Hybrid machine learning model with optimization algorithm for predicting the incubation dose of void swelling in irradiated metals

IF 2.6 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY Nuclear Engineering and Technology Pub Date : 2025-09-01 Epub Date: 2025-04-21 DOI:10.1016/j.net.2025.103661
Van-Thanh Pham, Kyoon-Ho Cha, Jong-Sung Kim
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Abstract

This study introduces novel hybrid machine learning (ML) models that integrate six state-of-the-art ML algorithms with the Harris Hawks Optimization (HHO) algorithm to enhance the prediction of the incubation dose in irradiated metals. A comprehensive database comprising 305 experimental samples with 24 input features is used to develop the models, with hyperparameters optimized through a combination of cross-validation method and HHO. Performance evaluation across various metrics identifies the hybrid model combining HHO and categorical gradient boosting (CGB), named HHO-CGB, as the most accurate and stable for predicting the incubation dose. To gain further insights, the Shapley Additive Explanations method is employed to assess the global and local contributions of input variables, revealing Fe (wt.%), temperature (K), dose rate (dpa/s), and V (wt.%) as the most influential factors. Finally, a user-friendly graphical interface tool and web application are developed based on the HHO-CGB model, providing a practical and cost-effective solution for predicting the incubation dose of irradiated metals.
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混合机器学习模型与优化算法用于预测辐照金属空洞膨胀的培育剂量
本研究引入了新型混合机器学习(ML)模型,该模型将六种最先进的ML算法与哈里斯鹰优化(HHO)算法集成在一起,以增强对辐照金属中孵育剂量的预测。利用一个包含305个实验样本、24个输入特征的综合数据库来开发模型,并通过交叉验证法和HHO相结合的方法对超参数进行优化。多种指标的性能评估表明,HHO与分类梯度增强(classification gradient boosting, CGB)相结合的混合模型(HHO-CGB)预测孵育剂量最准确、最稳定。为了获得进一步的见解,采用Shapley加性解释方法来评估输入变量的全局和局部贡献,揭示Fe (wt.%),温度(K),剂量率(dpa/s)和V (wt.%)是最具影响力的因素。最后,基于HHO-CGB模型开发了一个用户友好的图形界面工具和web应用程序,为预测辐照金属的孵育剂量提供了一个实用和经济的解决方案。
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来源期刊
Nuclear Engineering and Technology
Nuclear Engineering and Technology 工程技术-核科学技术
CiteScore
4.80
自引率
7.40%
发文量
431
审稿时长
3.5 months
期刊介绍: Nuclear Engineering and Technology (NET), an international journal of the Korean Nuclear Society (KNS), publishes peer-reviewed papers on original research, ideas and developments in all areas of the field of nuclear science and technology. NET bimonthly publishes original articles, reviews, and technical notes. The journal is listed in the Science Citation Index Expanded (SCIE) of Thomson Reuters. NET covers all fields for peaceful utilization of nuclear energy and radiation as follows: 1) Reactor Physics 2) Thermal Hydraulics 3) Nuclear Safety 4) Nuclear I&C 5) Nuclear Physics, Fusion, and Laser Technology 6) Nuclear Fuel Cycle and Radioactive Waste Management 7) Nuclear Fuel and Reactor Materials 8) Radiation Application 9) Radiation Protection 10) Nuclear Structural Analysis and Plant Management & Maintenance 11) Nuclear Policy, Economics, and Human Resource Development
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