Assimilation of conventional and satellite wind observations in a mesoscale atmospheric model for studying atmospheric dispersion

Srinivas, C. V. ; Venkatesan, R. ; Yesubabu, V. ; Nagaraju, C. ; Somayajai, K. M. ; Chellapandi, P. ; Baldev Raj, (2010) Assimilation of conventional and satellite wind observations in a mesoscale atmospheric model for studying atmospheric dispersion Atmospheric Environment, 44 (24). pp. 2846-2864. ISSN 1352-2310

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Official URL: http://linkinghub.elsevier.com/retrieve/pii/S13522...

Related URL: http://dx.doi.org/10.1016/j.atmosenv.2010.04.051

Abstract

A mesoscale atmospheric model PSU/NCAR MM5 is used to provide operational weather forecasts for a nuclear emergency response decision support system on the southeast coast of India. In this study the performance of the MM5 model with assimilation of conventional surface and upper-air observations along with satellite derived 2-d surface wind data from QuickSCAT sources is examined. Two numerical experiments with MM5 are conducted: one with static initialization using NCEP FNL data and second with dynamic initialization by assimilation of observations using four dimensional data assimilation (FDDA) analysis nudging for a pre-forecast period of 12 h. Dispersion simulations are conducted for a hypothetical source at Kalpakkam location with the HYSPLIT Lagrangian particle model using simulated wind field from the above experiments. The present paper brings out the differences in the atmospheric model predictions and the differences in dispersion model results from control and assimilation runs. An improvement is noted in the atmospheric fields from the assimilation experiment which has led to significant alteration in the trajectory positions, plume orientation and its distribution pattern. Sensitivity tests using different PBL and surface parameterizations indicated the simple first order closure schemes (Blackadar, MRF) coupled with the simple soil model have given better results for various atmospheric fields. The study illustrates the impact of the assimilation of the scatterometer wind and automated weather stations (AWS) observations on the meteorological model predictions and the dispersion results.

Item Type:Article
Source:Copyright of this article belongs to Elsevier Science.
Keywords:Mesoscale; Assimilation; AWS; QuickSCAT; FDDA; Radiological Dispersion
ID Code:40382
Deposited On:24 May 2011 04:42
Last Modified:24 May 2011 04:42

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