用于快速提取和检测材料结构特征的全息矩阵法

Minghao Li, Wenfu Wang, Tinghong Gao, Chenxu Wang, Qidan Wang, Ji An, Yuzhen Tian
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引用次数: 0

摘要

提取材料的结构特征是研究电子信息和生物化学等领域新特性的基础。然而,现有的实验方法在足够深入地分析材料结构方面存在局限性。因此,从模拟计算获得的原子坐标中快速、准确地提取和分析结构特征,对于推进新材料特性的探索至关重要。在此,我们提出了一种通过将全息矩阵法与贝叶斯优化和张量流运算相结合来提取材料结构特征的方法。所提出的算法能有效地对材料内部的集群结构进行分类和统计分析。在一个包含 8000 个原子的系统上进行的实验验证表明,正确识别率超过 99.213%。此外,该算法的平均识别时间约为[式中:见正文][式中:见正文]秒。所提出的分析框架具有可扩展性和鲁棒性,为未来复杂材料大数据分析的进步奠定了算法基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Holographic matrix method for rapid material structural feature extraction and detection
The extraction of the structural features of materials is fundamental for investigating novel properties in fields such as electronic information and biochemistry. However, existing experimental methods have limitations in analyzing material structures with sufficient depth. Therefore, rapid and accurate extraction and analysis of structural features from atomic coordinates obtained through simulation calculations are crucial for advancing the exploration of new material properties. Herein, we propose an approach for extracting the structural features of materials by combining the holographic matrix method with Bayesian optimization and tensor flow operations. The proposed algorithm efficiently classifies and statistically analyzes cluster structures within materials. Experimental validation conducted on a system comprising 8000 atoms demonstrated a correct recognition rate exceeding 99.213%. Moreover, the algorithm achieved an average recognition time of approximately [Formula: see text][Formula: see text]s. The proposed analytical framework exhibits scalability and robustness, establishing an algorithmic foundation for future advancements in big data analytics for complex materials.
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