Understanding the set of elementary steps and kinetics in each reaction is extremely valuable to make informed decisions about creating the next generation of catalytic materials. With physical and mechanistic complexity of industrial catalysts, it is critical to obtain kinetic information through experimental methods. As such, this work details a methodology based on the combination of transient rate/concentration dependencies and machine learning to measure the number of active sites, the individual rate constants, and gain insight into the mechanism under a complex set of elementary steps. This new methodology was applied to simulated transient responses to verify its ability to obtain correct estimates of the micro-kinetic coefficients. Furthermore, experimental CO oxidation data was analyzed to reveal the Langmuir-Hinshelwood mechanism driving the reaction. As oxygen accumulated on the catalyst, a transition in the mechanism was clearly defined in the machine learning analysis due to the large amount of kinetic information available from transient reaction techniques. This methodology is proposed as a new data driven approach to characterize how materials control complex reaction mechanisms relying exclusively on experimental data.
翻译:在每种反应中,了解一套基本步骤和动能,对于就创造下一代催化材料作出知情决定极为宝贵。由于工业催化剂的物理和机械复杂性,通过实验方法获得动能信息至关重要。因此,这项工作详细说明了一种方法,这种方法以瞬时率/浓缩依赖性和机学学习相结合的方式,衡量活跃地点的数量、单个率常数,并在一套复杂的基本步骤下深入了解这一机制。这一新方法用于模拟瞬时反应,以核实其获得微动系数正确估计的能力。此外,还分析了实验性CO氧化数据,以揭示驱动反应的兰穆尔-亨舍尔伍德机制。随着催化剂的氧气积累,由于从瞬时反应技术中获得的大量动能信息,机器学习分析明确定义了该机制的过渡。这一方法被提议为一种新的数据驱动方法,以说明材料控制复杂反应机制如何完全依赖实验数据。