This paper presents
a statistical method for model calibration
using data collected from literature. The method is used to calibrate
parameters for global models of soot consumption in combustion systems.
This consumption is broken into two different submodels: first for
oxidation where soot particles are attacked by certain oxidizing agents;
second for gasification where soot particles are attacked by H2O or CO2 molecules. Rate data were collected from
19 studies in the literature and evaluated using Bayesian statistics
to calibrate the model parameters. Bayesian statistics are valued
in their ability to quantify uncertainty in modeling. The calibrated
consumption model with quantified uncertainty is presented here along
with a discussion of associated implications. The oxidation results
are found to be consistent with previous studies. Significant variation
is found in the CO2 gasification rates.
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