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Cluster and Principle Component Analysis of Soybean Grown at Various Row Spacings, Planting Dates and Plant Populations

机译:不同行距,播种日期和种群的大豆的聚类和主成分分析

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摘要

Increased light interception (LI), along with concomitant increases in crop growth rate (CGR), is the main factor explaining how cultural factors such as row spacing, plant population, and planting date affect soybean yield. Leaf area index (LAI), LI, and CGR are interrelated in a “virtuous spiral” where increased LAI leads to greater LI resulting in a higher CGR and more total dry matter per area (TDM). This increases LAI, thus accelerating the entire physiological process to a higher level. A greater understanding of this complex growth dynamic process could be achieved through use of cluster analysis and principle components analysis (PCA). Cluster analysis involves grouping of similar objects in such way that objects in same cluster are similar to each other and dissimilar to objects in other cluster. PCA is a technique used to reduce a large set of variables to a few meaningful ones. Seasonal relative leaf area index (RLAI), relative light interception (RLI), and relative total dry matter (RTDM) response curves were determined from the data by a stepwise regression analysis in which these parameters were regressed against relative days after emergence (RDAE). Greatest levels of RLAI, RLI and RTDM were observed in soybean planted early on narrow row spacings and recorded greater plant population. In contrast, lower levels of these parameters occurred on plants with wide row spacings at late planting dates. For farmers, these results are useful in terms of adopting certain cultural practices which can help in the management of stress in soybean.
机译:增加的光截获率(LI)以及随之而来的作物生长速率(CGR)的增加是解释诸如行距,植物种群和播种日期等文化因素如何影响大豆产量的主要因素。叶面积指数(LAI),LI和CGR在“良性螺旋”中相互关联,其中增加的LAI导致更大的LI,从而导致更高的CGR和每单位面积的总干物质(TDM)。这增加了LAI,从而将整个生理过程加速到更高的水平。通过使用聚类分析和主成分分析(PCA),可以更好地理解这一复杂的增长动态过程。聚类分析涉及对相似对象进行分组,以使同一聚类中的对象彼此相似,而与其他聚类中的对象不相似。 PCA是一种用于将大量变量减少为几个有意义的变量的技术。通过逐步回归分析从数据中确定季节性相对叶面积指数(RLAI),相对光截留率(RLI)和相对总干物质(RTDM)响应曲线,其中这些参数相对于出苗后相对天数(RDAE)进行回归。在窄行距的早期种植的大豆中观察到最高水平的RLAI,RLI和RTDM,并记录了更大的植物种群。相反,这些参数的较低水平发生在播种后期行距较宽的植物上。对于农民而言,这些结果对于采取某些有助于减少大豆压力的文化实践非常有用。

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