用合成数据验证自动共振评价

IF 1.9 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY Annals of Nuclear Energy Pub Date : 2024-12-01 DOI:10.1016/j.anucene.2024.111081
Oleksii Zivenko , Noah A.W. Walton , William Fritsch , Jacob Forbes , Amanda M. Lewis , Aaron Clark , Jesse M. Brown , Vladimir Sobes
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引用次数: 0

摘要

核数据的完整性和准确性对于从国家安全和核反应堆设计到医疗诊断等广泛应用至关重要,相关的不确定性可能对结果产生重大影响。核数据的很大一部分不确定性源于评估过程中的主观偏差,这是核数据生产管道中的关键阶段。最近的进展表明,某些例程的自动化可以减轻这些偏差,从而使评估过程标准化并提高可重复性。本研究旨在为自动化核数据评估软件的验证提供一种方法、框架和指标,利用高质量的合成数据来模拟真实的实验观测结果。引入的误差度量通过在指定能量范围内量化估计的准确性和性能,为评估质量提供了一个尺度和直观的度量。合成数据提供了对实验观测值和潜在共振参数的访问,从而可以对不同的评估进行比较。利用Ta-181同位素数据对该方法进行了验证。自动共振识别子程序(ARIS)在没有事先共振信息的情况下运行,利用所提出的误差度量来测试和展示框架的功能。结果表明,所提出的方法和框架在优化软件参数和通过“假设”控制实验(如修改关于实验条件或平均共振参数的假设)测试假设方面是有效的。
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Validating automated resonance evaluation with synthetic data
The integrity and precision of nuclear data are crucial for a broad spectrum of applications, from national security and nuclear reactor design to medical diagnostics, where the associated uncertainties can significantly impact outcomes. A substantial portion of uncertainty in nuclear data originates from the subjective biases in the evaluation process, a crucial phase in the nuclear data production pipeline. Recent advancements indicate that automation of certain routines can mitigate these biases, thereby standardizing the evaluation process and enhancing reproducibility. This research aims to provide a methodology, framework, and metrics for the validation of automated nuclear data evaluation software leveraging high-quality synthetic data that closely mimic real experimental observables. An introduced error metric provides a scale and intuitive measure of the evaluation quality by quantifying the estimate’s accuracy and performance across the specified energy range. Synthetic data provides access to experimental observables and underlying resonance parameters, enabling comparison of different evaluations. The methodology is demonstrated using Ta-181 isotope data in the resolved resonance region. The Automated Resonance Identification Subroutine (ARIS), which operates without prior resonance information, was used to test and showcase the framework’s capabilities utilizing the proposed error metrics. The results demonstrate the effectiveness of the proposed approach and framework for optimizing software parameters and testing hypotheses through “what-if” controlled experiments, such as modifying assumptions about experimental conditions or average resonance parameters.
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来源期刊
Annals of Nuclear Energy
Annals of Nuclear Energy 工程技术-核科学技术
CiteScore
4.30
自引率
21.10%
发文量
632
审稿时长
7.3 months
期刊介绍: Annals of Nuclear Energy provides an international medium for the communication of original research, ideas and developments in all areas of the field of nuclear energy science and technology. Its scope embraces nuclear fuel reserves, fuel cycles and cost, materials, processing, system and component technology (fission only), design and optimization, direct conversion of nuclear energy sources, environmental control, reactor physics, heat transfer and fluid dynamics, structural analysis, fuel management, future developments, nuclear fuel and safety, nuclear aerosol, neutron physics, computer technology (both software and hardware), risk assessment, radioactive waste disposal and reactor thermal hydraulics. Papers submitted to Annals need to demonstrate a clear link to nuclear power generation/nuclear engineering. Papers which deal with pure nuclear physics, pure health physics, imaging, or attenuation and shielding properties of concretes and various geological materials are not within the scope of the journal. Also, papers that deal with policy or economics are not within the scope of the journal.
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