利用易于收集的局部特征模拟玉米对分氮施肥的响应

Nitrogen Pub Date : 2023-11-09 DOI:10.3390/nitrogen4040024
Léon Etienne Parent, Gabriel Deslauriers
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摘要

玉米(Zea mays)是一种高氮(N)需求的作物,可能导致硝酸盐污染和一氧化二氮的排放。施氮一般在播种期和6期之间进行。正确的分割N率适用于V6并最大限度地减少对环境的破坏是具有挑战性的。我们的目标是:(1)利用机器学习(ML)模型预测玉米对添加氮(V6)的响应;(2)通过独立的农场试验交叉检验模型结果。我们收集了1992年至2022年间在加拿大东部进行的461次试验。预测粮食产量的数据集包括施氮量、周降水量和玉米热单位、播期、前茬、耕作方式、土壤系列、土壤质地、有机质含量和ph。随机森林和XGBoost预测V6期粮食产量准确(R2 = 0.78 ~ 0.80;RSME和MAE分别为1.22 ~ 1.29和0.96 ~ 0.98 Mg ha−1)。V6阶段的模型精度与全季预测相当。通过不同施氮量模拟的响应模式表明,在独立进行的10个农场试验中,有8个试验的粮食产量在总N ha - 1为125-150 kg时开始趋于平稳。机器辅助施氮具有巨大的经济和环境效益潜力。
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Simulating Maize Response to Split-Nitrogen Fertilization Using Easy-to-Collect Local Features
Maize (Zea mays) is a high-nitrogen (N)-demanding crop potentially contributing to nitrate contamination and emissions of nitrous oxide. The N fertilization is generally split between sowing time and the V6 stage. The right split N rate to apply at V6 and minimize environmental damage is challenging. Our objectives were to (1) predict maize response to added N at V6 using machine learning (ML) models; and (2) cross-check model outcomes by independent on-farm trials. We assembled 461 N trials conducted in Eastern Canada between 1992 and 2022. The dataset to predict grain yield comprised N dosage, weekly precipitations and corn heat units, seeding date, previous crop, tillage practice, soil series, soil texture, organic matter content, and pH. Random forest and XGBoost predicted grain yield accurately at the V6 stage (R2 = 0.78–0.80; RSME and MAE = 1.22–1.29 and 0.96–0.98 Mg ha−1, respectively). Model accuracy up to the V6 stage was comparable to that of the full-season prediction. The response patterns simulated by varying the N doses showed that grain yield started to plateau at 125–150 kg total N ha−1 in eight out of ten on-farm trials conducted independently. There was great potential for economic and environmental gains from ML-assisted N fertilization.
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