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Field Evaluation of a Bioeconomic Model for Weed Management in Corn (Zea mays)

Published online by Cambridge University Press:  12 June 2017

Douglas D. Buhler*
Affiliation:
Nat. Soil Tilth Lab., U.S. Dep. Agric., Agric Res. Serv., 2150 Pammel Drive, Ames, IA 50011
Robert P. King
Affiliation:
Dep. Applied Econ., Univ. Minnesota, St. Paul, MN 55108
Scott M. Swinton
Affiliation:
Dep. Agric. Econ., Michigan State Univ., East Lansing, MI 48824
Jeffery L. Gunsolus
Affiliation:
Dep. Agron. and Plant Genet., Univ. Minnesota. St. Paul, MN 55108
Frank Forcella
Affiliation:
North Central Soil Conserv. Res. Lab., U.S. Dep. Agric., Agric. Res. Serv., Morris, MN 56267
*
*Corresponding author; email buhler@nstl.gov.

Abstract

A bioeconomic weed management model was tested as a decision aid for weed control in corn at Rosemount, MN, from 1991 to 1994. The model makes recommendations for preemergence control tactics based on the weed seed content of the soil and postemergence decisions based on weed seedling densities. Weed control, corn yield, herbicide active ingredient applied, and economic return with model-generated treatments were compared to standard herbicide and mechanical control treatments. Effects of these treatments on weed populations and soybean yield the following year were also determined. In most cases, the model-generated treatments controlled weeds as well as the standard herbicide treatment. The quantity of herbicide active ingredient applied decreased 27% with the seed bank model and 68% with the seedling model relative to the standard herbicide treatment. However, the frequency of herbicide application was not reduced. In 1 yr, seed bank model treatments did not control weeds as well as the standard herbicide or seedling model treatments. Corn yields reflected differences in weed control. Net economic return to weed control was not increased by using model-generated control recommendations. Weed control treatments the previous year affected weed density in the following soybean crop. In 2 of 3 yr, these differences did not after weed control or soybean yield. Although tactics differed, the bioeconomic model generally resulted in weed control and corn yield similar to the standard herbicide. The model was responsive to differing weed populations, but did not greatly after economic returns under the weed species and densities in this research.

Type
Weed Management
Copyright
Copyright © 1996 by the Weed Science Society of America 

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Footnotes

Joint contribution from U.S. Dep. Agric., Agric. Res. Serv.; Deps. of Agron. and Plant Genet., and Applied Econ., Univ. Minnesota; and Dep. Agric. Econ., Michigan State Univ. Univ. Minnesota Agric. Exp. Stn. J. Paper 22,240.

References

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