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Machine learning based fault prediction system for the primary heat transport system of CANDU type pressurized heavy water reactor

机译:基于机器学习的CANDU型加压重水反应堆一次传热系统故障预测系统

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In nuclear power reactor, temperature of the core has to be maintained within the safety limits. This can be achieved by monitoring and controlling the various system's parameter of nuclear reactor. One of the important system of nuclear reactor is primary heat transfer (PHT) system. Therefore, any fault in the PHT system may lead to the state where PHT parameters cross the safety limits, and reactor becomes unsafe for operation. To avoid such conditions various fault monitoring and controlling systems have been used in nuclear power reactors. In the recent years, machine learning techniques have been used to build automatic fault prediction system which can be used as a fault monitoring system of nuclear power plant. In this paper, we propose our approach to build machine learning based fault prediction system for the PHT system of CANDU (Canada Deuterium Uranium) type reactor. The proposed approach is based on the classification techniques of supervised machine learning. Whereas, to validate our approach, we performed an experiment by extracting the historical data of the following reactor's parameters: coolant flow rate, coolant header temperature, and neutron power rate. After extracting the parameter's data, we labeled the data with the following three plant statuses: running, transient and shutdown. Finally, we used the binary tree and artificial neural network techniques of machine learning and built models which successfully classified the three statuses of the plant. In our experiment, the maximum obtained accuracy of our model is 99%. It shows that our proposed system can be used to predict fault in PHT loop.
机译:在核动力反应堆中,堆芯的温度必须保持在安全极限之内。这可以通过监视和控制核反应堆的各种系统参数来实现。核反应堆的重要系统之一是一次换热(PHT)系统。因此,PHT系统中的任何故障都可能导致PHT参数超过安全极限的状态,并且反应堆将变得不安全。为了避免这种情况,已经在核动力反应堆中使用了各种故障监视和控制系统。近年来,机器学习技术已被用于构建自动故障预测系统,该系统可以用作核电站的故障监控系统。在本文中,我们提出了一种为CANDU(加拿大氘铀)反应堆的PHT系统构建基于机器学习的故障预测系统的方法。所提出的方法基于监督机器学习的分类技术。而为验证我们的方法,我们通过提取以下反应堆参数的历史数据进行了实验:冷却剂流量,冷却剂总管温度和中子功率率。提取参数的数据后,我们用以下三种工厂状态标记数据:运行,瞬态和关闭。最后,我们使用了机器学习的二叉树和人工神经网络技术,并建立了模型,成功地对了工厂的三种状态进行了分类。在我们的实验中,我们模型获得的最大精度为99%。结果表明,我们提出的系统可用于预测PHT回路中的故障。

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