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首页> 外文期刊>American-Eurasian Journal of Agricultural and Environmental Sciences >Prediction of Soil Exchangeable Sodium Percentage Based on Soil Sodium Adsorption Ratio
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Prediction of Soil Exchangeable Sodium Percentage Based on Soil Sodium Adsorption Ratio

机译:基于土壤钠吸附率的土壤可交换钠含量预测

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摘要

Despite the increasing prevalence of salinity world-wide, the measurement of exchangeable cation concentrations in saline soil remains problematic. In this situation, it is desirable to determine relationships among indices of soil salinity. Exchangeable Sodium Percentage (ESP) are often determined using laborious and time consuming laboratory tests, but it may be more appropriate and economical to develop a method which uses a more simple soil salinity index. In this study, a linear regression modelfor predicting soil ESP from soil Sodium Adsorption Ratio (SAR) was suggested and the soil ESP was estimated as a function of soil SAR. The statistical results of the study indicated that in order to predict soil ESP based on soil SAR the linear regression model ESP = 1.95 + 1.03 SAR with R~2 = 0.92 can be recommended.
机译:尽管全世界盐度的流行程度不断增加,但盐渍土壤中可交换阳离子浓度的测量仍然存在问题。在这种情况下,期望确定土壤盐度指标之间的关系。可交换钠百分比(ESP)通常是通过费力且费时的实验室测试确定的,但是开发一种使用更简单的土壤盐度指数的方法可能更合适,更经济。在这项研究中,提出了一种线性回归模型,可根据土壤钠吸附率(SAR)预测土壤ESP,并将土壤ESP估算为土壤SAR的函数。研究的统计结果表明,为了基于土壤SAR预测土壤ESP,建议使用线性回归模型ESP = 1.95 + 1.03 SAR,R〜2 = 0.92。

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