Reconstructing Height of an Unknown Point Release using Least-squares Data Assimilation - Université d'Évry Access content directly
Journal Articles Quarterly Journal of the Royal Meteorological Society Year : 2014

Reconstructing Height of an Unknown Point Release using Least-squares Data Assimilation

M. Sharan
  • Function : Author
A.K. Singh
  • Function : Author

Abstract

Reckoning the height of a release in the source term estimation is important since a ground-level approximation of the release leads to errors in capturing the actual extent of a plume. A least-squares inversion technique, free from initial guess, is adapted here for the reconstruction of an elevated point release in a discretized space. Primarily, this involves estimation of the effective height of the release above the ground along with its location and strength from a limited set of noisy concentration measurements. The methodology is evaluated here with the nine runs from the Idaho diffusion experiment (1974) corresponding to low wind, stable conditions. Both real and model-generated synthetic data are used to test the method. With synthetic data, the methodology can exactly reproduce the input source terms. With real data, the average release height is estimated as 3.1 m, which is very close to the effective release height (3 m) reported in the Idaho data. The release location is retrieved with an average error of 30 m, whereas the minimum distance between source and detectors is 100 m; strength is retrieved within a factor of two in all the runs. The deviations in the source parameters from their prescribed values are explained in the context of model representativeness, wind variability and available monitoring network. The sensitivity of the source term estimation is evaluated against several parameters: (i) receptors' height either neglected or duly taken as 0.76 m, (ii) measurement noises and (iii) number of receptors utilized in the inversion. In addition, the limitations and meteorological issues related to the inversion of an elevated release are highlighted.
No file

Dates and versions

hal-02398160 , version 1 (06-12-2019)

Identifiers

Cite

S.K. Singh, M. Sharan, A.K. Singh. Reconstructing Height of an Unknown Point Release using Least-squares Data Assimilation. Quarterly Journal of the Royal Meteorological Society, 2014, ⟨10.1002/qj.2446⟩. ⟨hal-02398160⟩

Collections

UNIV-EVRY LMEE
29 View
0 Download

Altmetric

Share

Gmail Facebook X LinkedIn More