A Parameter Estimation and Identifiability Analysis Methodology Applied to a Street Canyon Air Pollution Model


Autoria(s): Ottosen, Thor-Bjørn; Ketzel, M.; Skov, H.; Hertel, O.; Brandt, J.; Kakosimos, K.E.
Data(s)

01/10/2016

Resumo

Mathematical models are increasingly used in environmental science thus increasing the importance of uncertainty and sensitivity analyses. In the present study, an iterative parameter estimation and identifiability analysis methodology is applied to an atmospheric model – the Operational Street Pollution Model (OSPMr). To assess the predictive validity of the model, the data is split into an estimation and a prediction data set using two data splitting approaches and data preparation techniques (clustering and outlier detection) are analysed. The sensitivity analysis, being part of the identifiability analysis, showed that some model parameters were significantly more sensitive than others. The application of the determined optimal parameter values was shown to succesfully equilibrate the model biases among the individual streets and species. It was as well shown that the frequentist approach applied for the uncertainty calculations underestimated the parameter uncertainties. The model parameter uncertainty was qualitatively assessed to be significant, and reduction strategies were identified.

Formato

text

Identificador

http://eprints.worc.ac.uk/4580/7/A%20parameter%20Estimation%20and%20Identifiability%20Analysis%20Methodology%20Applied%20to%20a%20Street%20Canyon%20Air%20Apollution%20Model..pdf

Ottosen, Thor-Bjørn and Ketzel, M. and Skov, H. and Hertel, O. and Brandt, J. and Kakosimos, K.E. (2016) A Parameter Estimation and Identifiability Analysis Methodology Applied to a Street Canyon Air Pollution Model. Environmental Modelling & Software, 84. pp. 165-176. ISSN 1364-8152

Idioma(s)

en

Publicador

Elsevier B.V.

Relação

http://eprints.worc.ac.uk/4580/

http://www.sciencedirect.com/science/article/pii/S1364815216302699

10.1016/j.envsoft.2016.06.022

Direitos

cc_by_nc_nd

Palavras-Chave #Q Science (General)
Tipo

Article

PeerReviewed