光离子化
电离
化学
量子化学
分析化学(期刊)
灵敏度(控制系统)
离子
分子
色谱法
有机化学
电子工程
工程类
作者
Matthew Stewart,Scot T. Martin
标识
DOI:10.1021/acsearthspacechem.3c00009
摘要
Molecular ionization potentials (IP) and photoionization cross sections (σ) can affect the sensitivity of photoionization detectors (PIDs) and other sensors for gaseous species. This study employs several methods of machine learning (ML) to predict IP and σ values at 10.6 eV (117 nm) for a dataset of 1251 gaseous organic species. The explicitness of the treatment of the species electronic structure progressively increases among the methods. The study compares the ML predictions of the IP and σ values to those obtained by quantum chemical calculations. The ML predictions are comparable in performance to those of the quantum calculations when evaluated against measurements. Pretraining further reduces the mean absolute errors (ε) compared to the measurements. The graph-based attentive fingerprint model was most accurate, for which ε
科研通智能强力驱动
Strongly Powered by AbleSci AI