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Real-time Interpretation of Neutron Vibrational Spectra with Symmetry-Equivariant Hessian Matrix Prediction

arXiv · Chemical Physics(2025)

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Abstract
The vibrational behavior of molecules serves as a crucial fingerprint of their structure, chemical state, and surrounding environment. Neutron vibrational spectroscopy provides comprehensive measurements of vibrational modes without selection rule restrictions. However, analyzing and interpreting the resulting spectra remains a computationally formidable task. Here, we introduce a symmetry-aware neural network that directly predicts Hessian matrices from molecular structures, thereby enabling rapid vibrational spectral reconstruction. Unlike traditional approaches that focus on eigenvalue prediction, the Hessian matrix provides richer, more fundamental information with broader applications and superior extrapolation. This approach also paves the way for predicting other properties, such as reaction pathways. Trained on small molecules, our model achieves spectroscopic-level accuracy, allowing real-time, unambiguous peak assignment. Moreover, it maintains high accuracy for larger molecules, demonstrating strong transferability. This adaptability unlocks new capabilities, including on-the-fly spectral interpretation for future autonomous laboratories, and offers insights into molecular design for targeted chemical pathways.
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要点】:本文提出了一种利用对称性等价Hessian矩阵预测的神经网络,实现了对中子振动光谱的实时解析,提高了振动模式分析的速度和准确性,具有广泛的化学应用潜力。

方法】:作者使用了一种对称性感知的神经网络,该网络直接从分子结构预测Hessian矩阵,而非传统的特征值预测,从而可以更快速地重构振动光谱。

实验】:该模型在小分子数据集上进行了训练,并达到了光谱级别的精确度,对于较大分子同样保持高准确度,显示出良好的迁移性。论文中未明确提到数据集的具体名称,但根据描述,数据集包含小分子和较大分子的分子结构。