원문정보
초록
영어
Background: Recently, biological adsorbents have been developed for removing radionuclides from radioactive liquid waste due to their high selectivity, eco-friendliness, and renewability. However, since they can be damaged by radiation in radioactive waste, a method for estimating the bio-adsorbent performance as a time should consider the radiation damages in terms of their renewability. This paper aims to develop a simulation method that applies a deep learning technique to rapidly and accurately estimate the adsorption performance of bio-adsorbents when inserted into liquid radioactive waste. Materials and Methods: A model that describes various interactions between a bio-adsorbent and liquid has been constructed using numerical methods to estimate the adsorption capacity of the bio-adsorbent. To generate datasets for machine learning, Monte Carlo N-Particle (MCNP) simulations were conducted while considering radioactive concentrations in the adsorbent column. Results and Discussion: Compared with the result of the conventional method, the proposed method indicates that the accuracy is in good agreement, within 0.99% and 0.06% for the R2 score and mean absolute percentage error, respectively. Furthermore, the estimation speed is improved by over 30 times. Conclusion: Note that an artificial neural network can rapidly and accurately estimate the survival rate of a bio-adsorbent from radiation ionization compared with the MCNP simulation and can determine if the bio-adsorbents are reusable.
목차
Introduction
Materials and Methods
1. Estimation Overview
2. One-Dimensional Advection-Dispersion Equationwith Langmuir Isotherm Adsorption
3. Estimation Model of Radiation Damage for Biological Adsorbents
4. Artificial Neural Network for Radiation Damage Estimation
Results and Discussion
1. Simulation Results and Analysis
2. Verification of the ANN Damage Analysis Model
Conclusion
Conflict of Interest
Acknowledgements
Ethical Statement
Author Contribution
References
