Temporal remote sensing based soil salinity mapping in Indo-Gangetic plain employing machine-learning techniques

被引:3
|
作者
Kalambukattu, Justin George [1 ]
Johns, Binu [1 ]
Kumar, Suresh [1 ]
Raj, Anu David [1 ]
Ellur, Rajath [1 ]
机构
[1] Govt India, Indian Space Res Org ISRO, Indian Inst Remote Sensing, Dept Space,Agr & Soils Dept, 4 Kalidas Rd, Dehra Dun 248001, India
来源
关键词
Soil salinity; Alluvial plain; Spectral indices; Random Forest; Support vector machine; RATIO VEGETATION INDEX; RANDOM FOREST; REFLECTANCE; PERFORMANCE; XINJIANG; COLOR;
D O I
10.1007/s43538-023-00157-x
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Soil salinization is one of the most active land degradation processes, affecting predominantly arid, semi-arid, and dry sub-humid regions and leading to decreased agricultural yields. The Indo-Gangetic plain, which includes the irrigated command areas with arid and semi-arid climatic conditions are severely affected by secondary soil salinization. Assessing the spatial and temporal extent as well as the severity of salinization is an important step for adoption of proper reclamation measures to boost agricultural productivity in the salt affected areas. The study was conducted with this background to evaluate the extent and severity of soil salinization in alluvial plains of Mathura district of Uttar Pradesh, India. In this study, the satellite data of 6 months from January 2019 to June 2019 were pre-processed and various spectral indices were generated in Google Earth Engine. Remote sensing techniques provides an ideal platform for addressing this problem at larger scales and thus we employed Sentinel-2 derived vegetation and salinity spectral indices for distinguishing temporal change in severity of soil salinization and map the salinity as a function of these indices for the entire study area. The time series salinity analysis showed that among the various spectral indices Ratio Vegetation Index (RVI), Normalized Difference Vegetation Index (NDVI) and Normalized Difference Soil Index (NDSI) had a clear differentiation between slight, moderate and severe salinity class in the first three months of the study period and the Salinity Index II (SI_II) could differentiate for the first four months. Further, two machine learning algorithms namely Random Forest (RF) and Support Vector Machine (SVM), were used to create soil salinity prediction models making use of the soil Electrical Conductivity (EC) values of 115 ground-sampling sites as the predictand variable and the optimal spectral indices as the predictor variables. Further, we evaluated the prediction ability of different models using 12 and 24 variables combination using R-2 and RMSE values. The prediction accuracy of the RF model was found to be slightly higher than that of the SVM model, and the spatial distribution pattern of soil salinity predicted by the two models were comparable. We concluded that spectral indices combined with machine learning techniques have the potential for low cost reliable spatial and temporal soil salinity distribution mapping for planning and implementation of salinity reclamation measures.
引用
收藏
页码:290 / 305
页数:16
相关论文
共 50 条
  • [21] Soil salinity mapping and hydrological drought indices assessment in arid environments based on remote sensing techniques
    Elhag, Mohamed
    Bahrawi, Jarbou A.
    GEOSCIENTIFIC INSTRUMENTATION METHODS AND DATA SYSTEMS, 2017, 6 (01) : 149 - 158
  • [22] Assessment and prediction of LULCC dynamics in a part of Indo-Gangetic Alluvial Plain (IGAP) using geospatial techniques on multi-temporal Landsat imageries
    Raj Mohan Shilpi
    Arabian Journal of Geosciences, 2022, 15 (11)
  • [23] Remote sensing and machine learning algorithms to predict soil salinity in southern Kazakhstan
    Amirgaliyev, Yedilkhan
    Mukhamediev, Ravil
    Merembayev, Timur
    Kuchin, Yan
    Ataniyazova, Aisulyu
    Omarova, Perizat
    DISCOVER SUSTAINABILITY, 2024, 5 (01):
  • [24] An overview and comparison of machine-learning techniques for classification purposes in digital soil mapping
    Heung, Brandon
    Ho, Hung Chak
    Zhang, Jin
    Knudby, Anders
    Bulmer, Chuck E.
    Schmidt, Margaret G.
    GEODERMA, 2016, 265 : 62 - 77
  • [25] Groundwater Potential Mapping Using Remote Sensing and GIS-Based Machine Learning Techniques
    Lee, Sunmin
    Hyun, Yunjung
    Lee, Saro
    Lee, Moung-Jin
    REMOTE SENSING, 2020, 12 (07)
  • [26] Conservation agriculture practice influences soil organic carbon pools in intensive rice-based systems of the Eastern Indo-Gangetic Plain
    Islam, Md Ariful
    Bell, Richard W.
    Johansen, Chris
    Jahiruddin, M.
    Haque, Md Enamul
    Vance, Wendy
    SOIL USE AND MANAGEMENT, 2022, 38 (02) : 1217 - 1236
  • [27] Effect of conservation tillage and rice-based cropping systems on soil aggregation characteristics and carbon dynamics in Eastern Indo-Gangetic Plain
    Mondal, Surajit
    Naik, Sushanta Kumar
    Haris, A. A.
    Mishra, J. S.
    Mukherjee, Joydeep
    Rao, K. K.
    Bhatt, B. P.
    PADDY AND WATER ENVIRONMENT, 2020, 18 (03) : 573 - 586
  • [28] Effect of conservation tillage and rice-based cropping systems on soil aggregation characteristics and carbon dynamics in Eastern Indo-Gangetic Plain
    Surajit Mondal
    Sushanta Kumar Naik
    A. A. Haris
    J. S. Mishra
    Joydeep Mukherjee
    K. K. Rao
    B. P. Bhatt
    Paddy and Water Environment, 2020, 18 : 573 - 586
  • [29] A novel finer soil strength mapping framework based on machine learning and remote sensing images
    Wang, Ruizhen
    Wan, Siyang
    Chen, Weitao
    Qin, Xuwen
    Zhang, Guo
    Wang, Lizhe
    COMPUTERS & GEOSCIENCES, 2024, 182
  • [30] PRECISION AGRICULTURE BASED ON MACHINE LEARNING AND REMOTE SENSING TECHNIQUES
    Alshaya, Shaya A.
    COMPTES RENDUS DE L ACADEMIE BULGARE DES SCIENCES, 2025, 78 (01): : 101 - 108