日本地球惑星科学連合2025年大会

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[E] 口頭発表

セッション記号 A (大気水圏科学) » A-HW 水文・陸水・地下水学・水環境

[A-HW25] Near Surface Investigation and Modeling for Groundwater Resources Assessment and Conservation

2025年5月25日(日) 15:30 〜 17:00 103 (幕張メッセ国際会議場)

コンビーナ:Tsai Jui-Pin(National Taiwan University, Taiwan)、谷口 真人(総合地球環境学研究所)、Yu Hwa-Lung(Taiwan Society of Groundwater resources and hydrogeology)、徳永 朋祥(東京大学大学院新領域創成科学研究科環境システム学専攻)、Chairperson:CHANG PINGYU(National Central University, Taiwan)、Jui-Pin Tsai(National Taiwan University, Taiwan)、Bo-Tsen Wang(Department of Bioenvironmental Systems Engineering, National Taiwan University)、Ying-Fan Lin(国立交通大学)、Shih-Jung Wang(National Central University)

16:15 〜 16:30

[AHW25-10] Artificial neural networks for the transport of multi-member radionuclide decay chain: A computationally efficient alternative to numerical methods

*Uyen Thi Thu Nguyen1Jui-Sheng Chen1 (1.National Central University )

キーワード:Radionuclide Transport, Artificial Neural Networks (ANNs), Groundwater Contamination

The transport of radionuclides in subsurface environments is governed by complex processes such as advection, dispersion, sorption, and radioactive decay. Traditional numerical methods, including the finite difference method (FDM) and finite element method (FEM), are commonly used to solve the advection-dispersion equation (ADE) for modeling contaminant transport. However, these approaches often require extensive computational resources, especially for large-scale or multi-species systems. In this study, an Artificial Neural Network (ANN) model is developed to predict the transport and decay of radionuclides in groundwater systems. The ANN is trained on a dataset generated from FDM solutions of the ADE, incorporating both parent and daughter species to ensure realistic representation of radioactive decay. Monte Carlo sampling is used to optimize dataset selection, reducing computational cost while maintaining prediction accuracy. The ANN model demonstrates high precision in replicating FDM results, achieving low mean absolute error (MAE) and root mean squared error (RMSE) values across various Peclet numbers (Pe). Additionally, the ANN significantly reduces computational time compared to conventional numerical methods, making it a viable alternative for rapid and accurate simulations of radionuclide transport. These findings highlight the potential of AI-driven models in enhancing environmental risk assessment and decision-making for radioactive waste management.