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Efficient predictor of pressurized water reactor safety parameters by topological information embedded convolutional neural network

机译:基于拓扑信息嵌入卷积神经网络的压水堆安全参数高效预测器

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? 2023 Elsevier LtdAccurate forecasts for pressurized water reactor safety parameters are essential to ensure the safe operation of nuclear reactors. Potential of artificial neural networks on this task is limited owing to the lack of extracting the core location information. Sparse connections have unique advantages in discovering correlation between neighboring components and convolution kernels are designed to deal with two-dimensional information. In this paper, topological information embedded convolutional neural network (TCNN) was firstly established and utilized. This model enhanced the ability of fusing location features and component attributes through sparse connections and convolution layers. Datasets of China's Qinshan Nuclear Power Plant Phase II PWR was used to evaluate the performance of TCNN. Comparative and ablation experiments demonstrated that TCNN has superiority in working as efficient predictor for pressurized water reactor safety parameters, indicating that the proposed model promoted the digitalization of nuclear power plants.
机译:?2023 Elsevier Ltd压水反应堆安全参数的准确预测对于确保核反应堆的安全运行至关重要。由于缺乏提取核心位置信息,人工神经网络在这项任务上的潜力是有限的。稀疏连接在发现相邻组件之间的相关性方面具有独特的优势,卷积核旨在处理二维信息。本文首先建立并利用了拓扑信息嵌入卷积神经网络(TCNN)。该模型增强了通过稀疏连接和卷积层融合位置特征和组件属性的能力。利用中国秦山核电站二期压水堆数据集对TCNN的性能进行评价。对比和烧蚀实验表明,TCNN在作为压水堆安全参数的有效预测指标方面具有优势,表明所提模型促进了核电厂的数字化。

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