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Neural-based time series forecasting of loss of coolant accidents in nuclear power plants

机译:基于神经的时间序列核电站冷却液事故损失的预测

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In the last few years, deep learning in neural networks demonstrated impressive successes in the areas of computer vision, speech and image recognition, text generation, and many others. However, sensitive engineering areas such as nuclear engineering benefited less from these efficient techniques. In this work, deep learning expert systems are utilized to model and predict time series progression of a design-basis nuclear accident, featuring a loss of coolant accident. Two major findings are accomplished in this work. First, the ability to train expert systems with high accuracy, which could help nuclear power plant operators to figure out plant responses during the accident. Second, building fast, efficient, and accurate deep models to simulate nuclear phenomena, which could be valuable to nuclear computational science. In this work, large amount of time series data is obtained from simulation tools by simulating different conditions of the base-caseominal accident scenario. Four critical outputs/responses are monitored during the accident (e.g. temperature, pressure, break flow rate, water level). Two approaches are adopted in this work. The first approach is to use feedforward deep neural networks (DNN) to fit all time steps and outputs in a single model. The second approach is to use long short-term memory (LSTM) to fit all time steps together for each reactor response separately. Both DNN and LSTM demonstrate very good performance in predicting the test and base-case scenarios, with accuracy as low as 92% and as high as 99%, where these test scenarios are unknown to the expert systems and are not included in the model training. In addition, both approaches demonstrate a significant reduction in computational costs, as the deep expert system is able to accurately predict the accident 100,000 times faster than the original simulation tool. Given sufficient data, the methodology adopted in this study demonstrates that DNN/LSTM expert systems can be used as a decision support system to model advanced time series phenomena within nuclear power plants with high accuracy and negligible computational costs. Published by Elsevier Ltd.
机译:在过去的几年里,神经网络的深度学习在计算机视觉,言语和图像识别,文本生成和许多其他领域中表现出令人印象深刻的成功。然而,核电工程等敏感工程领域从这些有效的技术中受益。在这项工作中,深度学习专家系统用于模拟和预测设计基础核事故的时间序列进展,具有丧失冷却液事故。在这项工作中完成了两个主要调查结果。首先,能够培训高精度的专家系统,这可以帮助核电厂运营商在事故中弄清楚植物反应。其次,建设快速,高效,准确的深层模型来模拟核现象,这可能对核计算科学有价值。在这项工作中,通过模拟基本情况/名义事故情景的不同条件来从仿真工具获得大量时间序列数据。在事故期间监测四种临界输出/响应(例如,温度,压力,断裂流速,水位)。这项工作采用了两种方法。第一种方法是使用前馈深神经网络(DNN)来适合单个模型中的所有时间步骤和输出。第二种方法是使用长短期存储器(LSTM)来分别为每个反应器响应组合在一起。 DNN和LSTM都表现出非常好的性能,在预测测试和基本情况方案时,精度低至92%,高达99%,这些测试场景未知为专家系统,并且不包括在模型培训中。此外,两种方法都表现出计算成本的显着降低,因为深层专家系统能够准确地预测事故,而不是原始仿真工具快100000倍。鉴于足够的数据,本研究采用的方法表明,DNN / LSTM专家系统可以用作决策支持系统,以高精度和可忽略的计算成本模拟核电站内的高级时间序列现象。 elsevier有限公司出版

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