Unsupervised anomaly detection for Nuclear Power Plants based on Denoising Diffusion Probabilistic Models

IF 3.3 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY Progress in Nuclear Energy Pub Date : 2024-11-12 DOI:10.1016/j.pnucene.2024.105521
Shiqiao Liu , Zifei Zhu , Xinwen Zhao , Yangguang Wang , Xiang Sun , Lei Yu
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Abstract

The abnormal state detection in nuclear reactors constitutes a critical concern within the broader context of Nuclear Power Plants (NPPs) safety management. Deep learning techniques have exhibited exceptional performance in addressing issues pertaining to NPPs safety control. However, acquiring the large amount of labeled data required by supervised learning methodologies poses a significant challenge in practical applications. This paper addresses a key challenge in NPPs safety—abnormal state detection in nuclear reactors. Leveraging unsupervised learning due to the limited availability of labeled data, we propose an anomaly detection method using the Denoising Diffusion Probabilistic Model (DDPM) with a noise-to-noise training strategy. Comparative evaluation against AE, VAE, and GAN shows that DDPM outperforms in all metrics, demonstrating strong potential for NPPs anomaly diagnosis. Experimental results suggest that a feature count of 50 optimizes DDPM performance for NPPs anomaly detection, while the noise-to-noise training strategy improves model robustness.
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基于去噪扩散概率模型的核电站无监督异常检测
核反应堆的异常状态检测是核电厂(NPP)安全管理大背景下的一个关键问题。深度学习技术在解决核电站安全控制相关问题方面表现出了卓越的性能。然而,在实际应用中,获取监督学习方法所需的大量标记数据是一项重大挑战。本文探讨了核电站安全中的一个关键挑战--核反应堆中的异常状态检测。由于标注数据的可用性有限,我们利用无监督学习,提出了一种使用去噪扩散概率模型(DDPM)的异常检测方法,并采用了噪声对噪声的训练策略。与 AE、VAE 和 GAN 的比较评估结果表明,DDPM 在所有指标上都优于 AE、VAE 和 GAN,显示了其在国家电力公司异常诊断方面的强大潜力。实验结果表明,50 个特征数可优化 DDPM 在国家电力公司异常检测中的性能,而噪声对噪声的训练策略可提高模型的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Progress in Nuclear Energy
Progress in Nuclear Energy 工程技术-核科学技术
CiteScore
5.30
自引率
14.80%
发文量
331
审稿时长
3.5 months
期刊介绍: Progress in Nuclear Energy is an international review journal covering all aspects of nuclear science and engineering. In keeping with the maturity of nuclear power, articles on safety, siting and environmental problems are encouraged, as are those associated with economics and fuel management. However, basic physics and engineering will remain an important aspect of the editorial policy. Articles published are either of a review nature or present new material in more depth. They are aimed at researchers and technically-oriented managers working in the nuclear energy field. Please note the following: 1) PNE seeks high quality research papers which are medium to long in length. Short research papers should be submitted to the journal Annals in Nuclear Energy. 2) PNE reserves the right to reject papers which are based solely on routine application of computer codes used to produce reactor designs or explain existing reactor phenomena. Such papers, although worthy, are best left as laboratory reports whereas Progress in Nuclear Energy seeks papers of originality, which are archival in nature, in the fields of mathematical and experimental nuclear technology, including fission, fusion (blanket physics, radiation damage), safety, materials aspects, economics, etc. 3) Review papers, which may occasionally be invited, are particularly sought by the journal in these fields.
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