Using Machine Learning to Predict the Dissociation Energy of Organic Carbonyls.
Haishan YuYing WangXijun WangJinxiao ZhangSheng YeYan HuangYi LuoEdward SharmanShi-Lu ChenJun JiangPublished in: The journal of physical chemistry. A (2020)
Bond dissociation energy (BDE), an indicator of the strength of chemical bonds, exhibits great potential for evaluating and screening high-performance materials and catalysts, which are of critical importance in industrial applications. However, the measurement or computation of BDE via conventional experimental or theoretical methods is usually costly and involved, substantially preventing the BDE from being applied to large-scale and high-throughput studies. Therefore, a potentially more efficient approach for estimating BDE is highly desirable. To this end, we combined first-principles calculations and machine learning techniques, including neural networks and random forest, to explore the inner relationships between carbonyl structure and its BDE. Results show that machine learning can not only effectively reproduce the computed BDEs of carbonyls but also in turn serve as guidance for the rational design of carbonyl structure aimed at optimizing performance.
Keyphrases
- machine learning
- neural network
- high throughput
- artificial intelligence
- big data
- heavy metals
- electron transfer
- wastewater treatment
- deep learning
- transition metal
- magnetic resonance imaging
- single cell
- highly efficient
- density functional theory
- molecular dynamics simulations
- risk assessment
- diffusion weighted imaging