催化共振理论:预测可编程催化回路的流动†

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Madeline A. Murphy, Kyle Noordhoek, Sallye R. Gathmann, Paul J. Dauenhauer and Christopher J. Bartel
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引用次数: 0

摘要

催化剂表面的化学转化是通过串联或平行的反应途径发生的。这些复杂的网络及其行为可以通过整个化学反应内部的三种表面反应回路(a *到B*到C*到a *)最简单地进行评估。将振荡动态催化剂应用于该反应环,显示出三种类型的行为之一:(1)沿顺时针方向环上的分子净通量为正,(2)沿逆时针方向环上的分子净通量为负,或(3)在反应极限环上环上的分子通量可以忽略不计。用微动力学模型模拟了三种表面环,以评估催化表面在两个或多个催化剂表面能态之间振荡所产生的反应环行为。模拟所选择的输入参数使用127 688种不同的参数组合跨越11维参数空间。对它们的收敛极限环解进行了分析,发现它们的环周转频率大部分近似为零。训练分类和回归机器学习模型来预测循环周转频率的符号和大小,并成功地在可访问的基线之上执行。值得注意的是,分类模型的基线加权F1得分为0.49,而训练后的模型在用于定义模拟和推导速率常数的参数上的加权F1得分分别为0.94和0.96。经过训练的模型成功地预测了催化环的行为,对这些模型的解释表明,所有输入参数对于每个模型的预测和性能都是重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Catalytic resonance theory: forecasting the flow of programmable catalytic loops†

Catalytic resonance theory: forecasting the flow of programmable catalytic loops†

Chemical transformations on catalyst surfaces occur through series and parallel reaction pathways. These complex networks and their behavior can be most simply evaluated through a three-species surface reaction loop (A* to B* to C* to A*) that is internal to the overall chemical reaction. Application of an oscillating dynamic catalyst to this reactive loop has been shown to exhibit one of three types of behavior: (1) a positive net flux of molecules about the loop in the clockwise direction, (2) a negative net flux of molecules about the loop in the counterclockwise direction, or (3) negligible flux of molecules about the loop at the limit cycle of reaction. Three-species surface loops were simulated with microkinetic modeling to assess the reaction loop behavior resulting from a catalytic surface oscillating between two or more catalyst surface energy states. Selected input parameters for the simulations spanned an 11-dimensional parameter space using 127 688 different parameter combinations. Their converged limit cycle solutions were analyzed for their loop turnover frequencies, the majority of which were found to be approximately zero. Classification and regression machine learning models were trained to predict the sign and magnitude of the loop turnover frequency and successfully performed above accessible baselines. Notably, the classification models exhibited a baseline weighted F1 score of 0.49, whereas trained models achieved weighted F1 scores of 0.94 and 0.96 when trained on the parameters used to define the simulations and derived rate constants, respectively. The trained models successfully predicted catalytic loop behavior, and interpretation of these models revealed all input parameters to be important for the prediction and performance of each model.

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CiteScore
2.80
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