Periodic Reporting for period 1 - ML4Catalysis (Combining Machine Learning and Quantum Chemistry for the Design of Homogeneous Catalysts)
Okres sprawozdawczy: 2021-09-01 do 2023-08-31
In the past decade, machine learning (ML) techniques have reduced the cost of simulations substantially while mostly preserving the accuracy of the parent methods. However, these methods need large amounts of data, which requires the use of black-box parent methods that are mostly of so-called single-reference type (e.g. DFT or coupled cluster theory). Many first-row transition metal complexes, which are promising candidates for cheap homogeneous catalysts, have a complicated electronic structure that requires the use of more sophisticated multireference (MR) methods. These are not easily set up in a black-box fashion for a large number of compounds, which is why they are not yet widespread for labeling machine learning data.
The main objective of ML4Catalysis was the automation of MR calculations in order to train so-called Δ-ML potentials that are more accurate for transition metal complexes. These potentials could then be used for the screening and design of new homogeneous catalysts.
The autoCAS automated active space selection tool developed by our collaborators at ETH Zürich removes the need for manual interference in MR calculations. However, this tool is based on a relatively expensive density matrix renormalization group calculation. Therefore, we worked on developing an ML method that can learn active spaces within a set of related compounds belonging to a common reaction network. As an application, we chose the oxidation of hydrocarbons like methane to the corresponding alcohol like methanol. This reaction is of high importance for generating valuable feedstock chemicals. It can be catalyzed by the homogeneous catalyst [Fe(TPA)(H2O)]3+ with hydrogen peroxide as the oxidant. The automated generation of the reaction network was performed with the Chemoton software. In order to prevent a too large combinatorial explosion of the reaction network, a new filter was implemented in Chemoton in the course of ML4Catalysis. This work is still ongoing and will be published as an open-access journal article in the future.
The results of ML4Catalysis were presented in two lectures and one poster contribution at international conferences. Furthermore, research data supporting all our findings was and will be made openly available.