量子退火
模拟退火
退火(玻璃)
量子
合金
材料科学
基态
格子(音乐)
计算机科学
量子计算机
量子机器学习
统计物理学
算法
物理
冶金
量子力学
声学
作者
Zhihao Xu,Wenjie Shang,Seongmin Kim,Eungkyu Lee,Tengfei Luo
标识
DOI:10.1038/s41524-024-01505-1
摘要
High Entropy Alloys (HEAs) have drawn great interest due to their exceptional properties compared to conventional materials. The configuration of HEA system is considered a key to their superior properties, but exhausting all possible configurations of atom coordinates and species to find the ground energy state is extremely challenging. In this work, we proposed a quantum annealing-assisted lattice optimization (QALO) algorithm, which is an active learning framework that integrates the Field-aware Factorization Machine (FFM) as the surrogate model for lattice energy prediction, Quantum Annealing (QA) as an optimizer and Machine Learning Potential (MLP) for ground truth energy calculation. By applying our algorithm to the NbMoTaW alloy, we reproduced the Nb depletion and W enrichment observed in bulk HEA. We found our optimized HEAs to have superior mechanical properties compared to the randomly generated alloy configurations. Our algorithm highlights the potential of quantum computing in materials design and discovery, laying a foundation for further exploring and optimizing structure-property relationships.
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