Bu-Seog Ju , Hoyoung Son , Shinyoung Kwag , Sangwoo Lee
{"title":"基于序列机器学习的脆性分析:反应堆安全壳受内压的序列 ML-FA","authors":"Bu-Seog Ju , Hoyoung Son , Shinyoung Kwag , Sangwoo Lee","doi":"10.1016/j.advengsoft.2024.103791","DOIUrl":null,"url":null,"abstract":"<div><div>With the introduction of probabilistic safety assessment in nuclear power plants, a fragility analysis is critical to evaluating the probability of a failure of structures. However, such fragility analysis requires a large amount of finite element analyses due to explicit consideration and quantification of all sources of uncertainty. This study aims to present a sequential machining learning-based framework that can sequentially and efficiently estimate the fragility of containment vessels in nuclear power plants while minimizing finite element analyses, and the proposed framework is applied for performing a fragility analysis of a prestressed concrete containment vessel subjected to internal pressure. Within the framework, machine learning models are used to predict the behavior of the containment vessel based on collected analytical data from finite element analyses. The predicted data are used to estimate fragility curves through maximum likelihood estimation within the proposed framework, and the number of analytical data for training machine learning models is sequentially increased until the required convergence index of the estimated fragility curve is reached. In addition, the final fragility curves obtained from the proposed framework are compared with the fragility curves (benchmark) obtained from 1000 analytical data. This proposed framework can significantly reduce computational costs by estimating the fragility curve with the minimum number of finite element analyses.</div></div>","PeriodicalId":50866,"journal":{"name":"Advances in Engineering Software","volume":"198 ","pages":"Article 103791"},"PeriodicalIF":4.0000,"publicationDate":"2024-10-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Sequential machine learning based fragility analysis: Sequential ML-FA for reactor containment vessel subjected to internal pressure\",\"authors\":\"Bu-Seog Ju , Hoyoung Son , Shinyoung Kwag , Sangwoo Lee\",\"doi\":\"10.1016/j.advengsoft.2024.103791\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>With the introduction of probabilistic safety assessment in nuclear power plants, a fragility analysis is critical to evaluating the probability of a failure of structures. However, such fragility analysis requires a large amount of finite element analyses due to explicit consideration and quantification of all sources of uncertainty. This study aims to present a sequential machining learning-based framework that can sequentially and efficiently estimate the fragility of containment vessels in nuclear power plants while minimizing finite element analyses, and the proposed framework is applied for performing a fragility analysis of a prestressed concrete containment vessel subjected to internal pressure. Within the framework, machine learning models are used to predict the behavior of the containment vessel based on collected analytical data from finite element analyses. The predicted data are used to estimate fragility curves through maximum likelihood estimation within the proposed framework, and the number of analytical data for training machine learning models is sequentially increased until the required convergence index of the estimated fragility curve is reached. In addition, the final fragility curves obtained from the proposed framework are compared with the fragility curves (benchmark) obtained from 1000 analytical data. 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Sequential machine learning based fragility analysis: Sequential ML-FA for reactor containment vessel subjected to internal pressure
With the introduction of probabilistic safety assessment in nuclear power plants, a fragility analysis is critical to evaluating the probability of a failure of structures. However, such fragility analysis requires a large amount of finite element analyses due to explicit consideration and quantification of all sources of uncertainty. This study aims to present a sequential machining learning-based framework that can sequentially and efficiently estimate the fragility of containment vessels in nuclear power plants while minimizing finite element analyses, and the proposed framework is applied for performing a fragility analysis of a prestressed concrete containment vessel subjected to internal pressure. Within the framework, machine learning models are used to predict the behavior of the containment vessel based on collected analytical data from finite element analyses. The predicted data are used to estimate fragility curves through maximum likelihood estimation within the proposed framework, and the number of analytical data for training machine learning models is sequentially increased until the required convergence index of the estimated fragility curve is reached. In addition, the final fragility curves obtained from the proposed framework are compared with the fragility curves (benchmark) obtained from 1000 analytical data. This proposed framework can significantly reduce computational costs by estimating the fragility curve with the minimum number of finite element analyses.
期刊介绍:
The objective of this journal is to communicate recent and projected advances in computer-based engineering techniques. The fields covered include mechanical, aerospace, civil and environmental engineering, with an emphasis on research and development leading to practical problem-solving.
The scope of the journal includes:
• Innovative computational strategies and numerical algorithms for large-scale engineering problems
• Analysis and simulation techniques and systems
• Model and mesh generation
• Control of the accuracy, stability and efficiency of computational process
• Exploitation of new computing environments (eg distributed hetergeneous and collaborative computing)
• Advanced visualization techniques, virtual environments and prototyping
• Applications of AI, knowledge-based systems, computational intelligence, including fuzzy logic, neural networks and evolutionary computations
• Application of object-oriented technology to engineering problems
• Intelligent human computer interfaces
• Design automation, multidisciplinary design and optimization
• CAD, CAE and integrated process and product development systems
• Quality and reliability.