铼
材料科学
辐照
钨
动力学蒙特卡罗方法
空位缺陷
星团(航天器)
相图
化学物理
相(物质)
结晶学
蒙特卡罗方法
冶金
化学
核物理学
物理
有机化学
统计
程序设计语言
计算机科学
数学
作者
Yu‐Hao Li,Fang-Ya Yue,Zhong-Zhu Li,Peng-Wei Hou,Yu-Ze Niu,Hui-Zhi Ma,Ying Zhang,Xunxiang Hu,Huiqiu Deng,Hong-Bo Zhou,Fei Gao,Guang-Hong Lü
标识
DOI:10.1016/j.jmst.2022.10.056
摘要
We have systemically investigated the synergistic evolution of rhenium (Re) and irradiation defects in tungsten (W)-Re alloys under different temperatures and irradiation doses using object Kinetic Monte Carlo method. Our results revealed the underlying mechanism for the transition of Re effect on W from beneficial to harmful during the Re-defects evolution with the increase of irradiation dose, in which temperature always plays a critical role. On the one hand, Re will significantly promote the defect annihilation at low irradiation doses and high temperatures, thereby effectively reducing their sizes and number densities. This is due to the formation of stable Re-SIAs complexes that can be eliminated by the mobile vacancy-type defects, whereas the transition of the migration pattern of SIAs only plays a weak role in the defect recombination in W-Re system. On the other hand, with the increase of irradiation dose, Re will aggregate to form Re-rich clusters or even precipitates. Interestingly, the formation mechanism of Re-rich clusters is also dependent on temperature. At low temperatures, the interstitial-mediated mechanism plays a crucial role in the Re-rich cluster formation, while at high temperatures, both SIA-type and vacancy-type defects will act as the transport carriers of Re to promote their clustering. Accordingly, the critical conditions for the transition of Re from beneficial to harmful and the formation of Re-rich clusters at different temperatures and irradiation doses are given with the help of the phase diagram. Our work presents the temperature dependence of the synergy of Re and irradiation defects in W-Re in fusion-relevant environment, which provides a good reference for the development of radiation-resistant materials and the prediction of W performance in fusion reactors.
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