Ulsan National Institute of Science and Technology, 50 UNIST-gil, Ulju-gun, Ulsan 44919, Korea.
Sensors (Basel). 2020 Oct 15;20(20):5839. doi: 10.3390/s20205839.
Emergency situations in nuclear power plants are accompanied by an automatic reactor shutdown, which gives a big task burden to the plant operators under highly stressful conditions. Diagnosis of the occurred accident is an essential sequence for optimum mitigations; however, it is also a critical source of error because the results of accident identification determine the task flow connected to all subsequent tasks. To support accident identification in nuclear power plants, recurrent neural network (RNN)-based approaches have recently shown outstanding performances. Despite the achievements though, the robustness of RNN models is not promising because wrong inputs have been shown to degrade the performance of RNNs to a greater extent than other methods in some applications. In this research, an accident diagnosis system that is tolerant to sensor faults is developed based on an existing RNN model and tested with anticipated sensor errors. To find the optimum strategy to mitigate sensor error, Missforest, selected from among various imputation methods, and gated recurrent unit with decay (GRUD), developed for multivariate time series imputation based on the RNN model, are compared to examine the extent that they recover the diagnosis accuracies within a given threshold.
核电站紧急情况伴随着反应堆自动停机,这给在高压力条件下的工厂操作人员带来了巨大的任务负担。事故诊断是最佳缓解的必要环节;然而,这也是一个关键的错误源,因为事故识别的结果决定了与所有后续任务相关的任务流。为了支持核电站的事故识别,基于递归神经网络(RNN)的方法最近表现出了出色的性能。尽管取得了这些成就,但是 RNN 模型的鲁棒性并不理想,因为错误的输入在某些应用中比其他方法更大程度地降低了 RNN 的性能。在这项研究中,开发了一种基于现有 RNN 模型的对传感器故障具有容错能力的事故诊断系统,并使用预期的传感器误差进行了测试。为了找到减轻传感器误差的最佳策略,从各种插补方法中选择了 Missforest,并与 gated recurrent unit with decay (GRUD) 进行了比较,后者是为基于 RNN 模型的多元时间序列插补而开发的,以检查它们在给定阈值内恢复诊断准确性的程度。