多元统计方法在苏台德中部山地有机土壤转化评价中的应用

B. Zawieja, B. Glina
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引用次数: 1

摘要

在有机土壤退化和转化的研究中,除了土壤科学中使用的传统方法外,可以观察到先进统计方法的重要性日益增加。本文采用多元统计方法对苏台德中部地区有机土壤转化进行了研究。采用安德鲁斯曲线、线性和核判别变量分析及聚类分析。确定了泥炭地土壤及其层间的相似性。可以说,统计方法在有机土壤转化相关土壤科学研究中的应用是一种有价值的工具。使用各种统计方法(如安德鲁斯曲线,线性和核判别变量和聚类分析)可以高概率地证实早期的实验室或现场观测。对于来自不同地植物学泥炭材料、不同类型的泥炭地和供水类型的有机土壤来说,这一点尤其合理,因为它们会影响土壤的主要特性。
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Application of multivariate statistical methods in the assessment of mountain organic soil transformation in the central Sudetes
Summary In studies of organic soil degradation and transformation, alongside the conventional methods used in soil science, an increase in the importance of advanced statistical methods can be observed. In this study some multivariate statistical methods were applied in an investigation of organic soil transformation in the central Sudetes. Andrews curves, linear and kernel discriminant variable analysis and cluster analysis were used. The similarities among peatland soils and their layers were determined. It can be stated that the application of statistical methods in soil science research related to organic soil transformation is a valuable tool. The use of various statistical methods (such as Andrews curves, linear and kernel discriminant variables and cluster analysis) can with high probability confirm earlier laboratory or field observations. This is particularly justified in the case of organic soils derived from varied geobotanical peat materials, different types of peatlands and water supply types, which impact the primary properties of the soil.
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