The Use of Spectral Indices to Estimate Soil Surface Moisture using Machine Learning Algorithms

Message:
Article Type:
Research/Original Article (دارای رتبه معتبر)
Abstract:

Detailed information about soil moisture and its spatial and temporal distribution provides opportunity for optimized land resources utilization. Our study aimed to estimate soil surface moisture through readily availabile soil parameters and spectral index obtained from Sentinel-2 sensors using two methods, artificial neural networks (ANN) and support vector regression (SVM). There were 124 soil samples collected from three regions of Iran (Tehran, Garmsar, and Lorestan). After normalizing the data, the significance of the correlation between input variables (spectral indices and basic soil properties) and output variables (surface moisture) was evaluated statistically. In the next step, the mentioned methods were used to perform a modeling process, and the results were evaluated. The results showed that the ANN method outperformed the SVM method. Based on ANN technique, the Root Mean Square Error (RMSE), Akaike Information Criterion (AIC), coefficient of determination (R2) and Relative Improvement (RI) in the training step were 0.033, -538, 0.71, 21.25, and in the testing step they were 0.410, -266, 0.69, and 16.06, respectively. Also, RMSE, AIC, R2, and RI in the SVM method in training step were respectively 0.035, -474, 0.71, and 35.16 and in testing step were respectively 0.046, 252, 0.63, and 20.21. Using the ANN method, soil color index (CI) has been shown to estimate soil moisture more accurately than other spectral indices. Therefore, the ANN method constructs a nonlinear relationship between soil surface moisture and input parameters, which enables soil moisture to be estimated with acceptable accuracy in the study area.

Language:
Persian
Published:
Iranian Journal of Soil and Water Research, Volume:52 Issue: 12, 2022
Pages:
3001 to 3018
https://www.magiran.com/p2433083  
سامانه نویسندگان
  • Shabanpour، Mahmoud
    Corresponding Author (2)
    Shabanpour, Mahmoud
    Associate Professor گروه خاکشناسی, University of Guilan, رشت, Iran
  • Bayat، Hossein
    Author (5)
    Bayat, Hossein
    Associate Professor Bu-Ali Sina University, Hamedan, Iran, Bu-Ali Sina University, همدان, Iran
اطلاعات نویسنده(گان) توسط ایشان ثبت و تکمیل شده‌است. برای مشاهده مشخصات و فهرست همه مطالب، صفحه رزومه را ببینید.
مقالات دیگری از این نویسنده (گان)