LLM Reasoning 相关度: 5/10

AI-Driven Structure Refinement of X-ray Diffraction

Bin Cao, Qian Zhang, Zhenjie Feng, Taolue Zhang, Jiaqiang Huang, Lu-Tao Weng, Tong-Yi Zhang
arXiv: 2602.16372v1 发布: 2026-02-18 更新: 2026-02-18

AI 摘要

论文提出了一种基于人工智能和物理约束的XRD结构精修方法WPEM,提升了衍射数据分析的准确性和效率。

主要贡献

  • 提出了基于物理约束的整体模式分解和精修工作流程WPEM
  • 实现了布拉格定律在batch EM框架中的显式约束
  • 在复杂XRD数据分析中表现优于传统方法,应用于多种实际场景

方法论

WPEM利用概率混合密度模型完整轮廓,迭代推断成分分解的强度,同时保持峰中心与布拉格一致,进行结构精修。

原文摘要

Artificial intelligence can rapidly propose candidate phases and structures from X-ray diffraction (XRD), but these hypotheses often fail in downstream refinement because peak intensities cannot be stably assigned under severe overlap and diffraction consistency is enforced only weakly. Here we introduce WPEM, a physics-constrained whole-pattern decomposition and refinement workflow that turns Bragg's law into an explicit constraint within a batch expectation--maximization framework. WPEM models the full profile as a probabilistic mixture density and iteratively infers component-resolved intensities while keeping peak centres Bragg-consistent, producing a continuous, physically admissible intensity representation that remains stable in heavily overlapped regions and in the presence of mixed radiation or multiple phases. We benchmark WPEM on standard reference patterns (\ce{PbSO4} and \ce{Tb2BaCoO5}), where it yields lower $R_{\mathrm{p}}$/$R_{\mathrm{wp}}$ than widely used packages (FullProf and TOPAS) under matched refinement conditions. We further demonstrate generality across realistic experimental scenarios, including phase-resolved decomposition of a multiphase Ti--15Nb thin film, quantitative recovery of \ce{NaCl}--\ce{Li2CO3} mixture compositions, separation of crystalline peaks from amorphous halos in semicrystalline polymers, high-throughput operando lattice tracking in layered cathodes, automated refinement of a compositionally disordered Ru--Mn oxide solid solution (CCDC 2530452), and quantitative phase-resolved deciphering of an ancient Egyptian make-up sample from synchrotron powder XRD. By providing Bragg-consistent, uncertainty-aware intensity partitioning as a refinement-ready interface, WPEM closes the gap between AI-generated hypotheses and diffraction-admissible structure refinement on challenging XRD data.

标签

X-ray Diffraction Structure Refinement Artificial Intelligence Physics-constrained Expectation-Maximization

arXiv 分类

cond-mat.mtrl-sci cs.AI