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通过机器学习加速晶体结构搜索预测的一种新型超硬氮化钨。

A novel superhard tungsten nitride predicted by machine-learning accelerated crystal structure search.

作者信息

Xia Kang, Gao Hao, Liu Cong, Yuan Jianan, Sun Jian, Wang Hui-Tian, Xing Dingyu

机构信息

National Laboratory of Solid State Microstructures, School of Physics and Collaborative Innovation Center of Advanced Microstructures, Nanjing University, Nanjing 210093, China.

National Laboratory of Solid State Microstructures, School of Physics and Collaborative Innovation Center of Advanced Microstructures, Nanjing University, Nanjing 210093, China.

出版信息

Sci Bull (Beijing). 2018 Jul 15;63(13):817-824. doi: 10.1016/j.scib.2018.05.027. Epub 2018 May 29.

DOI:10.1016/j.scib.2018.05.027
PMID:36658960
Abstract

Transition metal nitrides have been suggested to have both high hardness and good thermal stability with large potential application value, but so far stable superhard transition metal nitrides have not been synthesized. Here, with our newly developed machine-learning accelerated crystal structure searching method, we designed a superhard tungsten nitride, h-WN, which can be synthesized at pressure around 65 GPa and quenchable to ambient pressure. This h-WN is constructed with single-bonded armchair-like N rings and presents ionic-like features, which can be formulated as WN. It has a band gap of 1.6 eV at 0 GPa and exhibits an abnormal gap broadening behavior under pressure. Excitingly, this h-WN is found to be the hardest among transition metal nitrides known so far (Vickers hardness around 57 GPa) and also has a very high melting temperature (around 1,900 K). Additionally, the good gravimetric (3.1 kJ/g) and volumetric (28.0 kJ/cm) energy densities make this nitrogen-rich compound a potential high-energy-density material. These predictions support the designing rules and may stimulate future experiments to synthesize superhard and high-energy-density material.

摘要

过渡金属氮化物被认为兼具高硬度和良好的热稳定性,具有很大的潜在应用价值,但迄今为止尚未合成出稳定的超硬过渡金属氮化物。在此,我们利用新开发的机器学习加速晶体结构搜索方法,设计出一种超硬氮化钨h-WN,它可在约65 GPa的压力下合成,并能淬火至常压。这种h-WN由单键连接的扶手椅状N环构成,呈现出类似离子的特征,可表示为WN。它在0 GPa时的带隙为1.6 eV,在压力下表现出异常的带隙展宽行为。令人兴奋的是,这种h-WN被发现是迄今为止已知的过渡金属氮化物中硬度最高的(维氏硬度约为57 GPa),且熔点也非常高(约1900 K)。此外,良好的重量能量密度(3.1 kJ/g)和体积能量密度(28.0 kJ/cm)使这种富氮化合物成为一种潜在的高能量密度材料。这些预测支持了设计规则,并可能激发未来合成超硬和高能量密度材料的实验。

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