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Enhancing Soil Moisture Estimation: Exploring the Synergy of Optical Trapezoid and Deep Learning models

Publish Year: 1402
Type: Journal paper
Language: English
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JR_ECOPER-11-3_007

Index date: 22 December 2024

Enhancing Soil Moisture Estimation: Exploring the Synergy of Optical Trapezoid and Deep Learning models abstract

Aims: This study aimed to propose an effective model for estimating soil moisture by integrating the optical trapezoid method with a deep learning Long Short-Term Memory (LSTM) model. The performance of the proposed model was compared with two other methods, i.e., Partial Least Squares (PLS) regression and Group Method of Data Handling (GMDH) multivariate neural network. Materials & Methods: This study combined the optical trapezoid method with deep learning models to propose an effective model for soil moisture estimation in the Maragheh watershed. A total of 499 in-situ soil moisture data were collected. Relative moisture content was calculated using the optical trapezoid method and imported into the LSTM model, along with other inputs such as spectral indices and DEM-based derived variables. The performance of the mentioned models was assessed both with and without the optical trapezoid method to evaluate its efficacy on the performance of AI models. Findings: The results demonstrate that the combined model of deep learning LSTM and the optical trapezoid method achieves satisfactory performance, with an R2 of 0.95 and a RMSE of 1.7%. The PLS and GMDH methods performed moderately, both without the involvement of the optical trapezoid method and in the combined mode. Conclusion: This study shows that the optical trapezoid method can improve the performance of deep-learning models in estimating soil moisture. However, considering the significant difference in computational costs among these models, choosing the appropriate model depends on the user's objectives and desired level of accuracy and precision.

Enhancing Soil Moisture Estimation: Exploring the Synergy of Optical Trapezoid and Deep Learning models Keywords:

Enhancing Soil Moisture Estimation: Exploring the Synergy of Optical Trapezoid and Deep Learning models authors

Golnaz Zuravand

Department of Watershed Management Engineering, Faculty of Natural resources, Tarbiat Modares University, Tehran, Iran.

Vahid Moosavi

Department of Watershed Management Engineering, Faculty of Natural resources, Tarbiat Modares University, Tehran, Iran.

Seyed Rashid Fallah Shamsi

Department of Natural Resource and Environment, Shiraz University, Iran And Visiting Scientist, Institute of Geographical Science and Natural Resources Research-Chinese Academy of Sciences, Beijing, P.R.China

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