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Prediction of annual weed seed emergence in garlic (Allium sativum L.) using soil thermal time

机译:利用土壤热时间预测大蒜(Allium sativum L.)年杂草种子出苗

摘要

Avena fatua L. and Polygonum aviculare L. are two competitive weeds in garlic (Allium sativum L.) fields. Knowledge of the temporal pattern emergence will contribute to optimizing the timing of control measures, thus maximizing efficacy. The development of predictive models can contribute to control measures at early growth stages. The objective of this study was to develop and validate predictive empirical models of emergence for A. fatua and P. aviculare based on thermal time. Cumulative seedling emergence data were obtained during two years from a garlic field and used to develop and validate the models. The relationship between cumulative seedling emergences and cumulative thermal time (TT) under field conditions was analyzed using the Gompertz function. The models accounted for 98% and 96% of the variation observed in A. fatua and P. aviculare, respectively. Model validation performed well in predicting the seedling emergence of both species. According to this model, A. fatua emergence started at 381 TT after sowing and reached 50% and 90% of total emergence at 407 and 478 TT, respectively, with a soil base temperature of 1. °C. P. aviculare started emergence at 410 TT after sowing and reached 50% and 90% of total emergence at 505 and 590 TT, respectively, with a base temperature of 0. °C. Results indicate that these models could be useful as predictive tool contributing to a effective control of A. fatua and P. aviculare populations in garlic crops. © 2014 Elsevier B.V.
机译:Avena fatua L.和Polygonum aviculare L.是大蒜(Allium sativum L.)田间的两种竞争性杂草。了解时间模式的出现将有助于优化控制措施的时机,从而最大程度地发挥功效。预测模型的发展可以有助于在早期成长阶段采取控制措施。这项研究的目的是开发和验证基于热时间的A. fatua和P. aviculare出现的预测经验模型。在两年的时间里从大蒜田获得了累计的出苗数据,并将其用于开发和验证模型。使用Gompertz函数分析了田间条件下累积幼苗出苗与累积热时间(TT)之间的关系。该模型分别占在A. fatua和P. aviculare中观察到的变异的98%和96%。模型验证在预测两个物种的幼苗出苗方面表现良好。根据该模型,在土壤基础温度为1.°C的情况下,播种后从381 TT开始发芽曲霉,分别达到407和478 TT总发芽量的50%和90%。播种后,P。aviculare在410 TT开始出苗,分别在505和590 TT达到总出苗的50%和90%,基本温度为0.°C。结果表明,这些模型可作为预测工具,有助于有效控制大蒜作物中的A. fatua和P. aviculare种群。 ©2014 Elsevier B.V.

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