African Plant Nutrition Institute, Benguérir, Morocco.
Agricultural and Food Engineering Department, IIT Kharagpur, Kolkata, India.
PLoS One. 2020 Feb 24;15(2):e0229100. doi: 10.1371/journal.pone.0229100. eCollection 2020.
Yield gaps of maize (Zea mays L.) in the smallholder farms of eastern India are outcomes of a complex interplay of climatic variations, soil fertility gradients, socio-economic factors, and differential management intensities. Several machine learning approaches were used in this study to investigate the relative influences of multiple biophysical, socio-economic, and crop management features in determining maize yield variability using several machine learning approaches. Soil fertility status was assessed in 180 farms and paired with the surveyed data on maize yield, socio-economic conditions, and agronomic management. The C&RT relative variable importance plot identified farm size, total labor, soil factors, seed rate, fertilizer, and organic manure as influential factors. Among the three approaches compared for classifying maize yield, the artificial neural network (ANN) yielded the least (25%) misclassification on validation samples. The random forest partial dependence plots revealed a positive association between farm size and maize productivity. Nonlinear support vector machine boundary analysis for the eight top important variables revealed complex interactions underpinning maize yield response. Notably, farm size and total labor synergistically increased maize yield. Future research integrating these algorithms with empirical crop growth models and crop simulation models for ex-ante yield estimations could result in further improvement.
印度东部小农户玉米(Zea mays L.)的产量差距是气候变异、土壤肥力梯度、社会经济因素和差异化管理强度复杂相互作用的结果。本研究采用了几种机器学习方法,利用多种机器学习方法研究了多个生物物理、社会经济和作物管理特征对玉米产量变异性的相对影响。在 180 个农场中评估了土壤肥力状况,并将其与调查的玉米产量、社会经济条件和农业管理数据进行了配对。C&RT 相对变量重要性图确定了农场规模、总劳动力、土壤因素、播种率、肥料和有机肥是有影响的因素。在比较的三种方法中,用于分类玉米产量的人工神经网络 (ANN) 在验证样本上的错误分类率最低(25%)。随机森林部分依赖图显示了农场规模和玉米生产力之间的正相关关系。对八个最重要变量的非线性支持向量机边界分析揭示了支撑玉米产量响应的复杂相互作用。值得注意的是,农场规模和总劳动力协同增加了玉米产量。未来的研究将这些算法与经验作物生长模型和作物模拟模型集成,用于事前产量估计,可能会进一步提高产量。