卟啉
分子
吸附
结合能
人工智能
光谱学
化学
过渡金属
计算机科学
机器学习
化学物理
计算化学
生物系统
光化学
物理化学
物理
有机化学
原子物理学
量子力学
生物
催化作用
作者
Ke Yao,Song Wang,Yan Huang,Min Hu,Donglai Zhou,Yi Luo,Sheng Ye,Guozhen Zhang,Jun Jiang
标识
DOI:10.1021/acs.jpclett.3c03002
摘要
The study of molecular adsorption is crucial for understanding various chemical processes. Spectroscopy offers a convenient and non-invasive way of probing structures of adsorbed states and can be used for real-time observation of molecular binding profiles, including both structural and energetic information. However, deciphering atomic structures from spectral information using the first-principles approach is computationally expensive and time-consuming because of the sophistication of recording spectra, chemical structures, and their relationship. Here, we demonstrate the feasibility of a data-driven machine learning approach for predicting binding energy and structural information directly from vibrational spectra of the adsorbate by using CO adsorption on iron porphyrin as an example. Our trained machine learning model is not only interpretable but also readily transferred to similar metal-nitrogen-carbon systems with comparable accuracy. This work shows the potential of using structure-encoded spectroscopic descriptors in machine learning models for the study of adsorbed states of molecules on transition metal complexes.
科研通智能强力驱动
Strongly Powered by AbleSci AI