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Estimating Particle Density from Soil Inventory Data in the Lake Erie Lowlands

机译:从伊利湖低地土壤清单数据估算颗粒密度

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摘要

The objective of this study was to develop a statistically based function for the estimation of particle density of texturally diverse soils sampled from a reasonably large geographic area {- 12 000 km ) to enhance further development of pedotransferfunc tions with regional application Available soil physical property data were assembled for soil series mapped during five municipal level soil inventory upgrades in southwestern Ontario, Canada A total of 282 soil horizons from 91 soil profiles were identified that had the requisite measured data for particle density (water pycnometer method) soil organic carbon content (wet oxidation method), and particle-size distnbution (pipette method) Both linear and nonlinear regression procedures were used torelate particle density to soil organic matter content Plausible estimates of particle density for the mineral component (2 65 Mg m ) and particularly for the humic component (1 23 Mg m were obtained (r~2 = 0 208, RMSE = 011 Mg m~(-3), P < 0.0001) even though the calibration data set had a limited range of soil organic matter content (<12%) The particle density of different mineral particle-size fractions (e g clay) could also be distinguished statistically The predictive capability of regression equations originating from soil inventory data sets encompassing large geographic areas are likely to be influenced by the soil taxonomic range sampled and the general data quality.
机译:这项研究的目的是开发一种基于统计的函数,用于估计从相当大的地理区域(-12000 km)中采样的质地多样的土壤的颗粒密度,从而通过区域应用来促进脚踏传递的进一步发展。可用的土壤物理性质数据在加拿大安大略省西南部的五次市级土壤清单升级中,对土壤系列进行了组装,确定了91个土壤剖面中的282个土壤层,它们具有颗粒密度(比重瓶法),土壤有机碳含量(湿)的必要测量数据。氧化法和粒度分布法(移液器法)均采用线性和非线性回归程序将颗粒密度与土壤有机质含量相关。对矿物成分(2 65 Mg m),特别是腐殖质颗粒密度的合理估计(获得1 23 Mg m(r〜2 = 0208,RMSE = 011 Mg m〜(-3),P <0.0 001),即使校准数据集的土壤有机质含量范围有限(<12%),也可以通过统计学方式区分不同矿物粒度级分(例如粘土)的颗粒密度。回归方程的预测能力源自土壤涵盖大地理区域的清单数据集可能会受到采样的土壤生物分类范围和总体数据质量的影响。

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