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首页> 外文期刊>Australasian Plant Pathology >Forecasting the wheat powdery mildew (Blumeria graminis f. Sp tritici) using a remote sensing-based decision-tree classification at a provincial scale
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Forecasting the wheat powdery mildew (Blumeria graminis f. Sp tritici) using a remote sensing-based decision-tree classification at a provincial scale

机译:在省级规模使用基于遥感的决策树分类的小麦粉状霉菌(BLUMERIA GRAMINIS F.SP TRITICI)

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摘要

Powdery mildew (Blumeria graminis) on wheat (Triticum aestivum) is one of the most common and devastating foliar diseases, which has resulted in significant reductions in wheat production. The study discusses an assessment of Moderate Resolution Imaging Spectroradiometer (MODIS) time-series data products for forecasting the incidence of wheat powdery mildew at a provincial scale. Firstly, the wheat areas were identified using 8-day interval Normalized Difference Vegetation Index (NDVI) dataset at 250 m resolution. A decision tree was then constructed to identify four infection severities (healthy, mild, moderate and severe) using three kinds of forecasting factors including wheat growth situation (NDVI), habitat factors (land surface temperature, LST) and meteorological conditions (rainfall and air temperature). The results show that the coefficient of determination (R (2)) is 0.999 between the remote sensing based and the statistical data. Wheat-growing areas were primarily distributed in Fuyang, Bozhou, Suzhou and Huaibei of Wanbei (54.38%) and the northern part of Wanzhong. The overall forecasting accuracy was 83.33% and the infected wheat areas showed a spatial spread from the capital city to surrounding regions. The overall infection rate of Anhui Province was 15.64% and the mildly affected wheat areas accounted for 65.07%.
机译:小麦(Triticum aestivum)的白粉病(Blumeria Graminis)是最常见和最毁灭性的叶面疾病之一,导致小麦生产的显着减少。该研究探讨了对中等分辨率成像光谱仪(MODIS)时间序列数据产品的评估,用于预测省级小麦粉末状霉菌的发病率。首先,使用80米分辨率的8天间隔归一化差异植被指数(NDVI)数据集来鉴定小麦区域。然后建立一个决定树以使用包括小麦生长情况(NDVI),栖息地(土地表面温度,LST)和气象状况(降雨和空气温度)。结果表明,基于遥感和统计数据之间的确定系数(R(2))是0.999。小麦生长地区主要分布在阜阳,博州,苏州,淮北淮北(54.38%)和万中北部。总体预测准确性为83.33%,受感染的麦地区显示出从首都到周边地区的空间蔓延。安徽省总体感染率为15.64%,温和影响的小麦地区占65.07%。

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