机器学习辅助制备石墨烯负载Cu-Zn催化剂用于CO2加氢制甲醇。

IF 3.5 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Nuttapon Pisitpipathsin, Krittapong Deshsorn, Varisara Deerattrakul, Pawin Iamprasertkun
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引用次数: 0

摘要

石墨烯由于其高表面积和与氮和氧等杂原子功能化的潜力而成为二氧化碳加氢制甲醇中Cu-Zn催化剂的有前途的支撑材料,其中氮被认为有助于反应。在本研究中,我们将机器学习和数据分析与实验工作相结合来研究这种影响。机器学习(使用决策树模型)识别出铜粒度、平均孔径、还原时间、表面积和金属负载含量是对催化剂设计影响最大的特征,而氮掺杂对甲醇时空产率的影响可以忽略不计。然而,实验结果表明,与原始石墨烯相比,氮掺杂在石墨烯载体上的时空产率提高了四倍。这是由于在相同的还原条件下,氮降低了催化剂的还原温度,提高了催化剂的质量,尽管氮本身并不直接影响甲醇的形成。此外,机器学习为催化剂设计提供了关键特征和最佳条件,证明了实验室资源的显著节省。这项工作体现了机器学习和实验的结合,以优化催化剂的合成和性能评估,为未来的催化剂设计提供了有价值的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Assisted for Preparation of Graphene Supported Cu-Zn Catalyst for CO2 Hydrogenation to Methanol.

Graphene has emerged as a promising support material for Cu-Zn catalysts in CO₂ hydrogenation to methanol due to its high surface area and potential for functionalization with heteroatoms like nitrogen and oxygen, with nitrogen believed to contribute to the reaction. In this study, we combined machine learning and data analysis with experimental work to investigate this effect. Machine learning (using a decision tree model) identified copper particle size, average pore diameter, reduction time, surface area, and metal loading content as the most impactful features for catalyst design. However, experimental results indicated that nitrogen doping on graphene support improved the space-time yield by up to four times compared to pristine graphene. This improvement is attributed to nitrogen's role in lowering the catalyst's reduction temperature, enhancing its quality under identical reduction conditions, though nitrogen itself does not directly affect methanol formation. Moreover, machine learning provided insights into the critical features and optimal conditions for catalyst design, demonstrating significant resource savings in the lab. This work exemplifies the integration of machine learning and experimentation to optimize catalyst synthesis and performance evaluation, providing valuable guidance for future catalyst design.

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来源期刊
Chemistry - An Asian Journal
Chemistry - An Asian Journal 化学-化学综合
CiteScore
7.00
自引率
2.40%
发文量
535
审稿时长
1.3 months
期刊介绍: Chemistry—An Asian Journal is an international high-impact journal for chemistry in its broadest sense. The journal covers all aspects of chemistry from biochemistry through organic and inorganic chemistry to physical chemistry, including interdisciplinary topics. Chemistry—An Asian Journal publishes Full Papers, Communications, and Focus Reviews. A professional editorial team headed by Dr. Theresa Kueckmann and an Editorial Board (headed by Professor Susumu Kitagawa) ensure the highest quality of the peer-review process, the contents and the production of the journal. Chemistry—An Asian Journal is published on behalf of the Asian Chemical Editorial Society (ACES), an association of numerous Asian chemical societies, and supported by the Gesellschaft Deutscher Chemiker (GDCh, German Chemical Society), ChemPubSoc Europe, and the Federation of Asian Chemical Societies (FACS).
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