4.5 Article

Evaluating rainfall patterns using physics scheme ensembles from a regional atmospheric model

期刊

THEORETICAL AND APPLIED CLIMATOLOGY
卷 115, 期 1-2, 页码 297-304

出版社

SPRINGER WIEN
DOI: 10.1007/s00704-013-0904-2

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资金

  1. NSW Environmental Trust for the ESCCI-ECL project
  2. NSW Office of Environment and Heritage backed NSW/ACT Regional Climate Modelling Project (NARCliM)
  3. Australian Research Council as part of the Discovery Project [DP0772665]
  4. Australian Research Council as part of the Linkage Project [LP120200777]
  5. South Eastern Australian Climate Initiative (SEACI)
  6. Australian Commonwealth Government

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This study evaluated the ability of Weather Research and Forecasting (WRF) multi-physics ensembles to simulate storm systems known as East Coast Lows (ECLs). ECLs are intense low-pressure systems that develop off the eastern coast of Australia. These systems can cause significant damage to the region. On the other hand, the systems are also beneficial as they generate the majority of high inflow to coastal reservoirs. It is the common interest of both hazard control and water management to correctly capture the ECL features in modeling, in particular, to reproduce the observed spatial rainfall patterns. We simulated eight ECL events using WRF with 36 model configurations, each comprising physics scheme combinations of two planetary boundary layer (pbl), two cumulus (cu), three microphysics (mp), and three radiation (ra) schemes. The performance of each physics scheme combination and the ensembles of multiple physics scheme combinations were evaluated separately. Results show that using the ensemble average gives higher skill than the median performer within the ensemble. More importantly, choosing a composite average of the better performing pbl and cu schemes can substantially improve the representation of high rainfall both spatially and quantitatively.

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