TY - JOUR
T1 - Bayesian inference of chemical kinetic models from proposed reactions
AU - Galagali, Nikhil
AU - Marzouk, Youssef M.
N1 - KAUST Repository Item: Exported on 2020-10-01
Acknowledgements: This work was supported by the KAUST Global Research Partnership.
This publication acknowledges KAUST support, but has no KAUST affiliated authors.
PY - 2015/2
Y1 - 2015/2
N2 - © 2014 Elsevier Ltd. Bayesian inference provides a natural framework for combining experimental data with prior knowledge to develop chemical kinetic models and quantify the associated uncertainties, not only in parameter values but also in model structure. Most existing applications of Bayesian model selection methods to chemical kinetics have been limited to comparisons among a small set of models, however. The significant computational cost of evaluating posterior model probabilities renders traditional Bayesian methods infeasible when the model space becomes large. We present a new framework for tractable Bayesian model inference and uncertainty quantification using a large number of systematically generated model hypotheses. The approach involves imposing point-mass mixture priors over rate constants and exploring the resulting posterior distribution using an adaptive Markov chain Monte Carlo method. The posterior samples are used to identify plausible models, to quantify rate constant uncertainties, and to extract key diagnostic information about model structure-such as the reactions and operating pathways most strongly supported by the data. We provide numerical demonstrations of the proposed framework by inferring kinetic models for catalytic steam and dry reforming of methane using available experimental data.
AB - © 2014 Elsevier Ltd. Bayesian inference provides a natural framework for combining experimental data with prior knowledge to develop chemical kinetic models and quantify the associated uncertainties, not only in parameter values but also in model structure. Most existing applications of Bayesian model selection methods to chemical kinetics have been limited to comparisons among a small set of models, however. The significant computational cost of evaluating posterior model probabilities renders traditional Bayesian methods infeasible when the model space becomes large. We present a new framework for tractable Bayesian model inference and uncertainty quantification using a large number of systematically generated model hypotheses. The approach involves imposing point-mass mixture priors over rate constants and exploring the resulting posterior distribution using an adaptive Markov chain Monte Carlo method. The posterior samples are used to identify plausible models, to quantify rate constant uncertainties, and to extract key diagnostic information about model structure-such as the reactions and operating pathways most strongly supported by the data. We provide numerical demonstrations of the proposed framework by inferring kinetic models for catalytic steam and dry reforming of methane using available experimental data.
UR - http://hdl.handle.net/10754/597650
UR - https://linkinghub.elsevier.com/retrieve/pii/S0009250914005983
UR - http://www.scopus.com/inward/record.url?scp=84911921532&partnerID=8YFLogxK
U2 - 10.1016/j.ces.2014.10.030
DO - 10.1016/j.ces.2014.10.030
M3 - Article
SN - 0009-2509
VL - 123
SP - 170
EP - 190
JO - Chemical Engineering Science
JF - Chemical Engineering Science
ER -