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Soil nitrogen content forecasting based on real-time NIR spectroscopy

机译:基于实时近红外光谱的土壤氮含量预测

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Fast and precisely estimating total nitrogen (TN) content in soil helps to promote carrying out prescription fertilization. And soil moisture is a severe interference factor in forecasting soil nitrogen content based on real-time NIR spectroscopy. This paper aims at predicting soil nitrogen content based on real-time soil spectrum through exploring pretreatment method without artificial drying and sieving soil samples. Firstly, the real-time near infrared absorbance spectra of soil samples were measured and their characteristics were analyzed. Then 1st-7th level wavelet decompositions were carried out for each soil sample's real-time spectrum. RSNR (Relative Signal-to-Noise Ratio) was constructed to evaluate wavelet filtering quality at different levels, and the results indicated that low-frequency signals obtained after the 3rd level wavelet decomposing had the best performance. And then 5 soil sample groups (each group had the same moisture content but different nitrogen contents) were selected and continuum-removal method was used for processing their filtering signals. And by using the methods combined wavelet analysis and continuum removal technology, six sensitive wavebands were determined for predicting the TN content in soil, which were 1375 nm, 1520 nm, 1861 nm, 2100 nm, 2286 nm and 2387 nm. Finally the real-time TN content detecting models were calibrated and validated based on PLSR (Partial Least Squares Regression) and SVM (Support Vectors Machine) respectively. For the PLSR model, its calibration R-2 was 0.602 and its RMSEC was 0.051 mg/Kg; the validation R-2 was 0.634, the RMSEP was 0.056 mg/Kg and its RPD = 1.838. For the SVM model, its calibration R-2 reached to 0.823, the RMSEC was 0.034 mg/Kg, the validation R-2 reached to 0.810, the RMSEP was 0.053 mg/Kg and its RPD was 2.129. It showed that, by using the proposed approach in this paper, the interference of soil moisture was mostly removed from soil real-time spectrum in the process of soil total nitrogen prediction, and the TN content regression models established by using the six sensitive wavebands had great performances in predicting soil TN content in real time. (c) 2016 Elsevier B.V. All rights reserved.
机译:快速准确地估计土壤中的总氮(TN)含量有助于促进处方施肥。土壤水分是基于实时近红外光谱法预测土壤氮含量的严重干扰因素。本文旨在通过探索无需人工干燥和筛分土壤样品的预处理方法,根据实时土壤光谱预测土壤氮含量。首先,测量了土壤样品的实时近红外吸收光谱,并对其特性进行了分析。然后对每个土壤样品的实时光谱进行1-7级小波分解。构造RSNR(相对信噪比)以评估不同级别的小波滤波质量,结果表明,第三级小波分解后获得的低频信号具有最佳性能。然后选择5个土壤样品组(每个组的水分含量相同,氮含量不同),并采用连续去除法处理其滤波信号。并采用小波分析和连续谱去除相结合的方法,确定了6个敏感波段来预测土壤中总氮含量,分别为1375 nm,1520 nm,1861 nm,2100 nm,2286 nm和2387 nm。最后,分别基于PLSR(偏最小二乘回归)和SVM(支持向量机)对实时TN内容检测模型进行了校准和验证。对于PLSR模型,其校准R-2为0.602,RMSEC为0.051 mg / Kg;验证的R-2为0.634,RMSEP为0.056 mg / Kg,RPD = 1.838。对于SVM模型,其校准R-2达到0.823,RMSEC为0.034 mg / Kg,验证R-2达到0.810,RMSEP为0.053 mg / Kg,RPD为2.129。结果表明,采用本文提出的方法,在土壤总氮预测过程中,土壤水分的干扰大部分从土壤实时光谱中消除,使用六个敏感波段建立的总氮含量回归模型具有在实时预测土壤总氮含量方面表现出色。 (c)2016 Elsevier B.V.保留所有权利。

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