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Prediction model for deoxynivalenol in wheat grain based on weather conditions

机译:基于天气状况的小麦籽粒中脱氧雪腐烯醇预测模型

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Environmental factors influence the growth, survival, dissemination and hence the incidence of Fusarium fungi and the disease severity. The knowledge of the quantitative and qualitative effects of environmental factors and growing practices on initial infection, disease development and mycotoxin production is important for prediction of disease severity, yield impact and grain contamination with mycotoxins. The objective of this study was to design a model for prediction of deoxynivalenol (DON) content in winter wheat grain based on weather conditions, preceding crop and soil cultivation. The grain samples from winter wheat field experiments conducted in 2002–2005 to determine the effect of preceding crop in combination with soil cultivation on Fusarium head blight infection were analysed for the DON content. Average daily weather data (temperature, rainfall, relative humidity) were collected using an automated meteorological station and analysed separately for April, May and a 5 days period prior to the beginning of flowering and 5 days after the beginning of flowering. The correlation coefficients of DON content to weather data were calculated for monthly data prior to heading and 5 days data prior to and after the beginning of anthesis. Highest positive correlation coefficients were found for sum of precipitation in April, average temperature in April, and sum of precipitation 5 days prior to anthesis. Significant negative correlation was found for average temperature in May and average relative humidity 5 days prior to anthesis. Using the data from this experiment, we trained neural networks for prediction of deoxynivalenol content on the basis of weather data and preceding crop. The most appropriate neural network model was then coupled with AgriClim model to simulate spatial and temporal variation of DON content in wheat samples for south Moravia and north-east Austria area.
机译:环境因素影响镰刀菌真菌的生长,存活,传播,进而影响其发病率和疾病的严重程度。了解环境因素和生长习惯对初始感染,疾病发展和霉菌毒素产生的定量和定性影响的知识,对于预测疾病的严重程度,产量影响和霉菌毒素对谷物的污染至关重要。这项研究的目的是设计一个基于天气条件,作物和土壤耕作的冬小麦籽粒中脱氧雪腐烯醇(DON)含量的预测模型。分析了2002-2005年进行的冬小麦田间试验的谷物样品,以确定前茬作物与土壤栽培相结合对镰刀菌枯萎病感染的影响,以分析其DON含量。使用自动气象站收集平均每日天气数据(温度,降雨量,相对湿度),分别分析4月,5月以及开始开花前5天和开始开花后5天的时间。计算了花期开始前的每月数据和花期开始前后的5天数据,得出DON含量与天气数据的相关系数。在四月前的总和,四月的平均温度和花前五天的总和中发现了最高的正相关系数。花期前5天平均温度和平均相对湿度之间存在显着的负相关。利用来自该实验的数据,我们训练了神经网络,以根据天气数据和先前作物预测脱氧雪腐烯醇含量。然后将最合适的神经网络模型与AgriClim模型耦合,以模拟南部摩拉维亚和奥地利东北地区小麦样品中DON含量的时空变化。

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