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首页> 外文期刊>Journal of Agricultural Science >Predicting Asian Soybean Rust Epidemics Based on Off-Season Occurrence and El Ni?o Southern Oscillation Phenomenon in Paraná and Mato Grosso States, Brazil
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Predicting Asian Soybean Rust Epidemics Based on Off-Season Occurrence and El Ni?o Southern Oscillation Phenomenon in Paraná and Mato Grosso States, Brazil

机译:基于巴西巴拉那州和马托格罗索州的淡季发生和厄尔尼诺现象南方涛动现象预测亚洲大豆锈病的流行

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摘要

The study aimed to propose models to predict Asian soybean rust epidemics based on both the occurrence of the disease in the period between seasons and the climate variability index, which is influenced by the El Ni?o Southern Oscillation (ENSO) phenomenon. The data used to develop these models were obtained from 11 crop seasons, distributed among six regions of Paraná and twelve regions of Mato Grosso which was determined by the National Institute for Space Research (INPE). The three-dimensional model was obtained from linear and quadratic polynomial regression analyses, considering the following climatic variables as independent (Y axis): Rainfall (PP), Standardized Precipitation Index (SPI), Southern Oscillation Index (SOI) and Temperature on the sea surface (SST Ni?o 3.4). The independent variable (X axis) was the number of occurrences of rust in the off-season, and the dependent variable (Z axis) was defined as rust occurrences during the season, which were reported by the Anti-rust Consortium. The best model that explains the epidemic of the disease during the season in Paraná state was composed by Rainfall or SST Ni?o 3.4 variable as the Y axis. The best model for Mato Grosso state used SST Ni?o 3.4 or SOI variable. The variable number of occurrences in the off-season significantly influenced the model, indicating the potential use of this variable and meteorological variables on a macro scale to predict epidemics even before the start of the season.
机译:该研究旨在基于季节之间的疾病发生和受El Ni?o Southern Oscillation(ENSO)现象影响的气候变异指数,提出预测亚洲大豆锈病流行的模型。用于开发这些模型的数据来自11个作物季节,分布在巴拉那州的六个地区和马托格罗索州的十二个地区,由国家空间研究所(INPE)确定。通过将以下气候变量作为独立(Y轴),从线性和二次多项式回归分析获得了三维模型:降雨(PP),标准降水指数(SPI),南方涛动指数(SOI)和海上温度表面(SST Ni?o 3.4)。自变量(X轴)是淡季生锈的发生次数,因变量(Z轴)被定义为季节内的生锈发生,这是由防锈联盟报告的。解释巴拉那州本季节疾病流行的最好模型是由降雨或以SST Ni?o 3.4变量为Y轴组成的。马托格罗索州的最佳模型使用SST Ni?o 3.4或SOI变量。淡季中可变的发生次数显着影响了模型,表明该变量和气象变量可能在宏观尺度上甚至在季节开始之前就可以用来预测流行病。

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