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Development of a nitrogen recommendation tool for corn considering static and dynamic variables

机译:考虑静态和动态变量的玉米氮推荐工具的开发

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Many soil and weather variables can affect the economical optimum nitrogen (N) rate (EONR) for maize. We classified 54 potential factors as dynamic (change rapidly over time, e.g. soil water) and static (change slowly over time, e.g. soil organic matter) and explored their relative importance on EONR and yield prediction by analyzing a dataset with 51 N trials from Central-West region of Argentina. Across trials, the average EONR was 113 +/- 83 kg N ha(-1) and the average optimum yield was 12.3 +/- 2.2 Mg ha(-1), which is roughly 50% higher than the current N rates used and yields obtained by maize producers in that region. Dynamic factors alone explained 50% of the variability in the EONR whereas static factors explained only 20%. Best EONR predictions resulted by combining one static variable (soil depth) together with four dynamic variables (number of days with precipitation > 20 mm, residue amount, soil nitrate at planting, and heat stress around silking). The resulting EONR model had a mean absolute error of 39 kg N ha(-1) and an adjusted R-2 of 0.61. Interestingly, the yield of the previous crop was not an important factor explaining EONR variability. Regression models for yield at optimum and at zero N fertilization rate as well as regression models to be used as forecasting tools at maize planting time were developed and discussed. The proposed regression models are driven by few easy to measure variables filling the gap between simple (minimum to no inputs) and complex EONR prediction tools such as simulation models. In view of increasing data availability, our proposed models can be further improved and deployed across environments.
机译:许多土壤和天气变量可以影响玉米的经济最佳氮气(N)速率(EONR)。我们将54个潜在因子分类为动态(随时间迅速变化,例如土壤水)和静态(缓慢随时间变化,例如土壤有机物),并通过分析来自中央的51吨试验的数据集来探讨其对EONR和产量预测的相对重要性 - 阿根廷的最佳地区。在试验中,平均eonR为113 +/- 83 kg n(-1),平均最佳产率为12.3 +/- 2.2 mg ha(-1),大约比所用的电流n率高的50%该地区玉米生产商获得的产量。单独的动态因素解释了EONR中可变异的50%,而静态因子仅解释20%。通过将一个静态变量(土壤深度)与四个动态变量组合在一起(沉淀的天数> 20 mm,残留量,种植的土壤硝酸盐,以及丝绸周围的热应力)来产生最佳eonr预测。得到的EONR模型的平均绝对误差为39 kg n(-1)和0.61的调节R-2。有趣的是,先前作物的产量不是解释eonr变异性的重要因素。开发并讨论了以零氮施肥率和零氮施肥率的屈服和零氮施肥率的回归模型,并讨论了玉米种植时间的预测工具。所提出的回归模型是少量易于测量填充简单(最小无输入)和复杂的EONR预测工具(如仿真模型)之间的差距的变量。鉴于增加数据可用性,我们的建议模型可以进一步改进和部署在环境中。

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