2023
DOI: 10.1002/aic.18058
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Parameter estimation and prediction uncertainties for multi‐response kinetic models with uncertain inputs

Abstract: Error-in-variables model (EVM) methods are used for parameter estimation when independent variables are uncertain. During EVM parameter estimation, output measurement variances are required as weighting factors in the objective function. These variances can be estimated based on data from replicate experiments. However, conducting replicates is complicated when independent variables are uncertain. Instead, pseudo-replicate runs may be performed where the target values of inputs for repeated runs are the same, … Show more

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Cited by 3 publications
(6 citation statements)
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“…Recently, our group extended the available methods so they can be used for characterizing parameter and prediction uncertainties for multi‐response models. [ 37 ] In future, it will be possible to use parameter and prediction uncertainty quantification techniques for complicated dynamic multi‐response models involving ordinary differential equations.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
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“…Recently, our group extended the available methods so they can be used for characterizing parameter and prediction uncertainties for multi‐response models. [ 37 ] In future, it will be possible to use parameter and prediction uncertainty quantification techniques for complicated dynamic multi‐response models involving ordinary differential equations.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
“…The uncertainty associated with trueŷbold-italick in Equation () is the uncertainty in the mean response that would be obtained from a very large number of runs with measured values of uncertain inputs given by trueûbold-italick, whereas the uncertainty associated with trueŶbold-italicsk in Equation () accounts for both input uncertainty and output measurement uncertainty. To the best of our knowledge, distinguishing between these two types of prediction uncertainties has not been considered in the chemical engineering literature that focuses on the effects of input uncertainties until recently [ 37 ] (even though some modelling papers and popular undergraduate textbooks do talk about two types of prediction uncertainties when model parameters are uncertain but inputs are perfectly known). [ 38–40 ]…”
Section: Propagating Input Uncertainties Into Prediction Uncertaintiesmentioning
confidence: 99%
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