Spectroscopy and Spectral Analysis, Volume. 40, Issue 11, 3499(2020)
Analyzing Errors due to Measurement Positions and Sampling Locations for In Situ Measurements of Soil Organic Matter Using Vis-NIR Spectroscopy
Fig. 2. Comparison of soil organic matter contents of two duplicate sets of samples
Fig. 3. Soil spectral curves of soil horizons with different organic matter contents
(a): Horizon with the lowest soil organic matter content; (b): Horizon with the organic matter content close to average value;(c): Horizon with the highasu soil organic matter content
Fig. 4. Soil organic matter content and the differences between soil spectra
(a): The angle between spectrum of each test point and spectrum of each sample; (b): The angle between spectrum of each sample and spectrum of each horizon
Fig. 5. Correlogram of soil organic matter content to spectral reflectance of each sample
Fig. 6. Modeling results of PLSR
(a): Validation: RMSEP (Cross-validated using 236 leave-one-out segments); (b): Training: % variance explained
Fig. 7. Statistics of the independent random validation in PLSR prediction model
The red dotted line represents the evaluation result of LOOCV
Fig. 8. Estimated soil organic matter content (black) by the spectrum of each test point (a) and sample (b), and their mean value (green), standard deviation (blue) against the measured. In (b), the estimated are compared with the measured soil organic matter contents, while the other values are compared with the average soil organic matter content of two samples in each horizon
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Hao-dan ZHANG, Xiao-lin SUN, Xiao-qing WANG, Hui-li WANG. Analyzing Errors due to Measurement Positions and Sampling Locations for In Situ Measurements of Soil Organic Matter Using Vis-NIR Spectroscopy[J]. Spectroscopy and Spectral Analysis, 2020, 40(11): 3499
Category: Research Articles
Received: Nov. 13, 2019
Accepted: --
Published Online: Jun. 18, 2021
The Author Email: Hao-dan ZHANG (zhanghd25@mail2.sysu.edu.cn)