horizontal turbulence and dispersion
play

HORIZONTAL TURBULENCE AND DISPERSION IN LOW-WIND STABLE CONDITIONS - PowerPoint PPT Presentation

HORIZONTAL TURBULENCE AND DISPERSION IN LOW-WIND STABLE CONDITIONS Light Metals Flagship Ashok Luhar CSIRO Marine and Atmospheric Research Australia June 2010 Introduction Wind fluctuations in the streamwise and lateral directions govern


  1. HORIZONTAL TURBULENCE AND DISPERSION IN LOW-WIND STABLE CONDITIONS Light Metals Flagship Ashok Luhar CSIRO Marine and Atmospheric Research Australia June 2010

  2. Introduction • Wind fluctuations in the streamwise and lateral directions govern       horizontal dispersion ( , ) x u y v • When modelling dispersion under low wind conditions:  • Streamwise dispersion ( ) cannot be neglected compared to mean x  advection – so is important u • Vector and scalar average winds need to be distinguished      • How to estimate and from routine met data ( ) , , , U  u v U typically obtained using ‘single - pass’ methods? • How to estimate vector wind ( ) from scalar wind ( )? u U • Influence on modelled dispersion

  3. Calculating  u and  v : existing relations  v   • E.g. Hanna (1983), Etling (1990): U tan   v   • Luhar and Rao (1994): sin U    v   • For small : (most commonly used) U       • It is assumed that (no role of ) u v U • In the above, no distinction is made between scalar ( ) and U vector ( ) averaged winds u  • van den Hurk and de Bruin (1995) derived (role of ) U             assumed 2 2 2 2 {exp( ) 1 } / 2 , U v u  u U

  4. • Cirillo and Poli (1992) assume a Gaussian distribution for  and a delta function for U   U    2 2 2 2 exp( ) sinh( )   v       2 2 2 2 exp( ) [cosh( ) 1 ] U   u  U   • The vector average wind speed 2 u exp( / 2 )  • Or ,  v   2 2 2 u sinh( )   No role of U     2 2 2 [cosh( ) 1 ] u  u • Inconsistent use of the CP relations in the scientific literature • We evaluate the above relations and offer improvements

  5. Dataset • The INEL Idaho Falls dataset (Sagendorf & Dickson, 1974) – widely used for low wind studies (e.g., Sharan and Yadav, 1998; Oettl et al., 2001; Anfossi et al., 2006) • Winds measured at 2, 4, 8, 16, 32 and 61 m • GLC data also available • Data from 9 stable and 1 neutral hours were available

  6. Observed characteristics  • The well-known behaviour of increasing with decreasing wind  speed is evident    • The assumption that is not satisfactory u v   • Later, our analysis shows that the leading order term in is ,  v   and that in is u U

  7. Comparison with the data  v   U     u v  No role of U van den Hurk and de Bruin  (1995) u    v u  Role of U

  8. Cirillo and Poli (1992)    u v  No role of U  v   • The results above indicate that is satisfactory U   • For , the van den Hurk and de Bruin formulation is the best of u the three

  9. Improved relations • We follow the framework of Cirillo and Poli (1992) – but there is no need to assume a particular form of the probability distribution for U (they assumed a delta function)   ] 2        2 2 2 2 U exp( ) sinh( )[ 1 / U   v U          2  2 2 2 2 exp( ) [cosh( ){ 1 / } 1 ] U U   u U ,  U   • The vector average wind speed 2 u exp( / 2 )      • The leading order term in is , and that in is  u v U

  10. With improved relations • Best overall agreement – a few substantial deviations, probably due to the assumption that wind direction is normally distributed and is statistically independent of wind speed, not holding valid

  11. Testing  u and  v in a dispersion model • Analytical solutions to the Gaussian puff equation – include stream wise diffusion and valid in low wind conditions • The solution by Thomson and Manning (2001) is consistent with both small time and large time behaviours ˆ        ˆ  ˆ ˆ   2 2 1 r x u x ˆ ˆ ˆ ˆ            ˆ 2  2  C exp x u u exp u 1     ˆ ˆ ˆ ˆ   2 2 2     2 4 2 r r r  r       ˆ        ˆ ˆ  ˆ   x u r r   ˆ ˆ        ˆ ˆ       1 erf exp 1 erf   u r x u   ˆ ˆ     2 4  2  r r           ˆ    r ˆ ˆ  ˆ  ˆ       exp 1 erf   . u r x u ˆ     4 r 2 • Not previously tested with data

  12. Dispersion data • The 1974 Idaho Falls dataset • SF6 released at an effective height of 3 m • GLC measured by 180 samplers on three arcs (100, 200 & 400 m) Google Earth TM

  13. Dispersion Results • Quantile-quantile plot • The new relations perform slightly better than the  u and  v data for lower concentrations – demonstrates some uncertainty in the dispersion model with regards to its formulations and/or other inputs • When the Cirillo and Poli (CP) relations are used, the model considerably underestimates the lower concentrations (doesn’t include correct  u )

  14. Conclusions   • Evaluated existing relations for estimating and from routine v u wind measurements under stable conditions    • The commonly-used assumption of is not necessarily valid u v   • The leading order term in determining is , whereas that in  v   determining is u U • Inconsistencies with some of the existing expressions highlighted   • The new relations for and provide better estimates, and lead to u v better simulation of the observed dispersion • The vector wind speed, to be used as the transport wind speed, can  U   be obtained from the scalar wind speed using 2 u exp( / 2 )  • The present analysis can also be applied to unstable conditions

  15. Acknowledgements • J. F. Sagendorf • Ian Galbally • Michael Borgas • Mark Hibberd

  16. CSIRO Marine and Atmospheric Research Ashok Luhar Principal Research Scientist Phone: +61 3 9239 4400 Email: ashok.luhar@csiro.au Web: www.csiro.au/cmar Thank you Contact Us Phone: 1300 363 400 or +61 3 9545 2176 Email: Enquiries@csiro.au Web: www.csiro.au

Recommend


More recommend