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首页> 外文期刊>European Journal of Soil Science >Accounting for the effects of water and the environment on proximally sensed vis-NIR soil spectra and their calibrations
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Accounting for the effects of water and the environment on proximally sensed vis-NIR soil spectra and their calibrations

机译:考虑水和环境对近端可见近红外土壤光谱的影响及其校准

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Visible-near infrared (vis-NIR) spectroscopy can be used to estimate soil properties effectively using spectroscopic calibrations derived from data contained in spectroscopic databases. However, these calibrations cannot be used with proximally sensed (field) spectra because the spectra in these databases are recorded in the laboratory and are different to field spectra. Environmental factors, such as the amount of water in the soil, ambient light, temperature and the condition of the soil surface, cause the differences. Here, we investigated the use of direct standardization (DS) to remove those environmental factors from field spectra. We selected 104 sensing (sampling) sites from nine paddy fields in Zhejiang province, China. At each site, vis-NIR spectra were recorded with a portable spectrometer. The soils were also sampled to record their spectra under laboratory conditions and to measure their soil organic matter (SOM) content. The resulting data were divided into training and validation sets. A subset of the corresponding field and laboratory spectra in the training set (the transfer set) was used to derive the DS transfer matrix, which characterizes the differences between the field and laboratory spectra. Using DS, we transferred the field spectra of the validation samples so that they acquired the characteristics of spectra that were measured in the laboratory. A partial least squares regression (PLSR) of SOM on the laboratory spectra of the training set was then used to predict both the original field spectra and the DS-transferred field spectra. The assessment statistics of the predictions were improved from R-2=0.25 and RPD=0.35 to R-2=0.69 and RPD=1.61. We also performed independent predictions of SOM on the DS-transferred field spectra with a PLSR derived using the Chinese soil spectroscopic database (CSSD), which was developed in the laboratory. The R-2 and RPD values of these predictions were 0.70 and 1.79, respectively. Predictions of SOM with the DS-transferred field spectra were more accurate than those treated with external parameter orthogonalisation (EPO), and more accurate than predictions made by spiking. Our results show that DS can effectively account for the effects of water and environmental factors on field spectra and improve predictions of SOM. DS is conceptually straightforward and allows the use of calibrations made with laboratory-measured spectra to predict soil properties from proximally sensed (field) spectra, without needing to recalibrate the models.
机译:可见-近红外(vis-NIR)光谱学可用于使用光谱学校准有效地估算土壤性质,该光谱学校准源自光谱学数据库中包含的数据。但是,这些校准不能与近端感测(现场)光谱一起使用,因为这些数据库中的光谱是在实验室中记录的,并且与现场光谱不同。环境因素(例如土壤中的水量,环境光,温度和土壤表面状况)会导致差异。在这里,我们研究了使用直接标准化(DS)从现场光谱中去除那些环境因素的方法。我们从中国浙江省的9个稻田中选择了104个传感(采样)地点。在每个站点,用便携式光谱仪记录vis-NIR光谱。还对土壤取样,以在实验室条件下记录其光谱并测量其土壤有机质(SOM)含量。所得数据分为训练集和验证集。训练集(传输集)中相应的田野和实验室光谱的子集用于导出DS传递矩阵,该矩阵表征田野和实验室光谱之间的差异。使用DS,我们转移了验证样品的现场光谱,以便他们获得在实验室中测量的光谱特征。然后,使用训练集的实验室光谱上SOM的偏最小二乘回归(PLSR)来预测原始场光谱和DS转移场光谱。预测的评估统计量从R-2 = 0.25和RPD = 0.35改进到R-2 = 0.69和RPD = 1.61。我们还使用在实验室开发的中国土壤光谱数据库(CSSD)导出的PLSR对DS传输的现场光谱进行了SOM的独立预测。这些预测的R-2和RPD值分别为0.70和1.79。通过DS传输的场谱进行的SOM预测比通过外部参数正交化(EPO)处理的预测更准确,并且比通过尖峰进行的预测更准确。我们的结果表明,DS可以有效地解释水和环境因素对现场光谱的影响,并改善SOM的预测。 DS从概念上讲是简单明了的,它允许使用实验室测量的光谱进行校准,从而根据近端感应(现场)光谱预测土壤性质,而无需重新校准模型。

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