Machine learning offers new framework for heterogeneous catalyst data analysis

by Pelican Press
2 minutes read

Machine learning offers new framework for heterogeneous catalyst data analysis

Machine learning offers new framework for heterogeneous catalyst data analysis
Visual abstract of ML-guided catalyst design 1: The figure illustrates the process of oxidative methane coupling, where the catalyst consists of M1-M2-M3/support material. Credit: BIFOLD

Machine learning (ML) transforms the design of heterogeneous catalysts, traditionally driven by trial and error due to the complex interplay of components. BIFOLD researcher Parastoo Semnani from the ML group of BIFOLD Co-Director Klaus-Robert Müller (TU Berlin) and additional researchers from BASLEARN, BASF SE, and others have introduced a new ML framework in the Journal of Physical Chemistry C.

Machine learning (ML) models have recently become popular in the field of heterogeneous catalyst design. The inherent complexity of the interactions between catalyst components is very high, leading to both synergistic and antagonistic effects on catalyst yield that are difficult to disentangle. Therefore, the discovery of well-performing catalysts has long relied on serendipitous trial and error.

In the paper, the researchers introduce a machine learning framework that deals with the challenges of experimental data and provides robust predictions of catalyst performance. Additionally, they incorporate explainable AI methods in the framework that help determine which catalysis components contribute more strongly towards high-performance catalysts.

The high costs associated with generating experimental catalyst data often result in small datasets biased towards low-performance catalysts.

Machine learning accelerates catalyst discovery
Visual abstract of ML-guided catalyst design 2. Credit: BIFOLD

“We believe that our framework combines best practices in the field and provides a conceptual blueprint on how to work with and analyze experimental catalyst data, which should prove useful to future machine learning research efforts in this field, and help push AI-assisted Catalyst design forward,” concludes Semnani.

This framework tackles small, unbalanced datasets and predicts catalyst performance robustly. By integrating explainable AI, it identifies key catalyst components driving efficiency. This innovative approach offers a blueprint for future AI-driven breakthroughs in catalyst discovery.

More information:
Parastoo Semnani et al, A Machine Learning and Explainable AI Framework Tailored for Unbalanced Experimental Catalyst Discovery, The Journal of Physical Chemistry C (2024). DOI: 10.1021/acs.jpcc.4c05332

Provided by
Berlin Institute for the Foundations of Learning and Data

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Machine learning offers new framework for heterogeneous catalyst data analysis (2024, December 19)
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