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USDA-ARS, National Forage Seed Production Research Center, 3450 SW Campus Way, Corvallis, OR 97331
* Corresponding author (whittakg{at}onid.orst.edu)
Received for publication December 18, 2003. Estimation of uncertainty using agronomic models typically requires a Monte Carlo study with a large number of simulations. Parallel computation dramatically speeds repetitive computation of this sort. The use of a Beowulf cluster parallel computer offers a low cost method of parallel computing that is fairly simple to construct, but application information is specialized, with little concerning agronomic model simulation. The objective in this note is to present a method of simulation using an agronomic model on a Beowulf cluster. To facilitate the analysis of uncertainty, the method performs the simulations within the R statistical computing environment. The Soil and Water Assessment Tool (SWAT) was run for 1200 annual simulations on varying numbers of processors for speed comparisons. The cluster achieved close to the theoretical speed increase as the simulation results were stored in an R object. Two examples of nonparametric estimation of uncertainty are presented.
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