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首页> 外文期刊>Progress in Nuclear Energy >Detecting loss-of-coolant accidents without accident-specific data
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Detecting loss-of-coolant accidents without accident-specific data

机译:检测无偶然特定数据的冷却损失事故

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This paper develops an automated fault detection tool to detect very small LOCAs in pressurized water reactors that would be difficult for operators to detect manually. One of the primary challenges with previous automated fault detection methods, which are data-driven, is that they require data from LOCAs; however, it may be difficult to capture real operational data from LOCA scenarios. This work uses a physics-inspired approach that equates the physical effects of a LOCA to changes in known variables. This approach enables the detection of very small LOCAs using data-driven approaches that use nominal operating data without the need for LOCA data. The approach combines data-driven modeling with control-theoretic estimation techniques to detect LOCAs and estimate their magnitudes in real-time. First, simulated process data for a variety of nominal operating conditions is collected using a generic pressurized water reactor simulator. Then, that data is used to train an artificial neural network regression model that captures the nonlinear plant dynamics. Finally, the regression model is used in a particle filter to detect the onset and estimate the magnitude of the leak. These methods are successfully verified using LOCA simulations that would be hard to manually distinguish from normal operating transients.
机译:本文开发了一种自动故障检测工具,可以检测加压水反应器中的非常小的基因座,这对于操作员来说是难以手动检测的。以前是数据驱动的自动故障检测方法的主要挑战之一是它们需要来自基因座的数据;但是,可能难以从基因座情景捕获真实的操作数据。这项工作采用物理启发方法,使得LOCA的物理效应与已知变量的变化等同起来。这种方法可以使用使用标称操作数据的数据驱动方法检测非常小的基因座,而无需LOCA数据。该方法将数据驱动建模与控制定理估计技术相结合,以检测基因座并实时估计它们的大小。首先,使用通用加压水反应堆模拟器收集各种标称操作条件的模拟过程数据。然后,该数据用于训练捕获非线性工厂动态的人工神经网络回归模型。最后,回归模型用于粒子滤波器以检测开始并估计泄漏的大小。这些方法使用LOCA模拟成功验证,这很难从正常操作瞬态手动区分。

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