Radiological characterization of the tailings of an abandoned copper mine using a neural network and geostatistical analysis through the Co-Kriging method
-
Published:2024-07-09
Issue:8
Volume:46
Page:
-
ISSN:0269-4042
-
Container-title:Environmental Geochemistry and Health
-
language:en
-
Short-container-title:Environ Geochem Health
Author:
Expósito-Suárez V. M.,Suárez-Navarro J. A.,Caro A.,Sanz M. B.,Hernaiz G.,González-Sanabria A.,Suárez-Navarro M. J.,Jordá-Bordehore L.,Chamorro-Villanueva H.,Arlandi M.,Benavente J. F.
Abstract
AbstractThe radiological characterization of soil contaminated with natural radionuclides enables the classification of the area under investigation, the optimization of laboratory measurements, and informed decision-making on potential site remediation. Neural networks (NN) are emerging as a new candidate for performing these tasks as an alternative to conventional geostatistical tools such as Co-Kriging. This study demonstrates the implementation of a NN for estimating radiological values such as ambient dose equivalent (H*(10)), surface activity and activity concentrations of natural radionuclides present in a waste dump of a Cu mine with a high level of natural radionuclides. The results obtained using a NN were compared with those estimated by Co-Kriging. Both models reproduced field measurements equivalently as a function of spatial coordinates. Similarly, the deviations from the reference concentration values obtained in the output layer of the NN were smaller than the deviations obtained from the multiple regression analysis (MRA), as indicated by the results of the root mean square error. Finally, the method validation showed that the estimation of radiological parameters based on their spatial coordinates faithfully reproduced the affected area. The estimation of the activity concentrations was less accurate for both the NN and MRA; however, both methods gave statistically comparable results for activity concentrations obtained by gamma spectrometry (Student's t-test and Fisher's F-test).
Funder
Spanish Ministry of Science and Innovation CIEMAT
Publisher
Springer Science and Business Media LLC
Reference37 articles.
1. Baek, J., & Choi, Y. (2020). Deep neural network for predicting ore production by truck-haulage systems in open-pit mines. Applied Sciences, 10(5), 1657. https://doi.org/10.3390/app10051657 2. Barba-Lobo, A., Expósito-Suárez, V. M., Suárez-Navarro, J. A., & Bolívar, J. P. (2023). Robustness of LabSOCS calculating Ge detector efficiency for the measurement of radionuclides. Radiation Physics and Chemistry, 205, 110734. https://doi.org/10.1016/j.radphyschem.2022.110734 3. Be, M., Chisté, V., Dulieu, C., Kellett, M., Mougeot, X., Arinc, A., Chechev, V., Kuzmenko, N., Kibédi, T., Luca, A. (2016). Table of radionuclides (Vol. 8-A= 41 to 198). Bureau International Des Poids et Mesures (BIPM), Sèvres 4. Benavente, J. F., & Correcher, V. (2023). Thermoluminescence-based simplified criteria for the detection of irradiated sesame seeds using artificial intelligence methods. Radiation Physics and Chemistry, 212, 111144. https://doi.org/10.1016/j.radphyschem.2023.111144 5. Cai, Z., Lei, S., & Lu, X. (2022). Deep learning based granularity detection network for mine dump materials. Minerals, 12(4), 424. https://doi.org/10.3390/min12040424
|
|