Machine Learning for the Yield Prediction of Co2 Cyclization Reaction Catalyzed by the Ionic Liquids

32 Pages Posted: 5 Sep 2022

See all articles by Jinya Li

Jinya Li

Henan University

Shuya Dong

Henan University

Beibei An

Henan University

Zhengkun Zhang

Henan University

Yuanyuan Li

Henan University

Li Wang

Henan University

Jinglai Zhang

Henan University

Abstract

Ionic liquids are one of the excellent catalysts for the CO 2 cycloaddition reaction, which is an effective means to realize CO 2 utilization and alleviate environmental problems. However, the design of ionic liquids catalysts has great blindness due to the diversity of their anion and cation structures. Herein, we collected a database of 866 samples for CO 2 cyclization with ionic liquids as catalysts and established the yield prediction model with various machine learning regression algorithms. Together with density function theory (DFT) calculated molecular electronic properties and the experimental conditions as the input descriptors, RF model has better prediction accuracy than SVR and MLP for the whole data. When the dataset was subdivided into different subsets based on substrates and ionic liquids, the prediction accuracy of the model was also improved. For the imidazole subset with no additional solvent or additive added, the RF model achieves good accuracy with the R 2 of 0.80 for the test data. Moreover, the shapely additive explanation (SHAP) method was used to interpret the ML models. The strategy of refining the descriptors and dataset used in our work provides guidance for establishing highly reliable machine learning models in the chemistry reactions.

Keywords: machine learning, Ionic liquids, CO2 cycloaddition, Yield prediction, density functional theory

Suggested Citation

Li, Jinya and Dong, Shuya and An, Beibei and Zhang, Zhengkun and Li, Yuanyuan and Wang, Li and Zhang, Jinglai, Machine Learning for the Yield Prediction of Co2 Cyclization Reaction Catalyzed by the Ionic Liquids. Available at SSRN: https://ssrn.com/abstract=4209948 or http://dx.doi.org/10.2139/ssrn.4209948

Jinya Li

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Shuya Dong

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Beibei An

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Zhengkun Zhang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Yuanyuan Li

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Li Wang (Contact Author)

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Jinglai Zhang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

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