LLM Reasoning 相关度: 7/10

Universal Fine-Grained Symmetry Inference and Enforcement for Rigorous Crystal Structure Prediction

Shi Yin, Jinming Mu, Xudong Zhu, Lixin He
arXiv: 2602.17176v1 发布: 2026-02-19 更新: 2026-02-19

AI 摘要

利用大语言模型和扩散模型,结合晶体对称性约束,实现更精确的晶体结构预测。

主要贡献

  • 使用LLM编码化学语义并生成Wyckoff模式
  • 通过约束优化严格执行对称性一致性
  • 将对称性约束整合到扩散模型中

方法论

利用LLM生成晶体结构模板,通过约束优化保证对称性,并将其融入扩散模型以预测晶体结构。

原文摘要

Crystal structure prediction (CSP), which aims to predict the three-dimensional atomic arrangement of a crystal from its composition, is central to materials discovery and mechanistic understanding. Existing deep learning models often treat crystallographic symmetry only as a soft heuristic or rely on space group and Wyckoff templates retrieved from known structures, which limits both physical fidelity and the ability to discover genuinely new material structures. In contrast to retrieval-based methods, our approach leverages large language models to encode chemical semantics and directly generate fine-grained Wyckoff patterns from composition, effectively circumventing the limitations inherent to database lookups. Crucially, we incorporate domain knowledge into the generative process through an efficient constrained-optimization search that rigorously enforces algebraic consistency between site multiplicities and atomic stoichiometry. By integrating this symmetry-consistent template into a diffusion backbone, our approach constrains the stochastic generative trajectory to a physically valid geometric manifold. This framework achieves state-of-the-art performance across stability, uniqueness, and novelty (SUN) benchmarks, alongside superior matching performance, thereby establishing a new paradigm for the rigorous exploration of targeted crystallographic space. This framework enables efficient expansion into previously uncharted materials space, eliminating reliance on existing databases or a priori structural knowledge.

标签

晶体结构预测 材料发现 大语言模型 扩散模型 对称性

arXiv 分类

cond-mat.mtrl-sci cs.AI physics.comp-ph