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A physics-based machine learning study of the behavior of interstitial helium in single crystal W-Mo binary alloys

机译:单晶W-MO二元合金中间质氦行为的基于物理学机器学习研究

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摘要

In this work, the behavior of dilute interstitial helium in W-Mo binary alloys was explored through the application of a first principles-informed neural network (NN) in order to study the early stages of helium-induced damage and inform the design of next generation materials for fusion reactors. The neural network (NN) was trained using a database of 120 density functional theory (DFT) calculations on the alloy. The DFT database of computed solution energies showed a linear dependence on the composition of the first nearest neighbor metallic shell. This NN was then employed in a kinetic Monte Carlo simulation, which took into account two pathways for helium migration, the T-T pathway (T: Tetreahedral) and the T-O-T pathway (a second order saddle in both W and Mo) (O: Octahedral). It was determined that the diffusivity of interstitial helium in W-Mo alloys can vary by several orders of magnitude depending on the composition. Moreover, T-O-T pathways were found to dominate the T-T pathways for all alloy compositions for temperatures over about 450 K. Heterogeneous structures were also examined to account for radiation-induced segregation. It was observed that diffusion was fast when W segregated to the grain interior region and Mo to the grain outer region and was slow for the reverse situation. This behavior was explained by studying the energy landscape. Finally, thermodynamic simulations indicated that Mo-rich regions of the alloy were most favorable for binding the interstitial helium and may be the sites for the nucleation of helium bubbles.
机译:在这项工作中,通过应用第一个原则信息的神经网络(NN)探讨了W-Mo二元合金中稀释间质氦的行为,以研究氦诱导的损伤的早期阶段并告知下一个设计熔融反应器的发电材料。使用合金的120密度泛函理论(DFT)计算的数据库接受了神经网络(NN)。计算的解决方案能量的DFT数据库显示了对第一邻居金属壳的组成的线性依赖性。然后将该NN用于动力学蒙特卡罗模拟中,其考虑了用于氦迁移的两种途径,TT途径(T:TETREAHEDRAL)和TOT途径(W和MO两者中的二阶马鞍)(O:八面体) 。确定W-Mo合金中的间质氦的扩散性可以根据组合物的几个数量级而变化。此外,发现T-O-T途径占据所有合金组合物的T-T途径,以超过约450k的温度。还检查异质结构以考虑辐射诱导的偏析。观察到,当W时,扩散是快速的,当W当晶粒内部区域和mo到晶粒外部区域并且对于反向情况而缓慢。通过研究能量景观来解释这种行为。最后,热力学模拟表明合金的富含MO的区域最有利,用于结合间质氦,可以是氦气泡沫成核的位点。

著录项

  • 来源
    《Journal of Applied Physics 》 |2020年第17期| 175904.1-175904.15| 共15页
  • 作者

    Adib J. Samin;

  • 作者单位

    Department of Engineering Physics Air Force Institute of Technology 2950 Hobson Way Wright-Patterson Air Force Base Ohio 45433 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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