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A Novel Hierarchical Extreme Machine-Learning-Based Approach for Linear Attenuation Coefficient Forecasting

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dc.creator Dashtipour, Kia
dc.creator Hussain, Amir
dc.creator Ieracitano, Cosimo
dc.creator Varone, Giuseppe
dc.creator AKKURT, İskender
dc.creator Almoamari, Hani
dc.creator Al-Tamimi, Bassam Naji
dc.creator Hussain, Tassadaq
dc.creator Çiftçioğlu, Aybike Özyüksel
dc.creator Gogate, Mandar
dc.date 2023-02-01T00:00:00Z
dc.date.accessioned 2025-02-25T10:22:04Z
dc.date.available 2025-02-25T10:22:04Z
dc.identifier 53a7650a-dbd8-46f3-9dc0-5a96780fbec9
dc.identifier 10.3390/e25020253
dc.identifier https://avesis.sdu.edu.tr/publication/details/53a7650a-dbd8-46f3-9dc0-5a96780fbec9/oai
dc.identifier.uri http://acikerisim.sdu.edu.tr/xmlui/handle/123456789/99725
dc.description The development of reinforced polymer composite materials has had a significant influence on the challenging problem of shielding against high-energy photons, particularly X-rays and (Formula presented.) -rays in industrial and healthcare facilities. Heavy materials’ shielding characteristics hold a lot of potential for bolstering concrete chunks. The mass attenuation coefficient is the main physical factor that is utilized to measure the narrow beam (Formula presented.) -ray attenuation of various combinations of magnetite and mineral powders with concrete. Data-driven machine learning approaches can be investigated to assess the gamma-ray shielding behavior of composites as an alternative to theoretical calculations, which are often time- and resource-intensive during workbench testing. We developed a dataset using magnetite and seventeen mineral powder combinations at different densities and water/cement ratios, exposed to photon energy ranging from 1 to (Formula presented.) kiloelectronvolt (KeV). The National Institute of Standards and Technology (NIST) photon cross-section database and software methodology (XCOM) was used to compute the concrete’s (Formula presented.) -ray shielding characteristics (LAC). The XCOM-calculated LACs and seventeen mineral powders were exploited using a range of machine learning (ML) regressors. The goal was to investigate whether the available dataset and XCOM-simulated LAC can be replicated using ML techniques in a data-driven approach. The minimum absolute error (MAE), root mean square error (RMSE), and (Formula presented.) were employed to assess the performance of our proposed ML models, specifically a support vector machine (SVM), 1d-convolutional neural network (CNN), multi-Layer perceptrons (MLP), linear regressor, decision tree, hierarchical extreme machine learning (HELM), extreme learning machine (ELM), and random forest networks. Comparative results showed that our proposed HELM architecture outperformed state-of-the-art SVM, decision tree, polynomial regressor, random forest, MLP, CNN, and conventional ELM models. Stepwise regression and correlation analysis were further used to evaluate the forecasting capability of ML techniques compared to the benchmark XCOM approach. According to the statistical analysis, the HELM model showed strong consistency between XCOM and predicted LAC values. Additionally, the HELM model performed better in terms of accuracy than the other models used in this study, yielding the highest R2score and the lowest MAE and RMSE.
dc.language eng
dc.rights info:eu-repo/semantics/openAccess
dc.title A Novel Hierarchical Extreme Machine-Learning-Based Approach for Linear Attenuation Coefficient Forecasting
dc.type info:eu-repo/semantics/article


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