On the uncertainty of temperature estimation in a rapid compression machine

Rapid compression machines (RCMs) have been widely used in the combustion literature to study the low-to-intermediate temperature ignition of many fuels. In a typical RCM, the pressure during and after the compression stroke is measured. However, measurement of the temperature history in the RCM rea...

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Veröffentlicht in:Combustion and flame 2015-06, Vol.162 (6), p.2518-2528
Hauptverfasser: Weber, Bryan W., Sung, Chih-Jen, Renfro, Michael W.
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container_title Combustion and flame
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creator Weber, Bryan W.
Sung, Chih-Jen
Renfro, Michael W.
description Rapid compression machines (RCMs) have been widely used in the combustion literature to study the low-to-intermediate temperature ignition of many fuels. In a typical RCM, the pressure during and after the compression stroke is measured. However, measurement of the temperature history in the RCM reaction chamber is challenging. Thus, the temperature is generally calculated by the isentropic relations between pressure and temperature, assuming that the adiabatic core hypothesis holds. To estimate the uncertainty in the calculated temperature, an uncertainty propagation analysis must be carried out. Our previous analyses assumed that the uncertainties of the parameters in the equation to calculate the temperature were normally distributed and independent, but these assumptions do not hold for typical RCM operating procedures. In this work, a Monte Carlo method is developed to estimate the uncertainty in the calculated temperature, while taking into account the correlation between parameters and the possibility of non-normal probability distributions. In addition, the Monte Carlo method is compared to an analysis that assumes normally distributed, independent parameters. Both analysis methods show that the magnitude of the initial pressure and the uncertainty of the initial temperature have strong influences on the magnitude of the uncertainty. Finally, the uncertainty estimation methods studied here provide a reference value for the uncertainty of the reference temperature in an RCM and can be generalized to other similar facilities.
doi_str_mv 10.1016/j.combustflame.2015.03.001
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subjects Adiabatic core hypothesis
Error propagation
Monte Carlo analysis
Rapid compression machine
Temperature uncertainty
Uncertainty quantification
title On the uncertainty of temperature estimation in a rapid compression machine
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