Caçador Experimental Station, Agricultural Research and Rural Extension Agency of Santa Catarina (Epagri), Caçador, Santa Catarina, Brazil.
Department of Soils and Agrifood Engineering, Laval University, Québec, Canada.
PLoS One. 2022 May 17;17(5):e0268516. doi: 10.1371/journal.pone.0268516. eCollection 2022.
Brazil presents large yield gaps in garlic crops partly due to nutrient mismanagement at local scale. Machine learning (ML) provides powerful tools to handle numerous combinations of yield-impacting factors that help reducing the number of assumptions about nutrient management. The aim of the current study is to customize fertilizer recommendations to reach high garlic marketable yield at local scale in a pilot study. Thus, collected 15 nitrogen (N), 24 phosphorus (P), and 27 potassium (K) field experiments conducted during the 2015 to 2017 period in Santa Catarina state, Brazil. In addition, 61 growers' observational data were collected in the same region in 2018 and 2019. The data set was split into 979 experimental and observational data for model calibration and into 45 experimental data (2016) to test ML models and compare the results to state recommendations. Random Forest (RF) was the most accurate ML to predict marketable yield after cropping system (cultivar, preceding crops), climatic indices, soil test and fertilization were included features as predictor (R2 = 0.886). Random Forest remained the most accurate ML model (R2 = 0.882) after excluding cultivar and climatic features from the prediction-making process. The model suggested the application of 200 kg N ha-1 to reach maximum marketable yield in a test site in comparison to the 300 kg N ha-1 set as state recommendation. P and K fertilization also seemed to be excessive, and it highlights the great potential to reduce production costs and environmental footprint without agronomic loss. Garlic root colonization by arbuscular mycorrhizal fungi likely contributed to P and K uptake. Well-documented data sets and machine learning models could support technology transfer, reduce costs with fertilizers and yield gaps, and sustain the Brazilian garlic production.
巴西的大蒜作物产量存在较大差距,部分原因是当地养分管理不当。机器学习(ML)提供了强大的工具,可以处理影响产量的众多因素组合,有助于减少对养分管理的假设。本研究的目的是在试点研究中为当地范围内的大蒜高商品产量定制肥料推荐。因此,收集了 2015 年至 2017 年期间在巴西圣卡塔琳娜州进行的 15 个氮(N)、24 个磷(P)和 27 个钾(K)田间试验,以及 2018 年和 2019 年在同一地区收集的 61 个种植者观测数据。数据集分为 979 个实验和观测数据进行模型校准,以及 45 个实验数据(2016 年)来测试 ML 模型并将结果与州推荐值进行比较。随机森林(RF)是最准确的 ML,在包括种植制度(品种、前茬作物)、气候指数、土壤测试和施肥在内的特征作为预测因子后,预测商品产量(R2=0.886)。在预测过程中排除品种和气候特征后,随机森林仍然是最准确的 ML 模型(R2=0.882)。与州推荐的 300kg N ha-1 相比,该模型建议在试验点应用 200kg N ha-1 以达到最大商品产量。P 和 K 的施肥似乎也过高,这突出表明在不减少农业产量的情况下,有很大的潜力降低生产成本和环境足迹。丛枝菌根真菌对大蒜根的定殖可能有助于 P 和 K 的吸收。有充分记录的数据和机器学习模型可以支持技术转让,减少肥料和产量差距的成本,并维持巴西大蒜的生产。