Estimating properties of a homogeneous bounded soil using machine learning models
Estimating properties of a homogeneous bounded soil using machine learning models
This work focuses on estimating soil properties from water moisture measurements. We consider simulated data generated by solving the initial-boundary value problem governing vertical infiltration in a homogeneous, bounded soil profile, with the usage of the Fokas method. To address the parameter identification problem, which is formulated as a two-output regression task, we explore various machine learning models. The performance of each model is assessed under different data conditions: full, noisy, and limited. Overall, the prediction of diffusivity $D$ tends to be more accurate than that of hydraulic conductivity $K.$ Among the models considered, Support Vector Machines (SVMs) and Neural Networks (NNs) demonstrate the highest robustness, achieving near-perfect accuracy and minimal errors.
Konstantinos Kalimeris、Leonidas Mindrinos、Nikolaos Pallikarakis
水利工程基础科学
Konstantinos Kalimeris,Leonidas Mindrinos,Nikolaos Pallikarakis.Estimating properties of a homogeneous bounded soil using machine learning models[EB/OL].(2025-06-02)[2025-06-21].https://arxiv.org/abs/2506.04256.点此复制
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