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Interpreting within-field relationships between crop yields and soil and plant variables using factor analysis

机译:使用因子分析解释作物产量与土壤和植物变量之间的田间关系

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Precision farming technologies allow for collection of large amounts of data from producers' fields. This study used grid-sampling techniques and factor analysis to investigate relationships between several site variables and corn (Zea mays L.) yields on five producer's fields. Sampling positions (112 to 258) were at the intersecting points of grid lines spaced 15 m. Variables measured were soil organic matter, pH, P, K, and NO_3-N; residue cover; broadleaf and grass weed control; corn height at two dates, plant population, and grain yield. Correlation and multiple regression analyses showed that some variables were related to corn yields but the variables involved in significant relationships varied among fields. Moreover, the site variables often were highly correlated and the correlations varied among fields. In these conditions multiple regression would be an unreliable analysis tool. Study of covariance realtionships among the variables using factor analysis showed that some of the variables measured could be grouped to indicate a number of underlying common factors influencing corn yields. These common factors were soil fertility, weed control, and conditions for early plant growth. Their importance in explaining the yield variability differed greatly among fields. Application of factor analysis to data generated by precision-farming technologies has potential for describing and understanding relationships between measured varibales.
机译:精确耕作技术可从生产者的田地收集大量数据。这项研究使用网格采样技术和因子分析来研究五个生产者田地几个站点变量与玉米(Zea mays L.)产量之间的关系。采样位置(112到258)位于网格线的相交点,相距15 m。测量的变量为土壤有机质,pH,P,K和NO_3-N;残留物覆盖阔叶草杂草防治;两个日期的玉米高度,植物种群和谷物产量。相关性和多元回归分析表明,一些变量与玉米产量有关,但涉及显着关系的变量在田间有所不同。此外,站点变量通常高度相关,并且各个字段之间的相关性也有所不同。在这种情况下,多元回归将是不可靠的分析工具。使用因子分析对变量之间的协方差关系进行的研究表明,可以对一些测得的变量进行分组,以表明许多影响玉米单产的潜在共同因素。这些共同因素是土壤肥力,杂草控制和植物早期生长的条件。它们在解释产量变异性方面的重要性在各个领域之间差异很大。将因子分析应用于由精确农业技术生成的数据,具有描述和理解被测自变量之间关系的潜力。

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