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首页> 外文期刊>European Journal of Soil Science >Predicting pasture root density from soil spectral reflectance: field measurement
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Predicting pasture root density from soil spectral reflectance: field measurement

机译:从土壤光谱反射率预测牧场根系密度:田间测量

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This paper reports the development and evaluation of a field technique for in situ measurement of root density using a portable spectroradiometer. The technique was evaluated at two sites in permanent pasture on contrasting soils (an Allophanic and a Fluvial Recent soil) in the Manawatu region, New Zealand. Using a modified soil probe, reflectance spectra (350-2500 nm) were acquired from horizontal surfaces at three depths (15, 30 and 60 mm) of an 80-mm diameter soil core, totalling 108 samples for both soils. After scanning, 3-mm soil slices were taken at each depth for root density measurement and soil carbon (C) and nitrogen (N) analysis. The two soils exhibited a wide range of root densities from 1.53 to 37.03 mg dry root gp# soil. The average root density in the Fluvial soil (13.21 mg gp#) was twice that in the Allophanic soil (6.88 mg gp#). Calibration models, developed using partial least squares regression (PLSR) of the first derivative spectra and reference data, were able to predict root density on unknown samples using a leave-one-out cross-validation procedure. The root density predictions were more accurate when the samples from the two soil types were separated (rather than grouped) to give sub-populations (n = 54) of spectral data with more similar attributes. A better prediction of root density was achieved in the Allophanic soil (rpo = 0.83, ratio prediction to deviation (RPD ) = 2.44, root mean square error of cross-validation (RMSECV ) = 1.96 mg g p#) than in the Fluvial soil (rpo = 0.75, RPD = 1.98, RMSECV = 5.11 mg g p#). It is concluded that pasture root density can be predicted from soil reflectance spectra acquired from field soil cores. Improved PLSR models for predicting field root density can be produced by selecting calibration data from field data sources with similar spectral attributes to the validation set. Root density and soil C content can be predicted independently, which could be particularly useful in studies examining potential rates of soil organic matter change.
机译:本文报道了使用便携式光谱辐射计现场测量根系密度的现场技术的发展和评估。在新西兰马纳瓦图地区的对比土壤(异种和最近的河流土壤)的两个永久性牧场中,对该技术进行了评估。使用改良的土壤探针,可以从直径为80毫米的土壤芯的三个深度(15、30和60毫米)的水平表面上获得反射光谱(350-2500 nm),这两种土壤总共有108个样品。扫描后,在每个深度取3毫米的土壤切片用于根密度测量以及土壤碳(C)和氮(N)分析。两种土壤的根系密度范围从1.53到37.03 mg干根gp#土壤。河流土壤的平均根系密度(13.21 mg gp#)是同素异形土壤的平均根系密度(6.88 mg gp#)的两倍。使用一阶导数光谱的偏最小二乘回归(PLSR)和参考数据开发的校准模型能够使用留一法交叉验证程序来预测未知样品的根部密度。当将两种土壤类型的样品分开(而不是分组)以给出具有更相似属性的光谱数据的子群体(n = 54)时,根系密度预测更加准确。在同素异形土壤中,对根系密度的预测更好(rpo = 0.83,偏差与比率的预测值(RPD)= 2.44,交叉验证的均方根误差(RMSECV)= 1.96 mg gp#)比在土壤土壤中更好( rpo = 0.75,RPD = 1.98,RMSECV = 5.11 mg gp#)。结论是,可以根据从田间土壤芯获得的土壤反射光谱预测草根密度。通过从具有相似于验证集的光谱属性的田间数据源中选择校准数据,可以产生用于预测田间根部密度的改良PLSR模型。根密度和土壤碳含量可以独立预测,这在研究土壤有机质潜在变化速率的研究中可能特别有用。

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