基于深度学习和假设检验相结合的开放集识别,用于检测未知核故障

IF 1.9 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY
Wei Pan , Jihong Shen , Bo Wang , Shujuan Wang , Zhanhao Sun
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引用次数: 0

摘要

目前大多数核系统的故障诊断技术主要依赖于封闭集假设,即限制诊断模型从一组预先确定的已知故障类别中进行选择。然而,核系统是一个动态开放的系统,从未见过的未知故障随时可能发生。因此,设计一个既能识别已知故障又能识别未知故障的诊断模型是非常有意义的。本文提出了一种开放式场景下的故障诊断方法。具体来说,使用修正的损失函数来训练卷积神经网络(CNN),以学习已知类别的更紧凑的特征表示。将卷积神经网络最后一层全连接层输出的特征作为属于每个已知类别的分数,并引入基于极值理论(EVT)的校准模型来校准分数。此外,还引入了假设检验进行统计推断。根据置信度确定阈值,以区分已知故障和未知故障。在两组核系统故障模拟数据上进行的实验表明,所提出的模型不仅能在不影响已知故障分类准确性的情况下识别出更多未知故障,还能为不同数据集选择更合适的阈值,从而增强模型的泛化能力。此外,在不同开放程度下的实验也证明,我们的模型在不同开放程度下表现出更高的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Open-set recognition based on the combination of deep learning and hypothesis testing for detecting unknown nuclear faults
Most current fault diagnosis techniques for nuclear systems mainly rely on the closed-set assumption, which restricts the diagnosis model to select from a set of pre-established known fault classes. However, the nuclear system is a dynamic open system, and unknown faults that have never been seen can occur at any time. Therefore, it is very meaningful to design a diagnosis model that can recognize both known and unknown faults. This paper proposes a fault diagnosis method for open-set scenarios. Specifically, a modified loss function is used to train a convolutional neural network (CNN) to learn more compact feature representations of known classes. The features output by the last fully connected layer of the CNN are taken as the scores belonging to each known class, and a calibration model based on extreme value theory (EVT) is introduced to calibrate the scores. In addition, hypothesis testing is introduced for statistical inference. The threshold is determined according to the confidence level to distinguish the known faults from the unknown faults. Experiments conducted on two sets of nuclear system faults simulation data demonstrate that the proposed model not only identifies more unknown faults without compromising the accuracy of known fault classification but also selects more appropriate thresholds for different datasets, thereby enhancing the model’s generalization capability. Furthermore, experiments under varying degrees of openness also prove that our model exhibits higher robustness across different levels of openness.
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来源期刊
Nuclear Engineering and Design
Nuclear Engineering and Design 工程技术-核科学技术
CiteScore
3.40
自引率
11.80%
发文量
377
审稿时长
5 months
期刊介绍: Nuclear Engineering and Design covers the wide range of disciplines involved in the engineering, design, safety and construction of nuclear fission reactors. The Editors welcome papers both on applied and innovative aspects and developments in nuclear science and technology. Fundamentals of Reactor Design include: • Thermal-Hydraulics and Core Physics • Safety Analysis, Risk Assessment (PSA) • Structural and Mechanical Engineering • Materials Science • Fuel Behavior and Design • Structural Plant Design • Engineering of Reactor Components • Experiments Aspects beyond fundamentals of Reactor Design covered: • Accident Mitigation Measures • Reactor Control Systems • Licensing Issues • Safeguard Engineering • Economy of Plants • Reprocessing / Waste Disposal • Applications of Nuclear Energy • Maintenance • Decommissioning Papers on new reactor ideas and developments (Generation IV reactors) such as inherently safe modular HTRs, High Performance LWRs/HWRs and LMFBs/GFR will be considered; Actinide Burners, Accelerator Driven Systems, Energy Amplifiers and other special designs of power and research reactors and their applications are also encouraged.
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