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Nitrate (NO_3~-) Prediction in Soil Analysis using Near-infrared (NIR) Spectroscopy

机译:近红外(NIR)光谱法测定土壤分析中的硝酸盐(NO_3〜 - )预测

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Nutrient composition in soil analysis is investigated by using nitrogen (N) in form of nitrate (NO_3~-) as a representative factor correlated with NIR spectroscopy spectral absorbance. NIR spectroscopy method of sampling has been tested to overcome time consuming, complex chemical analysis procedure and invasive sampling method in order to identify nitrate content in soil samples. Spectral absorbance data from range 950 nm to 1650 nm correlated with nitrate reading then tested through few pre-processing techniques. Five techniques have been listed as top performer, which are Multiplicative Scatter Correction using Common Offset (MSCCO), Multiplicative Scatter Correction (MSC), Range Normalization (RN), Mean Normalization (MN) and Reduced (R) technique. Data calibration and prediction of both data is evaluated using Partial Least Square Regression (PLSR) model. In the final analysis, R technique has achieved as top performer pre-processing technique for both calibration and prediction results, with the coefficient of determination (R~2) values of 0.9991 and root mean square error (RMSE) values of 0.0886 for prediction. Overall, the correlation of NIRS absorbance data and nitrate can be obtained using PLSR model with R pre-processing technique. Henceforth, we can conclude that the NIRS method of sampling can be used to identify nitrate content in soil analysis by using time saving, non-invasive and less laborious method of sampling.
机译:通过使用硝酸盐(NO_3〜 - )形式的氮气(n)作为与NIR光谱光谱吸光度相关的代表性因子来研究土壤分析中的营养成分。已经测试了抽样的NIR光谱法,以克服耗时,复杂的化学分析程序和侵入性取样方法,以鉴定土壤样品中的硝酸盐含量。从范围950nm至1650nm的光谱吸光度数据与硝酸盐读数相关,然后通过少数预处理技术进行测试。已经列为顶部执行器的五种技术,其是使用公共偏移(MSCCO),乘法散射校正(MSC),范围归一化(RN),均衡(MN)和减少(R)技术的乘法散射校正。使用部分最小二乘回归(PLSR)模型来评估两个数据的数据校准和预测。在最终分析中,R技术已经实现为校准和预测结果的顶部表演者预处理技术,其中确定系数(R〜2)值为0.9991和0.0886的根均线误差(RMSE)值为预测。总的来说,可以使用具有R预处理技术的PLSR模型获得NIR吸光度数据和硝酸盐的相关性。从此,我们可以得出结论,通过使用时间储蓄,非侵入性和更少的采样方法,可以使用采样方法来鉴定土壤分析中的硝酸盐含量。

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