NUCLEAR TECHNIQUES, Volume. 48, Issue 6, 060302(2025)
Machine learning-based prediction of cation distribution coefficients in bentonite
The distribution coefficient (Kd) of radionuclides on bentonite is one of the key parameters in the safety assessment of geological repositories for high-level radioactive waste.
This study aims to reliably predict the Kd values of various radioactive cations in bentonite based on machine learning (ML) models.
Based on the Japan Atomic Energy Agency's adsorption database (JAEA-SDB), 1 240 sets of Kd data of 10 nuclides (Am, Bi, Cm, Cs, Eu, Ni, Pb, Po, Ra, U) in bentonite were collected, and 9 input factors were selected to construct six ML models including random forest (RF) and support vector regression (SVR). The robustness of the ML models was evaluated by Monte Carlo cross-validation (MCCV).
The validation results indicate that the RF model is the most effective in predicting Kd, achieving a determination coefficient (R2) of 0.902 9 on the training set and 0.728 6 on the test set. Moreover, the RF model accurately reproduce the probability density distribution characteristics of Kd, and pH, initial concentration, ionic strength, and temperature are the main factors affecting Kd.
Results of this study demonstrate that ML methods, especially the RF model, can rapidly and reliably predict the Kd of multiple radionuclides on bentonite under complex conditions, offering a promising new approach for the safety assessment of radioactive waste disposal repositories.
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Xin YANG, Kunming ZHANG, Tao CHEN. Machine learning-based prediction of cation distribution coefficients in bentonite[J]. NUCLEAR TECHNIQUES, 2025, 48(6): 060302
Category: NUCLEAR CHEMISTRY, RADIOCHEMISTRY, RADIOPHARMACEUTICALS AND NUCLEAR MEDICINE
Received: Oct. 29, 2024
Accepted: --
Published Online: Jul. 25, 2025
The Author Email: Tao CHEN (陈涛)