Development of an Ai-Based Predictive Anomaly Detection System to Nuclear Power Plant

IF 0.5 Q4 NUCLEAR SCIENCE & TECHNOLOGY Journal of Nuclear Engineering and Radiation Science Pub Date : 2023-11-23 DOI:10.1115/1.4064123
Ryota Miyake, Shinya Tominaga, Yusuke Terakado, Naoyuki Takado, Toshio Aoki, Chikashi Miyamoto, Susumu Naito, Yasunori Taguchi, Yuichi Kato, Kota Nakata
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Abstract

In a large-scale plant such as a Nuclear Power Plant (NPP), thousands of process values are measured for the purpose of monitoring the plant performance and the system health. It is difficult for plant operators to constantly monitor all of the process values. We present a data-driven method to comprehensively monitor a large number of process values and detect early signs of anomalies, including unknown events, with few false positives. In order to learn the complex changing internal state of a NPP and accurately predict the normal process values, we have developed a two-stage autoencoder (TSAE), a type of neural network, composed of a time window autoencoder and a deviation autoencoder. TSAE realizes to detect anomalous signals during the plant transient conditions by collecting time-series data and learning the nonlinear temporal correlation among them. In the actual plant, some process values which are physically uncorrelated with each other happen to behave similarly (pseudo-correlation). Learning the pseudo-correlation by the algorithm causes false positives because the predicted values of unrelated process values are incorrectly correlated. Therefore, Toshiba has proposed the model classification concept of separating the process values into two groups based on physical correlation and applied a model structure of TSAE. As a result, it becomes possible to learn only with the process values that are physically correlated and enhance the performance of prediction/detection. We assessed the improved TSAE with simulated process values of a NPP and showed excellent performances with few false positives.
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为核电站开发基于人工智能的预测性异常检测系统
在核电站(NPP)等大型电厂中,需要测量数千个过程值,以监控电厂性能和系统健康状况。电厂操作员很难持续监控所有过程值。我们提出了一种数据驱动方法,用于全面监控大量过程值,并检测异常的早期迹象,包括未知事件,而且误报率极低。为了学习核电厂复杂多变的内部状态并准确预测正常过程值,我们开发了一种两阶段自动编码器(TSAE),它是一种神经网络,由时间窗自动编码器和偏差自动编码器组成。TSAE 通过收集时间序列数据并学习它们之间的非线性时间相关性,实现对工厂瞬态条件下异常信号的检测。在实际工厂中,一些物理上互不相关的过程值会出现类似的行为(伪相关)。通过算法学习伪相关性会导致误报,因为不相关过程值的预测值被错误地相关联。因此,东芝公司提出了根据物理相关性将过程值分为两组的模型分类概念,并应用了 TSAE 的模型结构。因此,只对物理相关的过程值进行学习成为可能,并提高了预测/检测的性能。我们用一个国家核电厂的模拟过程值对改进后的 TSAE 进行了评估,结果显示其性能卓越,误报率极低。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
56
期刊介绍: The Journal of Nuclear Engineering and Radiation Science is ASME’s latest title within the energy sector. The publication is for specialists in the nuclear/power engineering areas of industry, academia, and government.
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