TY - JOUR
T1 - GCN-Based Framework for Materials Screening and Phase Identification
AU - Qin, Zhenkai
AU - Luo, Qining
AU - Qin, Weiqi
AU - Chen, Xiaolong
AU - Zhang, Hongfeng
AU - Wong, Cora Un In
N1 - Publisher Copyright:
© 2025 by the authors.
PY - 2025/3
Y1 - 2025/3
N2 - This study proposes a novel framework using graph convolutional networks to analyze and interpret X-ray diffraction patterns, addressing challenges in phase identification for multi-phase materials. By representing X-ray diffraction patterns as graphs, the framework captures both local and global relationships between diffraction peaks, enabling accurate phase identification even in the presence of overlapping peaks and noisy data. The framework outperforms traditional machine learning models, achieving a precision of 0.990 and a recall of 0.872. This performance is attained with minimal hyperparameter tuning, making it scalable for large-scale material discovery applications. Data augmentation, including synthetic data generation and noise injection, enhances the model’s robustness by simulating real-world experimental variations. However, the model’s reliance on synthetic data and the computational cost of graph construction and inference remain limitations. Future work will focus on integrating real experimental data, optimizing computational efficiency, and exploring lightweight architectures to improve scalability for high-throughput applications.
AB - This study proposes a novel framework using graph convolutional networks to analyze and interpret X-ray diffraction patterns, addressing challenges in phase identification for multi-phase materials. By representing X-ray diffraction patterns as graphs, the framework captures both local and global relationships between diffraction peaks, enabling accurate phase identification even in the presence of overlapping peaks and noisy data. The framework outperforms traditional machine learning models, achieving a precision of 0.990 and a recall of 0.872. This performance is attained with minimal hyperparameter tuning, making it scalable for large-scale material discovery applications. Data augmentation, including synthetic data generation and noise injection, enhances the model’s robustness by simulating real-world experimental variations. However, the model’s reliance on synthetic data and the computational cost of graph construction and inference remain limitations. Future work will focus on integrating real experimental data, optimizing computational efficiency, and exploring lightweight architectures to improve scalability for high-throughput applications.
KW - X-ray diffraction pattern analysis
KW - deep learning for crystallography
KW - diffraction peak correlation
KW - graph-based phase identification
UR - http://www.scopus.com/inward/record.url?scp=86000637035&partnerID=8YFLogxK
U2 - 10.3390/ma18050959
DO - 10.3390/ma18050959
M3 - Article
AN - SCOPUS:86000637035
SN - 1996-1944
VL - 18
JO - Materials
JF - Materials
IS - 5
M1 - 959
ER -