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Journal Article: BibTeX citation key:  Druyan2007
Druyan, L. M., Fulakeza, M. & Lonergan, P. (2007) The spatial variability of regional model simulated June-September mean precipitation over West Africa. IN Geophysical Research Letters, 34. L18709.
Added by: Leonard Druyan 2010-02-15 20:02:57    Last Edited by: Fanny Lefebvre 2011-01-12 17:17:56
Categories: Monsoon system and its variability
Keywords: Precipitation
Creators: Druyan, Fulakeza, Lonergan
Collection: Geophysical Research Letters
Bibliographies: Prior150410

Peer reviewed
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The study examines the spatial variability of June–September 2003 mean precipitation rates (Pr03) simulated by a regional climate model on a horizontal grid with 0.5° spacing. In particular, it evaluates the relative impact of different initial conditions versus the influence of the lateral boundary conditions (LBC), and it compares small spatial scale distributions of modeled Pr03 to data from the Tropical Rainfall Measuring Mission (TRMM) and the NOAA Climate Prediction Center data for the African Famine Early Warning System (FEWS). Simulations over West Africa were made with the CCSR/GISS RM3, driven by synchronous data from NCEP reanalysis. A five‐member ensemble for a single season was generated by staggering the initial conditions of each member by 36 hr within the period May 9–15, 2003. Results showed that the LBC influence dominated over that of differing initial conditions, implying that the precipitation simulations suffered little contamination of random noise. In a second evaluation, small spatial scale distributions of Pr03 were computed as the difference between Pr03 and spatially smoothed fields. Spatial correlations between the RM3 product versus the TRMM and FEWS small‐scale components of Pr03 were highest using TRMM data provided at 1° elements. Results suggest that the model may be challenged to simulate realistic small‐scale features of the seasonal mean precipitation field, and/or that observational data sets do not adequately capture these fine spatial features.
Added by: Leonard Druyan    Last Edited by: Fanny Lefebvre