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IMPROVING PHOSPHORUS SENSING BY ELIMINATING SOIL PARTICLE SIZE EFFECT IN SPECTRAL MEASUREMENT

机译:通过消除光谱测量中的土壤颗粒尺寸效应来改善磷的感测

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This study investigated the effects of soil particle size on the reflectance spectra of sandy soils using ultraviolet, visible, and near-infrared spectroscopy in sensing phosphorus (P) concentration. Pure sandy soil was graded into three particle sizes. Sieve sizes were 125, 250, and 600 µ m for fine, medium, and coarse, respectively. Phosphorus application rates for the soil samples were 0.0, 12.5, 62.5, 175.0, 375.0, 750.0, and 1000.0 mg kg -1 . Concentrations of P in the soil samples were analyzed. The reflectance of the samples was measured between 225 and 2525 nm at 1 nm intervals. Overall, soils with coarse particles absorbed light more than those with medium and fine particles. Detection analysis for soil particle sizes was conducted using ratio and discriminant analysis methods. Prediction analyses for P concentration were performed using multiple linear regression (MLR; stepwise and maximum R 2 methods) and linear partial least squares (PLS). Results showed that detection of the particle size in a spectrum and then the prediction of P using individual calibration models for each soil particle size produced lower prediction errors. For the maximum R 2 MLR, stepwise MLR, and linear PLS analyses, respectively, the standard errors of prediction (SEPs) for determining P concentration without removing the particle size effect were 105.8, 106.2, and 69.8 mg kg -1 and after removing the particle size effect were 52.8, 73.4, and 64.4 mg kg -1
机译:这项研究使用紫外线,可见光和近红外光谱法检测磷(P)的浓度,研究了土壤粒径对沙质土壤反射光谱的影响。将纯砂质土壤分为三种粒径。细,中和粗筛的尺寸分别为125、250和600 µm。土壤样品的磷施用量为0.0、12.5、62.5、175.0、375.0、750.0和1000.0 mg kg -1 。分析了土壤样品中的磷含量。在225至2525 nm之间以1 nm的间隔测量样品的反射率。总体而言,具有粗颗粒的土壤比具有中细颗粒的土壤吸收的光更多。使用比率和判别分析方法进行土壤粒径的检测分析。使用多重线性回归(MLR;逐步和最大R 2 方法)和线性偏最小二乘(PLS)进行P浓度的预测分析。结果表明,检测光谱中的粒径,然后使用每种土壤粒径的单独校准模型预测P会产生较低的预测误差。对于最大的R 2 MLR,逐步MLR和线性PLS分析,在不去除粒径影响的情况下确定P浓度的预测标准误差(SEP)为105.8、106.2和69.8 mg kg -1 和除去粒径后的效果分别为52.8、73.4和64.4 mg kg kg -1

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