Inversion of Different Cultivated Soil Types’ Salinity Using Hyperspectral Data and Machine Learning

Research output: Contribution to journalArticleResearchpeer review

Authors

  • Pingping Jia
  • Junhua Zhang
  • Wei He
  • Ding Yuan
  • Yi Hu
  • Kazem Zamanian
  • Keli Jia
  • Xiaoning Zhao

Research Organisations

External Research Organisations

  • Nanjing University of Information Science and Technology
  • Ningxia University
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Details

Original languageEnglish
Article number5639
JournalRemote sensing
Volume14
Issue number22
Publication statusPublished - 8 Nov 2022

Abstract

Soil salinization is one of the main causes of global desertification and soil degradation. Although previous studies have investigated the hyperspectral inversion of soil salinity using machine learning, only a few have been based on soil types. Moreover, agricultural fields can be improved based on the accurate estimation of the soil salinity, according to the soil type. We collected field data relating to six salinized soils, Haplic Solonchaks (HSK), Stagnic Solonchaks (SSK), Calcic Sonlonchaks (CSK), Fluvic Solonchaks (FSK), Haplic Sonlontzs (HSN), and Takyr Solonetzs (TSN), in the Hetao Plain of the upper reaches of the Yellow River, and measured the in situ hyperspectral, pH, and electrical conductivity (EC) values of a total of 231 soil samples. The two-dimensional spectral index, topographic factors, climate factors, and soil texture were considered. Several models were used for the inversion of the saline soil types: partial least squares regression (PLSR), random forest (RF), extremely randomized trees (ERT), and ridge regression (RR). The spectral curves of the six salinized soil types were similar, but their reflectance sizes were different. The degree of salinization did not change according to the spectral reflectance of the soil types, and the related properties were inconsistent. The Pearson’s correlation coefficient (PCC) between the two-dimensional spectral index and the EC was much greater than that between the reflectance and EC in the original band. In the two-dimensional index, the PCC of the HSK-NDI was the largest (0.97), whereas in the original band, the PCC of the SSK400 nm was the largest (0.70). The two-dimensional spectral index (NDI, RI, and DI) and the characteristic bands were the most selected variables in the six salinized soil types, based on the variable projection importance analysis (VIP). The best inversion model for the HSK and FSK was the RF, whereas the best inversion model for the CSK, SSK, HSN, and TSN was the ERT, and the CSK-ERT had the best performance (R2 = 0.99, RMSE = 0.18, and RPIQ = 6.38). This study provides a reference for distinguishing various salinization types using hyperspectral reflectance and provides a foundation for the accurate monitoring of salinized soil via multispectral remote sensing.

Keywords

    Hetao Plain, salinization, soil degradation, soil electrical conductivity, soil quality, variable projection importance

ASJC Scopus subject areas

Cite this

Inversion of Different Cultivated Soil Types’ Salinity Using Hyperspectral Data and Machine Learning. / Jia, Pingping; Zhang, Junhua; He, Wei et al.
In: Remote sensing, Vol. 14, No. 22, 5639, 08.11.2022.

Research output: Contribution to journalArticleResearchpeer review

Jia P, Zhang J, He W, Yuan D, Hu Y, Zamanian K et al. Inversion of Different Cultivated Soil Types’ Salinity Using Hyperspectral Data and Machine Learning. Remote sensing. 2022 Nov 8;14(22):5639. doi: 10.3390/rs14225639
Jia, Pingping ; Zhang, Junhua ; He, Wei et al. / Inversion of Different Cultivated Soil Types’ Salinity Using Hyperspectral Data and Machine Learning. In: Remote sensing. 2022 ; Vol. 14, No. 22.
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@article{b02aaa1266574617a3d9072dec413730,
title = "Inversion of Different Cultivated Soil Types{\textquoteright} Salinity Using Hyperspectral Data and Machine Learning",
abstract = "Soil salinization is one of the main causes of global desertification and soil degradation. Although previous studies have investigated the hyperspectral inversion of soil salinity using machine learning, only a few have been based on soil types. Moreover, agricultural fields can be improved based on the accurate estimation of the soil salinity, according to the soil type. We collected field data relating to six salinized soils, Haplic Solonchaks (HSK), Stagnic Solonchaks (SSK), Calcic Sonlonchaks (CSK), Fluvic Solonchaks (FSK), Haplic Sonlontzs (HSN), and Takyr Solonetzs (TSN), in the Hetao Plain of the upper reaches of the Yellow River, and measured the in situ hyperspectral, pH, and electrical conductivity (EC) values of a total of 231 soil samples. The two-dimensional spectral index, topographic factors, climate factors, and soil texture were considered. Several models were used for the inversion of the saline soil types: partial least squares regression (PLSR), random forest (RF), extremely randomized trees (ERT), and ridge regression (RR). The spectral curves of the six salinized soil types were similar, but their reflectance sizes were different. The degree of salinization did not change according to the spectral reflectance of the soil types, and the related properties were inconsistent. The Pearson{\textquoteright}s correlation coefficient (PCC) between the two-dimensional spectral index and the EC was much greater than that between the reflectance and EC in the original band. In the two-dimensional index, the PCC of the HSK-NDI was the largest (0.97), whereas in the original band, the PCC of the SSK400 nm was the largest (0.70). The two-dimensional spectral index (NDI, RI, and DI) and the characteristic bands were the most selected variables in the six salinized soil types, based on the variable projection importance analysis (VIP). The best inversion model for the HSK and FSK was the RF, whereas the best inversion model for the CSK, SSK, HSN, and TSN was the ERT, and the CSK-ERT had the best performance (R2 = 0.99, RMSE = 0.18, and RPIQ = 6.38). This study provides a reference for distinguishing various salinization types using hyperspectral reflectance and provides a foundation for the accurate monitoring of salinized soil via multispectral remote sensing.",
keywords = "Hetao Plain, salinization, soil degradation, soil electrical conductivity, soil quality, variable projection importance",
author = "Pingping Jia and Junhua Zhang and Wei He and Ding Yuan and Yi Hu and Kazem Zamanian and Keli Jia and Xiaoning Zhao",
note = "Funding Information: This work was supported by the National Natural Science Foundation of China (Grant numbers 41877109; 42050410320; 42067003; 42061047); the Jiangsu Specially-Appointed Professor Project, China (Grant number R2020T29); the Key R&D Project of Ningxia, China (Grant number 2021BEG03002); the National Key R&D Program of China (Grant number 2021YFD1900602); and the Open Fund of Tsinghua University-Ningxia Yinchuan Joint Research Institute of Water Networking and Digital Water Control (SKLHSE–2022–IOW11).",
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month = nov,
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doi = "10.3390/rs14225639",
language = "English",
volume = "14",
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Download

TY - JOUR

T1 - Inversion of Different Cultivated Soil Types’ Salinity Using Hyperspectral Data and Machine Learning

AU - Jia, Pingping

AU - Zhang, Junhua

AU - He, Wei

AU - Yuan, Ding

AU - Hu, Yi

AU - Zamanian, Kazem

AU - Jia, Keli

AU - Zhao, Xiaoning

N1 - Funding Information: This work was supported by the National Natural Science Foundation of China (Grant numbers 41877109; 42050410320; 42067003; 42061047); the Jiangsu Specially-Appointed Professor Project, China (Grant number R2020T29); the Key R&D Project of Ningxia, China (Grant number 2021BEG03002); the National Key R&D Program of China (Grant number 2021YFD1900602); and the Open Fund of Tsinghua University-Ningxia Yinchuan Joint Research Institute of Water Networking and Digital Water Control (SKLHSE–2022–IOW11).

PY - 2022/11/8

Y1 - 2022/11/8

N2 - Soil salinization is one of the main causes of global desertification and soil degradation. Although previous studies have investigated the hyperspectral inversion of soil salinity using machine learning, only a few have been based on soil types. Moreover, agricultural fields can be improved based on the accurate estimation of the soil salinity, according to the soil type. We collected field data relating to six salinized soils, Haplic Solonchaks (HSK), Stagnic Solonchaks (SSK), Calcic Sonlonchaks (CSK), Fluvic Solonchaks (FSK), Haplic Sonlontzs (HSN), and Takyr Solonetzs (TSN), in the Hetao Plain of the upper reaches of the Yellow River, and measured the in situ hyperspectral, pH, and electrical conductivity (EC) values of a total of 231 soil samples. The two-dimensional spectral index, topographic factors, climate factors, and soil texture were considered. Several models were used for the inversion of the saline soil types: partial least squares regression (PLSR), random forest (RF), extremely randomized trees (ERT), and ridge regression (RR). The spectral curves of the six salinized soil types were similar, but their reflectance sizes were different. The degree of salinization did not change according to the spectral reflectance of the soil types, and the related properties were inconsistent. The Pearson’s correlation coefficient (PCC) between the two-dimensional spectral index and the EC was much greater than that between the reflectance and EC in the original band. In the two-dimensional index, the PCC of the HSK-NDI was the largest (0.97), whereas in the original band, the PCC of the SSK400 nm was the largest (0.70). The two-dimensional spectral index (NDI, RI, and DI) and the characteristic bands were the most selected variables in the six salinized soil types, based on the variable projection importance analysis (VIP). The best inversion model for the HSK and FSK was the RF, whereas the best inversion model for the CSK, SSK, HSN, and TSN was the ERT, and the CSK-ERT had the best performance (R2 = 0.99, RMSE = 0.18, and RPIQ = 6.38). This study provides a reference for distinguishing various salinization types using hyperspectral reflectance and provides a foundation for the accurate monitoring of salinized soil via multispectral remote sensing.

AB - Soil salinization is one of the main causes of global desertification and soil degradation. Although previous studies have investigated the hyperspectral inversion of soil salinity using machine learning, only a few have been based on soil types. Moreover, agricultural fields can be improved based on the accurate estimation of the soil salinity, according to the soil type. We collected field data relating to six salinized soils, Haplic Solonchaks (HSK), Stagnic Solonchaks (SSK), Calcic Sonlonchaks (CSK), Fluvic Solonchaks (FSK), Haplic Sonlontzs (HSN), and Takyr Solonetzs (TSN), in the Hetao Plain of the upper reaches of the Yellow River, and measured the in situ hyperspectral, pH, and electrical conductivity (EC) values of a total of 231 soil samples. The two-dimensional spectral index, topographic factors, climate factors, and soil texture were considered. Several models were used for the inversion of the saline soil types: partial least squares regression (PLSR), random forest (RF), extremely randomized trees (ERT), and ridge regression (RR). The spectral curves of the six salinized soil types were similar, but their reflectance sizes were different. The degree of salinization did not change according to the spectral reflectance of the soil types, and the related properties were inconsistent. The Pearson’s correlation coefficient (PCC) between the two-dimensional spectral index and the EC was much greater than that between the reflectance and EC in the original band. In the two-dimensional index, the PCC of the HSK-NDI was the largest (0.97), whereas in the original band, the PCC of the SSK400 nm was the largest (0.70). The two-dimensional spectral index (NDI, RI, and DI) and the characteristic bands were the most selected variables in the six salinized soil types, based on the variable projection importance analysis (VIP). The best inversion model for the HSK and FSK was the RF, whereas the best inversion model for the CSK, SSK, HSN, and TSN was the ERT, and the CSK-ERT had the best performance (R2 = 0.99, RMSE = 0.18, and RPIQ = 6.38). This study provides a reference for distinguishing various salinization types using hyperspectral reflectance and provides a foundation for the accurate monitoring of salinized soil via multispectral remote sensing.

KW - Hetao Plain

KW - salinization

KW - soil degradation

KW - soil electrical conductivity

KW - soil quality

KW - variable projection importance

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U2 - 10.3390/rs14225639

DO - 10.3390/rs14225639

M3 - Article

AN - SCOPUS:85142728328

VL - 14

JO - Remote sensing

JF - Remote sensing

SN - 2072-4292

IS - 22

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ER -

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