Institute for Mathematics, Freie Universität Berlin, Arnimallee 6, D-14195 Berlin, Germany.
Chair of Theoretical Chemistry and Catalysis Research Center, Technische Universität München, Lichtenbergstraße 4, D-85747 Garching, Germany.
J Chem Phys. 2018 Jan 21;148(3):034102. doi: 10.1063/1.5004770.
In the last decade, first-principles-based microkinetic modeling has been developed into an important tool for a mechanistic understanding of heterogeneous catalysis. A commonly known, but hitherto barely analyzed issue in this kind of modeling is the presence of sizable errors from the use of approximate Density Functional Theory (DFT). We here address the propagation of these errors to the catalytic turnover frequency (TOF) by global sensitivity and uncertainty analysis. Both analyses require the numerical quadrature of high-dimensional integrals. To achieve this efficiently, we utilize and extend an adaptive sparse grid approach and exploit the confinement of the strongly non-linear behavior of the TOF to local regions of the parameter space. We demonstrate the methodology on a model of the oxygen evolution reaction at the CoO (110)-A surface, using a maximum entropy error model that imposes nothing but reasonable bounds on the errors. For this setting, the DFT errors lead to an absolute uncertainty of several orders of magnitude in the TOF. We nevertheless find that it is still possible to draw conclusions from such uncertain models about the atomistic aspects controlling the reactivity. A comparison with derivative-based local sensitivity analysis instead reveals that this more established approach provides incomplete information. Since the adaptive sparse grids allow for the evaluation of the integrals with only a modest number of function evaluations, this approach opens the way for a global sensitivity analysis of more complex models, for instance, models based on kinetic Monte Carlo simulations.
在过去的十年中,基于第一性原理的微观动力学建模已经发展成为理解多相催化的一种重要工具。在这种建模中,存在一个众所周知但迄今几乎未被分析的问题,即使用近似密度泛函理论(DFT)会产生相当大的误差。我们在这里通过全局敏感性和不确定性分析来解决这些误差传播到催化周转率(TOF)的问题。这两种分析都需要对高维积分进行数值求积。为了有效地实现这一点,我们利用并扩展了自适应稀疏网格方法,并利用 TOF 的强非线性行为的限制将其限制在参数空间的局部区域。我们在 CoO(110)-A 表面上的氧气演化反应模型上演示了这种方法,使用最大熵误差模型对误差施加了除合理限制之外的任何限制。对于这种设置,DFT 误差导致 TOF 中的绝对不确定性达到几个数量级。然而,我们仍然可以从这样的不确定模型中得出关于控制反应性的原子方面的结论。与基于导数的局部敏感性分析相比,后一种方法提供的信息不完整。由于自适应稀疏网格允许仅通过少量函数评估来评估积分,因此这种方法为更复杂模型(例如基于动力学蒙特卡罗模拟的模型)的全局敏感性分析开辟了道路。