首页> 外文期刊>Agriculture, Ecosystems & Environment: An International Journal for Scientific Research on the Relationship of Agriculture and Food Production to the Biosphere >Unravelling the effects of soil and crop management on maize productivity in smallholder agricultural systems of western Kenya - An application of classification and regression tree analysis
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Unravelling the effects of soil and crop management on maize productivity in smallholder agricultural systems of western Kenya - An application of classification and regression tree analysis

机译:揭示肯尼亚西部小农农业系统中土壤和作物管理对玉米生产力的影响-分类和回归树分析的应用

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To guide soil fertility investment programmes in sub-Saharan Africa, better understanding is needed of the relative importance of soil and crop management factors in determining smallholder crop yields and yield variability. Spatial variability in crop yields within farms is strongly influenced by variation in both current crop management (e.g. planting dates, fertilizer rates) and soil fertility. Variability in soil fertility is in turn strongly influenced by farmers' past soil and crop management. The aim of this study was to investigate the relative importance of soil fertility and crop management factors in determining yield variability and the gap between farmers' maize yields and potential yields in western Kenya. Soil fertility status was assessed on 522 farmers' fields on 60 farms and paired with data on maize-yield and agronomic management for a sub-sample 159 fields. Soil samples were analysed by wet chemistry methods (1/3 of the samples) and also by near infrared diffuse reflectance spectroscopy (all samples). Spectral prediction models for different soil indicators were developed to estimate soil properties for the 2/3 of the samples not analysed by wet chemistry. Because of the complexity of the data set, classification and regression trees (CART) were used to relate crop yields to soil and management factors. Maize grain yields for fields of different soil fertility status as classified by farmers were: poor, 0.5-1.1; medium, 1.0-1.8; high, 1.4-2.5 t ha(-1). The CART analysis showed resource use intensity, planting date, and time of planting were the principal variables determining yield, but at low resource intensity, total soil N and soil Olsen P became important yield-determining factors. Only a small group of plots with high average grain yields (2.5 t ha(-1); n = 8) was associated with use of nutrient inputs and good plant stands, whereas the largest group with low average yields (1.2 t ha(-1); n = 90) was associated with soil Olsen P values of less than 4 mg kg(-1). This classification could be useful as a basis for targeting agronomic advice and inputs to farmers. The results suggest that soil fertility variability patterns on smallholder farms are reinforced by farmers investing more resources on already fertile fields than on infertile fields. CART. proved a useful tool for simplifying analysis and providing robust models linking yield to heterogeneous crop management and soil variables. (c) 2007 Elsevier B.V. All rights reserved.
机译:为了指导撒哈拉以南非洲的土壤肥力投资计划,需要更好地了解土壤和作物管理因素在确定小农作物产量和产量变异性方面的相对重要性。农场内作物产量的空间变异性受到当前作物管理方式(例如播种日期,肥料用量)和土壤肥力的变化的强烈影响。反过来,土壤肥力的变化又受到农民过去的土壤和作物管理的强烈影响。这项研究的目的是调查土壤肥力和作物管理因素在确定产量变化以及肯尼亚西部农民的玉米产量与潜在产量之间的差距方面的相对重要性。在60个农场的522个农民田间评估了土壤肥力状况,并与159个田间样本的玉米产量和农艺管理数据配对。土壤样品通过湿化学方法(样品的1/3)和近红外漫反射光谱法(所有样品)进行了分析。建立了针对不同土壤指标的光谱预测模型,以估计未经湿化学分析的2/3样品的土壤特性。由于数据集的复杂性,使用分类树和回归树(CART)将作物产量与土壤和管理因素联系起来。根据农民的分类,在不同土壤肥力状况下,玉米的产量为:差,0.5-1.1;中,1.0-1.8;高1.4-2.5 t ha(-1)。 CART分析表明,资源利用强度,播种日期和播种时间是决定产量的主要变量,但在低资源强度下,土壤总氮和土壤Olsen P成为决定产量的重要因素。只有一小批平均谷物产量高的田地(2.5 t ha(-1); n = 8)与使用养分投入和良好的林分有关,而最大的一组平均谷物产量低(1.2 t ha(-) 1); n = 90)与土壤Olsen P值小于4 mg kg(-1)相关。这种分类可以作为针对农户的农业建议和投入的基础。结果表明,小农户的土壤肥力变异性模式得到了加强,因为农民在已经肥沃的土地上比在不肥沃的土地上投入了更多的资源。大车。事实证明,这是简化分析并提供将产量与异类作物管理和土壤变量联系起来的可靠模型的有用工具。 (c)2007 Elsevier B.V.保留所有权利。

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