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A Mechanistic Model of Botrytis cinerea on Grapevines That Includes Weather Vine Growth Stage and the Main Infection Pathways

机译:葡萄树上葡萄灰霉病的机械模型包括天气葡萄树的生长阶段和主要感染途径

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摘要

A mechanistic model for Botrytis cinerea on grapevine was developed. The model, which accounts for conidia production on various inoculum sources and for multiple infection pathways, considers two infection periods. During the first period (“inflorescences clearly visible” to “berries groat-sized”), the model calculates: i) infection severity on inflorescences and young clusters caused by conidia (SEV1). During the second period (“majority of berries touching” to “berries ripe for harvest”), the model calculates: ii) infection severity of ripening berries by conidia (SEV2); and iii) severity of berry-to-berry infection caused by mycelium (SEV3). The model was validated in 21 epidemics (vineyard × year combinations) between 2009 and 2014 in Italy and France. A discriminant function analysis (DFA) was used to: i) evaluate the ability of the model to predict mild, intermediate, and severe epidemics; and ii) assess how SEV1, SEV2, and SEV3 contribute to epidemics. The model correctly classified the severity of 17 of 21 epidemics. Results from DFA were also used to calculate the daily probabilities that an ongoing epidemic would be mild, intermediate, or severe. SEV1 was the most influential variable in discriminating between mild and intermediate epidemics, whereas SEV2 and SEV3 were relevant for discriminating between intermediate and severe epidemics. The model represents an improvement of previous B. cinerea models in viticulture and could be useful for making decisions about Botrytis bunch rot control.
机译:建立了葡萄灰葡萄孢的机制模型。该模型考虑了各种接种源上的分生孢子产生和多种感染途径,考虑了两个感染期。在第一个阶段(“花序清晰可见”到“浆果大小”),该模型计算:i)分生孢子(SEV1)引起的花序和幼簇感染严重程度。在第二阶段(“大量浆果接触”到“成熟收获的浆果”)中,模型计算:ii)分生孢子对成熟浆果的感染严重性(SEV2); iii)由菌丝体(SEV3)引起的浆果间感染的严重性。该模型已在2009年至2014年的意大利和法国的21种流行病(葡萄园×年组合)中得到验证。判别函数分析(DFA)用于:i)评估模型预测轻度,中度和严重流行病的能力; ii)评估SEV1,SEV2和SEV3如何导致流行病。该模型正确分类了21种流行病中的17种。 DFA的结果还用于计算正在进行的流行病为轻度,中度或重度的每日可能性。 SEV1是区分轻度和中等流行病的最有影响力的变量,而SEV2和SEV3与区分中等和严重流行病有关。该模型代表了葡萄栽培中以前的灰葡萄孢霉模型的改进,对于做出有关葡萄孢菌腐烂控制的决策可能有用。

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