Multimode DALSTM model for anomaly detection of nuclear reactor core

Yingnan Wang, Xin Wang, Ying-Lin Wang, Xianming Li, Chunhui Zhao, Zhihong Lv
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Abstract

The nuclear reactor core is a life-critical system, whose reliable operation ensures the safety of a nuclear power plant. The reactor core temperature is a direct representation of the reactor core state. Therefore, the detection and analysis of core temperature anomalies is of great importance. However, multiple temperature variables are nonlinear and complexly coupled, showing different distribution characteristics with the variations of operating condition. For this reason, a multi-mode anomaly monitoring strategy for core temperature in nuclear power plant is proposed. To realize the nonlinear feature extraction of multiple temperature variables, a deep auto-encoder and long short-term memory (DALSTM) network are constructed. Considering the complex temperature distribution characteristics, the nonlinear features are clustered to divide the data into different subspaces. In this way, the distribution features are similar in the same subspace. Finally, local DALSTM models of core temperature in different subspaces are developed, and a multimode DALSTM monitoring strategy is designed. The monitoring statistics of the local models reflect the detailed variations of the process and achieve fine-grained detection of anomalous behavior. The effectiveness of the proposed model is verified by real operation data. The experimental results show that the method can achieve fast and accurate anomaly detection for reactor core temperature.
核反应堆堆芯异常检测的多模DALSTM模型
核反应堆堆芯是一个生命临界系统,其可靠运行是核电站安全运行的重要保证。反应堆堆芯温度是反应堆堆芯状态的直接表征。因此,岩心温度异常的检测与分析具有十分重要的意义。然而,多个温度变量是非线性的、复杂耦合的,随着工况的变化呈现出不同的分布特征。为此,提出了核电站堆芯温度多模态异常监测策略。为了实现多温度变量的非线性特征提取,构建了深度自编码器和长短时记忆(DALSTM)网络。考虑到复杂的温度分布特征,对非线性特征进行聚类,将数据划分为不同的子空间。这样,在同一子空间中的分布特征是相似的。最后,建立了岩心温度在不同子空间的局部DALSTM模型,设计了多模态DALSTM监测策略。局部模型的监测统计反映了过程的详细变化,并实现了异常行为的细粒度检测。通过实际运行数据验证了该模型的有效性。实验结果表明,该方法能够实现快速、准确的堆芯温度异常检测。
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