机器学习增强型水-气变换反应催化剂优化选择

IF 3 Q2 ENGINEERING, CHEMICAL
Rahul Golder , Shraman Pal , Sathish Kumar C., Koustuv Ray
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引用次数: 0

摘要

在旨在将甲烷和其他碳氢化合物蒸汽转化过程中产生的副产品一氧化碳转化为二氧化碳和氢气的工业中,水气变换(WGS)反应至关重要。为这种转化选择有效的催化剂是一项巨大的挑战,因为它需要在转化率、稳定性和成本之间取得微妙的平衡。我们将机器学习驱动的预测模型与贝叶斯优化相结合,探索并确定新型催化剂成分。所提出的方法可有效探索一组预定义的活性金属、支撑剂和促进剂的催化成分空间,从而确定最有前途的催化剂配方。我们为催化剂的不同性能指标分配了权重,从而可以根据特定行业的需求进行量身优化。我们的筛选系统简化了催化剂的发现过程,有助于筛选和选择兼顾转化性能、稳定性和成本效益的催化剂。这种方法有望推动异相催化技术的发展,满足高效工业流程日益增长的需求。
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-enhanced optimal catalyst selection for water-gas shift reaction

Machine learning-enhanced optimal catalyst selection for water-gas shift reaction

The water-gas shift (WGS) reaction is pivotal in industries aiming to convert carbon monoxide, a byproduct of steam reforming of methane and other hydrocarbons, into carbon dioxide and hydrogen. Selecting an effective catalyst for this transformation poses a substantial challenge, as it requires a delicate balance between conversion, stability, and cost. We combine machine learning-driven prediction models with Bayesian optimization to explore and identify novel catalyst compositions. The proposed method efficiently explores the catalysis composition space for a predefined set of active metals, supports, and promoters to identify the most promising catalyst formulations. We assign weights to different performance metrics of catalysts, enabling tailored optimization according to specific industry needs. Our screening system streamlines catalyst discovery and facilitates the screening and selection of catalysts that balance conversion performance, stability, and cost-effectiveness. This approach holds significant promise for advancement in heterogeneous catalysis to meet the growing demands of efficient industrial processes.

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