Littleseed canarygrass is a troublesome grass weed in wheat fields in Iran.
Predicting weed emergence dynamics can help farmers more effectively control
weeds. In this work, four nonlinear regression models (beta, three-piece
segmented, two-piece segmented, and modified Malo's exponential sine) were
compared to describe the cardinal temperatures for the germination of
littleseed canarygrass. Two replicated experiments were performed with the
same temperatures. An iterative optimization method was used to calibrate
the models and different statistical indices (mean absolute error [MAE],
coefficient of determination [R2], intercept and slope of the regression equation of predicted
vs. observed hours to germination) were applied to compare their
performance. The three-piece segmented model was the best model to predict
the germination rate (R2 = 0.99, MAE = 0.20 d, and coefficient of variation 1.01 to
4.06%). Based on the model outputs, the base, the lower optimum, the upper
optimum, and the maximum temperatures for the germination of littleseed
canarygrass were estimated to be 4.69, 22.60, 29.62, and 38.13 C,
respectively. The thermal time required to reach 10, 50, and 90% germination
was 31.98, 39.26 and 45.55 degree-days, respectively. The cardinal
temperatures depended on the model used for their estimation. Overall, the
three-piece segmented model was better suited than the other models to
estimate the cardinal temperatures for the germination of littleseed
canarygrass.