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Machine Learning Descriptors for Data-Driven Catalysis Study. | LitMetric

Machine Learning Descriptors for Data-Driven Catalysis Study.

Adv Sci (Weinh)

Hefei National Research Center for Physical Sciences at the Microscale, School of Chemistry and Materials Science, University of Science and Technology of China, Hefei, Anhui, 230026, China.

Published: August 2023

AI Article Synopsis

  • Traditional trial-and-error methods for optimizing catalysts are slow and often ineffective, but machine learning (ML) shows promise in speeding up this research by utilizing its predictive capabilities.
  • The selection of the right input features, or descriptors, is crucial for enhancing the accuracy of ML models and understanding what drives catalytic activity and selectivity.
  • The review discusses methods for utilizing catalytic descriptors, examines the pros and cons of different descriptors, and outlines new techniques and research approaches that merge computational and experimental ML models, while also addressing current challenges and future directions in this field.

Article Abstract

Traditional trial-and-error experiments and theoretical simulations have difficulty optimizing catalytic processes and developing new, better-performing catalysts. Machine learning (ML) provides a promising approach for accelerating catalysis research due to its powerful learning and predictive abilities. The selection of appropriate input features (descriptors) plays a decisive role in improving the predictive accuracy of ML models and uncovering the key factors that influence catalytic activity and selectivity. This review introduces tactics for the utilization and extraction of catalytic descriptors in ML-assisted experimental and theoretical research. In addition to the effectiveness and advantages of various descriptors, their limitations are also discussed. Highlighted are both 1) newly developed spectral descriptors for catalytic performance prediction and 2) a novel research paradigm combining computational and experimental ML models through suitable intermediate descriptors. Current challenges and future perspectives on the application of descriptors and ML techniques to catalysis are also presented.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10401178PMC
http://dx.doi.org/10.1002/advs.202301020DOI Listing

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