soil bulk density classes in order to differentiate salt marshes in terms of their capability to support vegetation that grows in either low (0.032 to 0.752 g/cm<sup>3</sup>) or high (0.752 g/cm<sup>3</sup> to 1.893 g/cm<sup>3</sup>) bulk density areas. XGBoost produced a higher classification accuracy (88%) compared to RF (87%) and SVM (86%), although discrepancies in accuracy between these models were small (<2%). XGBoost correctly classified 178 out of 186 soil samples labeled as low bulk density and 37 out of 62 soil samples labeled as high bulk density. We conclude that remote-sensing-based machine-learning models can be a valuable tool for ecologists and engineers to map the soil bulk density in wetlands to select suitable sites for effective restoration and successful re-establishment practices.https://www.mdpi.com/1424-8220/21/13/4408soil characterizationrandom forestXGBoostmachine learningcoastal wetlandsLandsat-7 (ETM+)
collection DOAJ
language English
format Article
sources DOAJ
author Iman Salehi Hikouei
S. Sonny Kim
Deepak R. Mishra
spellingShingle Iman Salehi Hikouei
S. Sonny Kim
Deepak R. Mishra
Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
Sensors
soil characterization
random forest
XGBoost
machine learning
coastal wetlands
Landsat-7 (ETM+)
author_facet Iman Salehi Hikouei
S. Sonny Kim
Deepak R. Mishra
author_sort Iman Salehi Hikouei
title Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
title_short Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
title_full Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
title_fullStr Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
title_full_unstemmed Machine-Learning Classification of Soil Bulk Density in Salt Marsh Environments
title_sort machine-learning classification of soil bulk density in salt marsh environments
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-06-01
description Remotely sensed data from both in situ and satellite platforms in visible, near-infrared, and shortwave infrared (VNIR–SWIR, 400–2500 nm) regions have been widely used to characterize and model soil properties in a direct, cost-effective, and rapid manner at different scales. In this study, we assess the performance of machine-learning algorithms including random forest (RF), extreme gradient boosting machines (XGBoost), and support vector machines (SVM) to model salt marsh soil bulk density using multispectral remote-sensing data from the Landsat-7 Enhanced Thematic Mapper Plus (ETM+) platform. To our knowledge, use of remote-sensing data for estimating salt marsh soil bulk density at the vegetation rooting zone has not been investigated before. Our study reveals that blue (band 1; 450–520 nm) and NIR (band 4; 770–900 nm) bands of Landsat-7 ETM+ ranked as the most important spectral features for bulk density prediction by XGBoost and RF, respectively. According to XGBoost, band 1 and band 4 had relative importance of around 41% and 39%, respectively. We tested two soil bulk density classes in order to differentiate salt marshes in terms of their capability to support vegetation that grows in either low (0.032 to 0.752 g/cm<sup>3</sup>) or high (0.752 g/cm<sup>3</sup> to 1.893 g/cm<sup>3</sup>) bulk density areas. XGBoost produced a higher classification accuracy (88%) compared to RF (87%) and SVM (86%), although discrepancies in accuracy between these models were small (<2%). XGBoost correctly classified 178 out of 186 soil samples labeled as low bulk density and 37 out of 62 soil samples labeled as high bulk density. We conclude that remote-sensing-based machine-learning models can be a valuable tool for ecologists and engineers to map the soil bulk density in wetlands to select suitable sites for effective restoration and successful re-establishment practices.
topic soil characterization
random forest
XGBoost
machine learning
coastal wetlands
Landsat-7 (ETM+)
url https://www.mdpi.com/1424-8220/21/13/4408
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