利用数据驱动模型预测双相条件下 Zr-Nb 合金的蠕变行为

IF 2.1 4区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Saptarshi Dutta, Puthuveettil Sreedharan Robi
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引用次数: 0

摘要

压力管(PTs)在核电站(NPPs)的安全高效运行中发挥着重要作用,因为它们包含燃料束并提供结构完整性。蠕变已被确定为压力管的主要降解机制之一,压力管主要由 Zr-Nb 合金制成。通过材料的蠕变曲线可以了解其蠕变行为的性质。本研究对 Zr-2.5Nb PT 合金进行了加速蠕变实验,应力和温度范围分别为 22-58 MPa 和 600-850 ℃。开发了两个数据驱动模型,即径向基函数神经网络(RBFNN)和最小平方拟合(LSF),以模拟蠕变曲线的非线性。模型的输入参数包括施加应力、测试温度和失效时间。据观察,尽管 LSF 可以预测一级蠕变区,但却无法预测二级和三级蠕变区之间的过渡。然而,RBFNN 模型预测的蠕变曲线与实验结果非常吻合,置信度≈ 0.99。随后还分别进行了两组蠕变实验,以验证所提模型的准确性。研究结果证明了 RBFNN 技术模拟蠕变曲线复杂行为的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of creep behavior of Zr-Nb alloy under dual-phase condition using data driven models

Prediction of creep behavior of Zr-Nb alloy under dual-phase condition using data driven models

Prediction of creep behavior of Zr-Nb alloy under dual-phase condition using data driven models

Pressure tubes (PTs) play an important role in the safe and efficient operation of Nuclear Power Plants (NPPs) as they contain the fuel bundles and provide structural integrity. Creep has been identified as one of the main degradation mechanisms of PTs, which are made widely of Zr-Nb alloys. The creep curve of a material gives an insight into the nature of its creep behavior. In the present investigation, accelerated creep experiments were conducted on Zr-2.5Nb PT alloy in the stress and temperature range of 22–58 MPa and 600–850 °C, respectively. Two data-driven models, namely Radial Basis Function Neural Network (RBFNN) and Least Square Fit (LSF) were developed to simulate the non-linearity of the creep curves. Applied stress, test temperature, and time to failure were taken as the input parameters for the models. It was observed that although the LSF could predict the primary creep zone, it failed to predict the transition between the secondary and tertiary creep region. However, the creep curves predicted by the RBFNN model were in close agreement with the experimental results, having a confidence level of ≈ 0.99. Two separate sets of creep experiments were also done later to verify the accuracy of the proposed models. The results from the study established the ability of the RBFNN technique to simulate the complex behavior of the creep curves.

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来源期刊
Mechanics of Time-Dependent Materials
Mechanics of Time-Dependent Materials 工程技术-材料科学:表征与测试
CiteScore
4.90
自引率
8.00%
发文量
47
审稿时长
>12 weeks
期刊介绍: Mechanics of Time-Dependent Materials accepts contributions dealing with the time-dependent mechanical properties of solid polymers, metals, ceramics, concrete, wood, or their composites. It is recognized that certain materials can be in the melt state as function of temperature and/or pressure. Contributions concerned with fundamental issues relating to processing and melt-to-solid transition behaviour are welcome, as are contributions addressing time-dependent failure and fracture phenomena. Manuscripts addressing environmental issues will be considered if they relate to time-dependent mechanical properties. The journal promotes the transfer of knowledge between various disciplines that deal with the properties of time-dependent solid materials but approach these from different angles. Among these disciplines are: Mechanical Engineering, Aerospace Engineering, Chemical Engineering, Rheology, Materials Science, Polymer Physics, Design, and others.
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