吸附
解吸
动力学
动能
化学
吸光度
瞬态(计算机编程)
红外光谱学
生物系统
光谱学
化学反应
化学动力学
反应机理
化学物理
材料科学
物理化学
计算机科学
催化作用
色谱法
物理
有机化学
量子力学
生物
操作系统
作者
J.P. Shukla,Xiaohui Qu,Zubin Darbari,Marija Iloska,J. Anibal Boscoboinik,Qin Wu
标识
DOI:10.26434/chemrxiv-2024-bt323
摘要
We demonstrate a data-driven approach to interpret surface reactions by combining time-resolved gas-pulsing infrared spectroscopy with Chemical Reaction Neural Networks (CRNN). Using CO adsorption and desorption on Pd(111) at 460K-490K as a model system, we show how transient kinetic data can reveal detailed reaction mechanisms. Starting with a simple one-species model, we systematically evaluate increasingly complex mechanisms involving hollow- and bridge-site adsorption. Despite similar goodness of fit to the same experimental absorbance data, our models predict distinct coverage dynamics for different adsorption sites. Through analysis of spectral peak stability and predicted dynamics, we identify a mechanism where CO primarily adsorbs on bridge sites followed by rapid conversion to hollow sites as the most physically consistent with experimental observations. This work provides a framework for extracting mechanistic insights from limited experimental data, demonstrating how machine learning can bridge the gap between transient kinetic measurements and molecular-level understanding of surface reactions.
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