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Signal anomaly identification strategy based on Bayesian inference for nuclear power machinery

机译:基于贝叶斯推论的核电机械信号异常识别策略

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摘要

In the machinery industry, signal anomalies are generally identified using the threshold method, which exhibits shortcomings in setting reasonable thresholds, in decision-making when signals approach thresholds or fluctuate, and in quantification of fault confidence. In this paper, a long short-term memory (LSTM) model is established to predict the time-series signals. For prediction residual, a novel decision-making strategy of signal anomaly identification based on Bayesian inference is then proposed that considers data uncertainty. Various signal abnormality conditions are analyzed, and a Bayesian hypothesis test approach is developed to determine the signal status and quantify the fault probability. After fully mining the prior information of the residuals to reduce the influence of randomness, estimates of the key parameters, namely residual mean and variance, are determined by obtaining the posterior distribution based on the normal-inverse-gamma distribution. In two nuclear power machinery examples, all potential signal anomalies are identified by the proposed method. The results of a comparative analysis with existing methods demonstrate that the proposed method can issue an alarm several hours in advance and provide a fault probability, which improves the accuracy and reliability of prediction.
机译:在机械工业中,通常使用阈值方法识别信号异常,这在决策时展示了在方法接近阈值或波动时在决策中展示了合理的阈值的缺点,并且在量化故障置信度。在本文中,建立了长短期存储器(LSTM)模型来预测时间序列信号。对于预测残差,基于贝叶斯推断,提出了一种基于贝叶斯推断的信号异常识别的新型决策策略,以考虑数据不确定性。分析了各种信号异常条件,开发了贝叶斯假设测试方法以确定信号状态并量化故障概率。在完全挖掘残余物的先前信息以降低随机性的影响,通过基于正常逆伽马分布获得后验分布来确定关键参数的估计,即残余均值和方差。在两个核电机械实例中,所有潜在信号异常都通过所提出的方法来识别。现有方法的比较分析结果表明,该方法可以提前几个小时发出警报并提供故障概率,从而提高了预测的准确性和可靠性。

著录项

  • 来源
    《Mechanical systems and signal processing 》 |2021年第12期| 107967.1-107967.15| 共15页
  • 作者单位

    School of Mechanical and Automotive Engineering South China University of Technology Guangzhou 510640 China;

    School of Mechanical and Automotive Engineering South China University of Technology Guangzhou 510640 China;

    The State Key Laboratory of Nuclear Power Safety Monitoring Technology and Equipment China Nuclear Power Engineering Company Ltd. Shenzhen 518172 China;

    The State Key Laboratory of Nuclear Power Safety Monitoring Technology and Equipment China Nuclear Power Engineering Company Ltd. Shenzhen 518172 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Bayesian inference; Signal analysis; Anomaly identification; LSTM; Nuclear power machinery;

    机译:贝叶斯推理;信号分析;异常鉴定;LSTM;核电机械;

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