2022
DOI: 10.1021/acscatal.2c03378
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Detailed Microkinetics for the Oxidation of Exhaust Gas Emissions through Automated Mechanism Generation

Abstract: Emissions from vehicles contain a variety of pollutants that must be either oxidized or reduced efficiently in the catalytic converter. Improvements to the catalyst require knowledge of the microkinetics, but the complexity of the exhaust gas mixture makes it challenging to identify the reaction network. This complexity was tackled by using the “Reaction Mechanism Generator” (RMG) to automatically generate microkinetic models for the oxidation of combustion byproducts from stoichiometric gasoline direct inject… Show more

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Cited by 22 publications
(84 citation statements)
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References 99 publications
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“…After the self-consistent field calculation, it is possible to apply the Bayesian error estimate to perturb the parameters of the exchange-correlation functional and obtain an ensemble of 2,000 non-self-consistent energies based on the uncertainty in the training of the functional. An ab-initio database of adsorbates on Pt(111) [15,19] was extended within the present work to include 115 C x H y O * z adsorbates containing up to 4 heavy atoms (see SI for QM details). We used the method of Blöndal et al [15] to derive formation enthalpies from the DFT energies, which involves the usage of an adsorption reaction in combination with an isogyric reaction to determine the enthalpy of formation of the gas-phase precursor.…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…After the self-consistent field calculation, it is possible to apply the Bayesian error estimate to perturb the parameters of the exchange-correlation functional and obtain an ensemble of 2,000 non-self-consistent energies based on the uncertainty in the training of the functional. An ab-initio database of adsorbates on Pt(111) [15,19] was extended within the present work to include 115 C x H y O * z adsorbates containing up to 4 heavy atoms (see SI for QM details). We used the method of Blöndal et al [15] to derive formation enthalpies from the DFT energies, which involves the usage of an adsorption reaction in combination with an isogyric reaction to determine the enthalpy of formation of the gas-phase precursor.…”
Section: Resultsmentioning
confidence: 99%
“…Software can be employed to overcome this hurdle, which automatically constructs complex microkinetic models without any bias considering all possible pathways at the operating conditions of the process. The Reaction Mechanism Generator (RMG) [10][11][12] is such an open-source tool that has been successfully employed for gas-phase chemistry [13,14] and heterogeneously catalyzed reactions [15][16][17][18][19] .…”
Section: Introductionmentioning
confidence: 99%
“…It is clear that the slope of the differential adsorption energy is higher than that of the average adsorption energy. It should be noted that the adsorbate–adsorbate interactions can be fitted with other functional forms, such as exponential or polynomial , functions. The differential adsorption energy can also be calculated from the internal energy ( E int ) according to E int = E 0 θ + α θ 2 = θ E avg E diff = d E int d θ = E 0 + 2 α θ This analysis shows that the differential adsorption energy should have a slope twice that of the average adsorption energy.…”
Section: Introductionmentioning
confidence: 99%
“…The initial parameters were determined via RMG from precompiled databases and estimates for 132 reversible reactions. Out of these, parameters for five reactions, including the rate-determining step, were further fitted to match experimental data based on their uncertainty range . Additionally, there exist several challenges in the optimization of kinetic parameters due to the nonlinearity of the models, the necessity of gradients calculation of complex objective functions, and the possibility of getting stuck in a local minimum.…”
Section: Introductionmentioning
confidence: 99%
“…Out of these, parameters for five reactions, including the ratedetermining step, were further fitted to match experimental data based on their uncertainty range. 23 Additionally, there exist several challenges in the optimization of kinetic parameters due to the nonlinearity of the models, the necessity of gradients calculation of complex objective functions, and the possibility of getting stuck in a local minimum. In order to find the global minimum, Rangarajan et al presented a sequential optimization framework using a multistart approach to explore the solution space and showcased the framework with methanol synthesis through hydrogenation of CO and CO 2 on a Cu-based catalyst.…”
Section: ■ Introductionmentioning
confidence: 99%