2024
DOI: 10.3390/math12182940
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A Spacetime RBF-Based DNNs for Solving Unsaturated Flow Problems

Chih-Yu Liu,
Cheng-Yu Ku,
Wei-Da Chen

Abstract: This study presents a novel approach for modeling unsaturated flow using deep neural networks (DNNs) integrated with spacetime radial basis functions (RBFs). Traditional methods for simulating unsaturated flow often face challenges in computational efficiency and accuracy, particularly when dealing with nonlinear soil properties and complex boundary conditions. Our proposed model emphasizes the capabilities of DNNs in identifying complex patterns and the accuracy of spacetime RBFs in modeling spatiotemporal da… Show more

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