Artificial Intelligence (AI) Workflow for Catalyst Design and Optimization

In the pursuit of novel catalyst development to address pressing environmental concerns and energy demand, conventional design and optimization methods often fall short due to the complexity and vastness of the catalyst parameter space. The advent of Machine Learning (ML) has ushered in a new era in...

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Veröffentlicht in:Industrial & engineering chemistry research 2023-11, Vol.62 (43), p.17835-17848
Hauptverfasser: Lai, Nung Siong, Tew, Yi Shen, Zhong, Xialin, Yin, Jun, Li, Jiali, Yan, Binhang, Wang, Xiaonan
Format: Artikel
Sprache:eng
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Zusammenfassung:In the pursuit of novel catalyst development to address pressing environmental concerns and energy demand, conventional design and optimization methods often fall short due to the complexity and vastness of the catalyst parameter space. The advent of Machine Learning (ML) has ushered in a new era in the field of catalyst optimization, offering potential solutions to the shortcomings of traditional techniques. However, existing methods fail to effectively harness the vast information contained within the expanding body of scientific literature on catalyst synthesis. To address this gap, this study proposes an innovative Artificial Intelligence (AI) workflow that integrates large-language models (LLMs), Bayesian optimization, and an active learning loop to expedite and enhance catalyst optimization. Our methodology combines advanced language understanding with robust optimization strategies, effectively translating knowledge extracted from the diverse literature into actionable parameters for practical experimentation and optimization. In this article, we demonstrate the application of this AI workflow in the optimization of catalyst synthesis for ammonia production. The results underscore the workflow’s ability to streamline the catalyst development process, offering a swift, resource-efficient, and high-precision alternative to conventional methods.
ISSN:0888-5885
1520-5045
DOI:10.1021/acs.iecr.3c02520