双折射
材料科学
紫外线
计算机科学
人工智能
吞吐量
匹配(统计)
深度学习
机器学习
理论(学习稳定性)
非线性系统
过程(计算)
光电子学
光学
物理
电信
数学
量子力学
操作系统
统计
无线
作者
Mengfan Wu,E. V. Tikhonov,Abudukadi Tudi,Ivan A. Kruglov,Xueling Hou,Congwei Xie,Shilie Pan,Zhihua Yang
标识
DOI:10.1002/adma.202300848
摘要
Abstract The development of a data‐driven science paradigm is greatly revolutionizing the process of materials discovery. Particularly, exploring novel nonlinear optical (NLO) materials with the birefringent phase‐matching ability to deep‐ultraviolet (UV) region is of vital significance for the field of laser technologies. Herein, a target‐driven materials design framework combining high‐throughput calculations (HTC), crystal structure prediction, and interpretable machine learning (ML) is proposed to accelerate the discovery of deep‐UV NLO materials. Using a dataset generated from HTC, an ML regression model for predicting birefringence is developed for the first time, which exhibits a possibility of achieving fast and accurate prediction. Essentially, crystal structures are adopted as the only known input of this model to establish a close structure‐property relationship mapping birefringence. Utilizing the ML‐predicted birefringence which can affect the shortest phase‐matching wavelength, a full list of potential chemical compositions based on an efficient screening strategy is identified. Further, eight structures with good stability are discovered to show potential applications in the deep‐UV region, owing to their promising NLO‐related properties. This study provides a new insight into the discovery of NLO materials and this design framework can identify desired materials with high performances in the broad chemical space at a low computational cost.
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