Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China

Soil salinization, one of the most severe global land degradation problems, leads to the loss of arable land and declines in crop yields. Monitoring the distribution of salinized soil and degree of salinization is critical for management, remediation, and utilization of salinized soil; however, ther...

Full description

Bibliographic Details
Main Authors: Nan Wang, Jie Xue, Jie Peng, Asim Biswas, Yong He, Zhou Shi
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/24/4118
id doaj-3a7038a15abf4d1d84ae9d4b137f7a2e
record_format Article
spelling doaj-3a7038a15abf4d1d84ae9d4b137f7a2e2020-12-17T00:05:09ZengMDPI AGRemote Sensing2072-42922020-12-01124118411810.3390/rs12244118Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, ChinaNan Wang0Jie Xue1Jie Peng2Asim Biswas3Yong He4Zhou Shi5Institute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University, Hangzhou 310058, ChinaInstitute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University, Hangzhou 310058, ChinaCollege of Plant Science, Tarim University, Alar 843300, ChinaSchool of Environmental Sciences, University of Guelph, Guelph, ON N1G2W1, CanadaCollege of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, ChinaInstitute of Agricultural Remote Sensing and Information Technology Application, College of Environmental and Resource Sciences, Zhejiang University, Hangzhou 310058, ChinaSoil salinization, one of the most severe global land degradation problems, leads to the loss of arable land and declines in crop yields. Monitoring the distribution of salinized soil and degree of salinization is critical for management, remediation, and utilization of salinized soil; however, there is a lack of thorough assessment of various data sources including remote sensing and landscape characteristics for estimating soil salinity in arid and semi-arid areas. The overall goal of this study was to develop a framework for estimating soil salinity in diverse landscapes by fusing information from satellite images, landscape characteristics, and appropriate machine learning models. To explore the spatial distribution of soil salinity in southern Xinjiang, China, as a case study, we obtained 151 soil samples in a field campaign, which were analyzed in laboratory for soil electrical conductivity. A total of 35 indices including remote sensing classifiers (11), terrain attributes (3), vegetation spectral indices (8), and salinity spectral indices (13) were calculated or derived and correlated with soil salinity. Nine were used to model and estimate soil salinity using four predictive modelling approaches: partial least squares regression (PLSR), convolutional neural network (CNN), support vector machine (SVM) learning, and random forest (RF). Testing datasets were divided into vegetation-covered and bare soil samples and were used for accuracy assessment. The RF model was the best regression model in this study, with <i>R<sup>2</sup></i> = 0.75, and was most effective in revealing the spatial characteristics of salt distribution. Importance analysis and path modeling of independent variables indicated that environmental factors and soil salinity indices including digital elevation model (DEM), B10, and green atmospherically resistant vegetation index (GARI) showed the strongest contribution in soil salinity estimation. This showed a great promise in the measurement and monitoring of soil salinity in arid and semi-arid areas from the integration of remote sensing, landscape characteristics, and using machine learning model.https://www.mdpi.com/2072-4292/12/24/4118soil salinityremote sensingmachine learningpredictive mapping
collection DOAJ
language English
format Article
sources DOAJ
author Nan Wang
Jie Xue
Jie Peng
Asim Biswas
Yong He
Zhou Shi
spellingShingle Nan Wang
Jie Xue
Jie Peng
Asim Biswas
Yong He
Zhou Shi
Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
Remote Sensing
soil salinity
remote sensing
machine learning
predictive mapping
author_facet Nan Wang
Jie Xue
Jie Peng
Asim Biswas
Yong He
Zhou Shi
author_sort Nan Wang
title Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
title_short Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
title_full Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
title_fullStr Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
title_full_unstemmed Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
title_sort integrating remote sensing and landscape characteristics to estimate soil salinity using machine learning methods: a case study from southern xinjiang, china
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-12-01
description Soil salinization, one of the most severe global land degradation problems, leads to the loss of arable land and declines in crop yields. Monitoring the distribution of salinized soil and degree of salinization is critical for management, remediation, and utilization of salinized soil; however, there is a lack of thorough assessment of various data sources including remote sensing and landscape characteristics for estimating soil salinity in arid and semi-arid areas. The overall goal of this study was to develop a framework for estimating soil salinity in diverse landscapes by fusing information from satellite images, landscape characteristics, and appropriate machine learning models. To explore the spatial distribution of soil salinity in southern Xinjiang, China, as a case study, we obtained 151 soil samples in a field campaign, which were analyzed in laboratory for soil electrical conductivity. A total of 35 indices including remote sensing classifiers (11), terrain attributes (3), vegetation spectral indices (8), and salinity spectral indices (13) were calculated or derived and correlated with soil salinity. Nine were used to model and estimate soil salinity using four predictive modelling approaches: partial least squares regression (PLSR), convolutional neural network (CNN), support vector machine (SVM) learning, and random forest (RF). Testing datasets were divided into vegetation-covered and bare soil samples and were used for accuracy assessment. The RF model was the best regression model in this study, with <i>R<sup>2</sup></i> = 0.75, and was most effective in revealing the spatial characteristics of salt distribution. Importance analysis and path modeling of independent variables indicated that environmental factors and soil salinity indices including digital elevation model (DEM), B10, and green atmospherically resistant vegetation index (GARI) showed the strongest contribution in soil salinity estimation. This showed a great promise in the measurement and monitoring of soil salinity in arid and semi-arid areas from the integration of remote sensing, landscape characteristics, and using machine learning model.
topic soil salinity
remote sensing
machine learning
predictive mapping
url https://www.mdpi.com/2072-4292/12/24/4118
work_keys_str_mv AT nanwang integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
AT jiexue integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
AT jiepeng integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
AT asimbiswas integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
AT yonghe integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
AT zhoushi integratingremotesensingandlandscapecharacteristicstoestimatesoilsalinityusingmachinelearningmethodsacasestudyfromsouthernxinjiangchina
_version_ 1724380657020305408