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Weed reproduction model parameters may be estimated from crop yield loss data

Published online by Cambridge University Press:  20 January 2017

Lori J. Wiles
Affiliation:
Water Management Research Unit, U.S. Department of Agriculture, Agricultural Research Service, Agricultural Engineering Research Center, Colorado State University, Fort Collins, CO 80523-1325
Gregory S. McMaster
Affiliation:
Great Plains Systems Research Unit, U.S. Department of Agriculture, Agricultural Research Service, Room 353, 301 South Howes Street, Fort Collins, CO 80522

Abstract

Studies quantifying weed seed production as a function of weed density are expensive and difficult, and lack of these data is a common limitation in modeling weed population dynamics over time. Observed empirical and theoretical relationships between crop yield loss curves and weed seed production curves led us to the hypothesis that there should be a strong relationship between the shapes of these two curves. Data from literature sources were evaluated to test this hypothesis for hyperbolic curves and to determine if the data describing the crop yield loss caused by weeds could provide estimates of the shape parameter of a hyperbolic equation for describing density dependence in weed reproduction. For each of 162 data sets, a shape parameter (N50) and a scale parameter (U) were estimated for an increasing hyperbolic model both for absolute crop yield loss as a function of weed density (N50YL, UYL) and for weed yield (either total biomass yield or seed yield) as a function of weed density (N50WY, UWY). N50YL was strongly correlated with N50WY across all data sets, with an apparent 1:1 relationship between the two. This relationship suggests that the shape parameter of the yield loss model may substitute for the shape parameter of a hyperbolic model describing the density-dependence of weed seed production. This substitution will be most useful in weed population modeling situations where data describing crop yield loss as a function of weed density are already available, but data describing weed seed production as a function of weed density are not available.

Type
Research Article
Copyright
Copyright © Weed Science Society of America 

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