首页> 外文会议>5th International FLINS Conference on Computational Intelligent Systems for Applied Research, Sep 16-18, 2002, Gent, Belgium >APPLICATION OF LOCALIZED REGULARIZATION METHODS FOR NUCLEAR POWER PLANT SENSOR CALIBRATION MONITORING
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APPLICATION OF LOCALIZED REGULARIZATION METHODS FOR NUCLEAR POWER PLANT SENSOR CALIBRATION MONITORING

机译:局部稳压方法在核电站传感器标定监测中的应用。

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摘要

Several U.S. Nuclear Power Plants are attempting to move from a periodic sensor calibration schedule to a condition-based schedule using on-line calibration monitoring systems. This move requires a license amendment that must address the requirements set forth in a recently released Nuclear Regulatory Commission Safety Evaluation Report (SER). The major issue addressed in the SER is that of a complete uncertainty analysis of the empirical models. It has been shown that empirical modeling techniques are inherently unstable and inconsistent when the inputs are highly correlated. Regularization methods such as ridge regression or truncated singular value decomposition produce consistent results but may be overly simplified and not produce optimal results. This paper describes a new local regularization method, generalized ridge regression (GRR), and its potential value for sensor calibration monitoring at nuclear power plants. A case study is used to quantitatively compare different modeling methods.
机译:数个美国核电站正在尝试使用在线校准监控系统将传感器定期校准计划从基于状态的计划转变为基于条件的计划。此举需要对许可证进行修订,该修订必须解决最近发布的核监管委员会安全评估报告(SER)中提出的要求。 SER中解决的主要问题是对经验模型进行完整的不确定性分析。已经表明,当输入高度相关时,经验建模技术固有地不稳定且不一致。正则化方法(例如,岭回归或截断的奇异值分解)会产生一致的结果,但可能会过于简化而不会产生最佳结果。本文介绍了一种新的局部正则化方法,广义岭回归(GRR)及其在核电厂进行传感器校准监测的潜在价值。案例研究用于定量比较不同的建模方法。

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