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Modeling the impact of agrometeorological variables on soybean yield in the Mato Grosso Do Sul: 2000-2019

机译:涂抹农业气象变量对MATO GROSSO DO SUL中大豆产量的影响:2000-2019

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The study of the soybean yield variability influenced by the climate contributes to the planning of strategies to mitigate its negative effects. Thus, our aim was to calibrate agrometeorological models for soybean yield forecast and identify the weather variables that most influence soybean yield. This study used historical series of climate and soybean yield data from soybean-producing locations in the Mato Grosso do Sul state, Brazil. The historical climate series was 20 years (2000-2019). The soybean production, yield, and planted area data of the localities were in the period from 2009-2018. Multiple linear regression analysis was the statistical tool used for data modeling. The models from the north and central regions forecast of anticipation of 2 months since the final data necessary to apply the model were EXC(JANc)and P-JANc, respectively. The models calibrated for the southern region reported anticipation of one month since the final data necessary to apply the model was EXCFEVc. The calibrated models used to forecast soybean yield as a function of climatic conditions have a high degree of significance (p 0.05), high accuracy and errors lower. The models for the northern and central regions show a prevision of anticipation of 2 months before soybean harvest, a period that is essential for producers to be able to conduct pre- and post-harvest planning. The climate variable with the greatest negative influence (r = - 0.54) on soybean yield in Mato Grosso do Sul state was water stress in December.
机译:对气候影响的大豆产量可变性的研究有助于减轻其负面影响的策略规划。因此,我们的目的是校准谷植物学模型,用于大豆产量预测,并确定大豆产量最大的天气变量。本研究使用巴西Mato Grosso Do Sul Stude的历史悠久的气候和大豆产量数据,从巴西Mato Grosso Do Sul State。历史悠久的气候系列是20年(2000-2019)。大豆生产,产量和种植地区的地区数据在2009 - 2018年的期间。多个线性回归分析是用于数据建模的统计工具。自北部和中心地区的型号预期2个月以来,申请模型所需的最终数据分别是Exc(Janc)和P-Janc。为南部地区校准的模型报告了一个月,自应用模型所需的最终数据是ExcFevc所必需的。用于预测大豆产量的校准模型作为气候条件的函数具有高度的意义(P <0.05),高精度和误差降低。北部和中部地区的模型显示大豆收获前2个月的预期,这是生产者必不可少的时间,以便能够进行收获前和收获后的规划。在Mato Grosso在MATO Grosso Do Sul State的大豆产量(R = - 0.54)的气候变量是12月的水分压力。

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