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首页> 外文期刊>Annals of nuclear energy >Artificial Neural Network Modelling of In-Reactor Diametral Creep of Zr2.5%Nb Pressure Tubes of Indian PHWRs
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Artificial Neural Network Modelling of In-Reactor Diametral Creep of Zr2.5%Nb Pressure Tubes of Indian PHWRs

机译:印度压水堆Zr2.5%Nb压力管反应器内径向蠕变的人工神经网络建模

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摘要

A model is developed to predict the in-reactor diametral creep in the Zr-2.5%Nb pressure tube of Indian Pressurized Heavy Water power reactors (PHWR) using Artificial Neural Network (ANN), The inputs of the neural network are alloy composition of the tube (concentration of Nb, O, N and Fe), mechanical properties (YS, UTS, %EL), temperature and fluence whereas diametral creep rate is the output. Measured diametral creep rate data from the sampled pressure tubes operating in Indian PHWRs at Rajasthan Atomic Power Station (RAPS 2), Kakrapar Atomic Power Station (KAPS 2) and Kaiga Generating Station (KGS) are employed to develop the model. A three-layer feed-forward ANN is trained with Levenberg-Marquardt training algorithm. It has been shown that the developed ANN model can efficiently and accurately predict the diametral creep of pressure tube. Results show the high significance of 0 concentration and mechanical properties in determining diametral creep rate.
机译:利用人工神经网络(ANN)建立了一个模型,以预测印度加压重水动力堆(PHWR)Zr-2.5%Nb压力管中的反应堆内径向蠕变。神经网络的输入为合金的合金成分。管(Nb,O,N和Fe的浓度),机械性能(YS,UTS,%EL),温度和注量,而径向蠕变速率是输出。来自印度拉贾斯坦邦原子能发电站(RAPS 2),卡克拉帕尔原子能发电站(KAPS 2)和凯加发电站(KGS)的印度PHWR中采样的压力管的测得的径向蠕变率数据被用于开发模型。使用Levenberg-Marquardt训练算法训练三层前馈ANN。结果表明,所建立的人工神经网络模型可以有效,准确地预测压力管的径向蠕变。结果表明,0浓度和机械性能对确定径向蠕变速率具有重要意义。

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