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首页> 外文期刊>Agronomy >Development of a Geo-Referenced Database for Weed Mapping and Analysis of Agronomic Factors Affecting Herbicide Resistance in Apera spica-venti L. Beauv. (Silky Windgrass)
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Development of a Geo-Referenced Database for Weed Mapping and Analysis of Agronomic Factors Affecting Herbicide Resistance in Apera spica-venti L. Beauv. (Silky Windgrass)

机译:杂草定位的地理参考数据库的开发和影响Apera spica-venti L. Beauv的除草剂抗性的农艺因素分析。 (丝风草)

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In this work, we evaluate the role of agronomic factors in the selection for herbicide resistance in Apera spica-venti L. Beauv. (silky windgrass). During a period of three years, populations were collected in more than 250 conventional fields across Europe and tested for resistance in the greenhouse. After recording the field history of locations, a geo-referenced database has been developed to map the distribution of herbicide-resistant A. spica-venti populations in Europe. A Logistic Regression Model was used to assess whether and to what extent agricultural and biological factors (crop rotation, soil tillage, sowing date, soil texture and weed density) affect the probability of resistance selection apart from the selection pressure due to herbicide application. Our results revealed that rotation management and soil tillage are the factors that have the greatest influence on the model. In addition, first order interactions between these two variables were highly significant. Under conventional tillage, a percentage of winter crops in the rotation exceeding 75% resulted in a 1280-times higher risk of resistance selection compared to rotations with less than 50% of winter crops. Under conservation tillage, the adoption of 75% of winter crops increased the risk of resistance 13-times compared to rotations with less than 50% of winter crops. Finally, early sowing and high weed density significantly increased the risk of resistance compared to the reference categories (later sowing and low weed density, respectively). Soil texture had no significant influence. The developed model can find application in management programs aimed at preventing the evolution and spread of herbicide resistance in weed populations.
机译:在这项工作中,我们评估了农艺因素在Apera spica-venti L. Beauv的除草剂抗性选择中的作用。 (丝滑的草)。在三年的时间内,收集了欧洲250多个常规田地中的种群,并对温室中的抗性进行了测试。在记录了地点的田野历史之后,建立了一个地理参考数据库,以绘制欧洲抗除草剂抗性天牛种群的分布图。使用Logistic回归模型评估农业和生物因素(农作物轮作,土壤耕作,播种日期,土壤质地和杂草密度)是否以及在何种程度上影响除草剂施用带来的选择压力以外的抗性选择概率。我们的结果表明,轮作管理和土壤耕作是对该模型影响最大的因素。此外,这两个变量之间的一阶相互作用非常重要。在常规耕作下,轮作中超过75%的冬季作物百分比导致的抗性选择风险比轮作中少于50%的冬季作物高1280倍。在保护性耕作下,与少于50%的冬季作物轮作相比,采用> 75%的冬季作物增加了13倍的抗性风险。最后,与参考类别相比,早播和高杂草密度显着增加了抗药性的风险(分别为晚播和低杂草密度)。土壤质地没有显着影响。所开发的模型可以在旨在防止杂草种群中除草剂抗性的演变和扩散的管理计划中找到应用。

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