MOF Synthesis Prediction Enabled by Automatic Data Mining and Machine Learning**

Yi Luo(Karlsruhe Institute of Technology), Saientan Bag(Karlsruhe Institute of Technology), Orysia Zaremba(Basque Center for Materials, Applications and Nanostructures), Adrian Cierpka(Karlsruhe Institute of Technology), Jacopo Andreo(Basque Center for Materials, Applications and Nanostructures), Stefan Wuttke(Ikerbasque), Pascal Friederich(Karlsruhe Institute of Technology), Manuel Tsotsalas(Karlsruhe Institute of Technology)
Angewandte Chemie International Edition
February 1, 2022
Cited by 224Open Access
Full Text

Abstract

Despite rapid progress in the field of metal-organic frameworks (MOFs), the potential of using machine learning (ML) methods to predict MOF synthesis parameters is still untapped. Here, we show how ML can be used for rationalization and acceleration of the MOF discovery process by directly predicting the synthesis conditions of a MOF based on its crystal structure. Our approach is based on: i) establishing the first MOF synthesis database via automatic extraction of synthesis parameters from the literature, ii) training and optimizing ML models by employing the MOF database, and iii) predicting the synthesis conditions for new MOF structures. The ML models, even at an initial stage, exhibit a good prediction performance, outperforming human expert predictions, obtained through a synthesis survey. The automated synthesis prediction is available via a web-tool on https://mof-synthesis.aimat.science.


Related Papers

No related papers found

Powered by citation graph analysis