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Mass Transfer in a Porous Particle - MCMC Assisted Parameter Estimation of Dynamic Model under Uncertainties

机译:多孔颗粒中的传质-不确定条件下动态模型的MCMC辅助参数估计。

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In this paper a method based on Markov Chain Monte Carlo simulations to estimate kinetic parameters for a chemical reaction within a porous particle is presented. It uses distributions for parameter values rather than a single value, like average particle values which are thought to be representative values for a large population of particles. The results show how the variance in parameters affect the time needed to reach steady-state operation and in extreme cases even the proportion of the catalytic material which does not participate in catalysis due to mass transfer limitations. This helps in recognizing possible process conditions for heterogeneously catalyzed reactions. The work illustrates how hard it is to identify single, representative parameter values for phenomena which include non-homogenous material properties.
机译:本文提出了一种基于马尔可夫链蒙特卡罗模拟的方法,用于估计多孔颗粒内化学反应的动力学参数。它使用参数值而不是单个值的分布,例如平均颗粒值(被认为是大量颗粒的代表值)。结果表明,参数的变化如何影响达到稳态运行所需的时间,在极端情况下,甚至由于传质限制而没有参与催化的催化材料的比例也是如此。这有助于识别非均相催化反应的可能工艺条件。这项工作说明了为包括非均质材料特性的现象识别单一的代表性参数值有多么困难。

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