Predictive Modeling of soil salinity integrating remote sensing and soil variables: An ensembled deep learning approach

被引:0
|
作者
Arshad, Sana [1 ]
Kazmi, Jamil Hasan [2 ]
Harsanyi, Endre [3 ,4 ]
Nazli, Farheen [5 ]
Hassan, Waseem [6 ]
Shaikh, Saima [2 ]
Al-Dalahmeh, Main [7 ]
Mohammed, Safwan [3 ,4 ]
机构
[1] Islamia Univ Bahawalpur, Dept Geog, Bahawalpur 63100, Pakistan
[2] Univ Karachi, Dept Geog, Karachi 75270, Pakistan
[3] Univ Debrecen, Inst Land Use Tech & Prec Technol, Fac Agr & Food Sci & Environm Management, H-4032 Debrecen, Hungary
[4] Univ Debrecen, Inst Agr Res & Educ Farm, Boszormenyi 138, H-4032 Debrecen, Hungary
[5] Islamia Univ Bahawalpur, Inst Agro Ind & Environm, Bahawalpur 63100, Pakistan
[6] Soil & Water Testing Lab Res Bahawalpur, Bahawalpur 63100, Pakistan
[7] AL Ahliyya Amman Univ, Hourani Ctr Appl Sci Res, Amman, Jordan
来源
ENERGY NEXUS | 2025年 / 17卷
关键词
Electrical conductivity; Canopy response salinity index; Feed forward neural network; Pakistan; MANAGING SALINITY; INDUS BASIN; SALINIZATION; AGRICULTURE; XINJIANG; PAKISTAN; QUALITY; REGION;
D O I
10.1016/j.nexus.2025.100374
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Accurate predictions of soil salinity can significantly contribute to achieving the UN- Sustainable Development Goal (SDG-2) of ensuring 'zero hunger.' From this perspective, the current research aimed to predict soil electrical conductivity (EC) from remote sensing and soil data using advanced deep learning (DL) architectures. A total of 109 soil samples were analyzed for agricultural land use in the Middle Indus Basin of Pakistan. Seven salinity indices (SI-1 to SI-7) were derived from the 10m to 20m wavelength bands of Sentinel-2, along with vegetation and topographic covariates. Initially, Recursive Feature Elimination was implemented as a featureselection method to select the most effective predictors. Subsequently, deep learning architectures, including a Feedforward Neural Network (FFNN), Recurrent Neural Network (RNN), and Long Short-Term Memory (LSTM), were employed to predict soil salinity. Research findings showed that EC ranged between 0.57dS/m to 11.5 dS/m in the study area. The evaluation metrics of the DL models revealed that a simple FFNN with three fully connected dense layers achieved the highest R2 = 0.88 for model training. However, the ensemble of improved FFNN and LSTM outperformed with the highest R2 and NSE = 0.84, and the lowest RMSE and MAE = 1.38 and 1.01, respectively, on the testing dataset. Optimized deep learning architectures with adjustments to the learning rate, dropout rate, and activation functions achieved the highest prediction accuracy with the lowest validation loss. Finally, SHapely Additive exPlanations (SHAP) revealed that elevation, pH, NDVI, SI-1, and SI-7 had highly significant impacts on EC predictions. This research provides insight into implementing advanced and interpretable DL architectures, supporting informed decision-making by agricultural stakeholders.
引用
收藏
页数:22
相关论文
共 50 条
  • [31] Impact of Soil Salinity on Soil Dielectric Constant and Soil Moisture Retrieval From Active Microwave Remote Sensing
    Gao, Liang
    Song, Xiao-Ning
    Leng, Pei
    Ma, Jian-Wei
    Zhu, Xin-Ming
    Hu, Rong-Hai
    Wang, Yan-Fen
    Zhang, Ya-Nan
    Yin, De-Wei
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [32] A fine digital soil mapping by integrating remote sensing-based process model and deep learning method in Northeast China
    Bao, Yilin
    Yao, Fengmei
    Meng, Xiangtian
    Wang, Jingwen
    Liu, Huanjun
    Wang, Yihao
    Liu, Qi
    Zhang, Jiahua
    Mouazen, Abdul Mounem
    SOIL & TILLAGE RESEARCH, 2024, 238
  • [33] Integrating Remote Sensing and Weather Variables for Mango Yield Prediction Using a Machine Learning Approach
    Torgbor, Benjamin Adjah
    Rahman, Muhammad Moshiur
    Brinkhoff, James
    Sinha, Priyakant
    Robson, Andrew
    REMOTE SENSING, 2023, 15 (12)
  • [34] Estimating soil moisture using remote sensing data: A machine learning approach
    Ahmad, Sajjad
    Kalra, Ajay
    Stephen, Haroon
    ADVANCES IN WATER RESOURCES, 2010, 33 (01) : 69 - 80
  • [35] Integrating Remote Sensing and Landscape Characteristics to Estimate Soil Salinity Using Machine Learning Methods: A Case Study from Southern Xinjiang, China
    Wang, Nan
    Xue, Jie
    Peng, Jie
    Biswas, Asim
    He, Yong
    Shi, Zhou
    REMOTE SENSING, 2020, 12 (24) : 1 - 21
  • [36] A comprehensive review of soil organic carbon estimates: Integrating remote sensing and machine learning technologies
    Li, Tong
    Cui, Lizhen
    Kuhnert, Matthias
    Mclaren, Timothy I.
    Pandey, Rajiv
    Liu, Hongdou
    Wang, Weijin
    Xu, Zhihong
    Xia, Anquan
    Dalal, Ram C.
    Dang, Yash P.
    JOURNAL OF SOILS AND SEDIMENTS, 2024, : 3556 - 3571
  • [37] Soil and satellite remote sensing variables importance using machine learning to predict cotton yield
    Carneiro, Franciele Morlin
    de Brito Filho, Armando Lopes
    Ferreira, Francielle Morelli
    Seben Junior, Getulio de Freitas
    Brandao, Ziany Neiva
    da Silva, Rouverson Pereira
    Shiratsuchi, Luciano Shozo
    SMART AGRICULTURAL TECHNOLOGY, 2023, 5
  • [38] Application of Deep Learning in Land Use Classification for Soil Erosion Using Remote Sensing
    Wan, Lihong
    Li, Shihua
    Chen, Yao
    He, Ze
    Shi, Yanli
    FRONTIERS IN EARTH SCIENCE, 2022, 10
  • [39] Multispectral and Microwave Remote Sensing Models to Survey Soil Moisture and Salinity
    Periasamy, Shoba
    Shanmugam, Ramakrishnan S.
    LAND DEGRADATION & DEVELOPMENT, 2017, 28 (04) : 1412 - 1425
  • [40] SOIL-WATER MODELING AND REMOTE-SENSING
    JACKSON, TJ
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 1986, 24 (01): : 37 - 46