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									| 光谱学与光谱分析 |  |  |   |  |  
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    					| Real-Time Analysis of Soil Moisture, Soil Organic Matter, and Soil Total Nitrogen with NIR Spectra |  
						| SUN Jian-ying1,LI Min-zan1*,ZHENG Li-hua1,HU Yong-guang1, 2,ZHANG Xi-jie1 |  
						| 1. Key Laboratory of MOE on Modern Precision Agriculture System Integration Research, China Agricultural University, Beijing 100083, China 2. School of Mechanical Engineering, Jiangsu University, Zhenjiang 212013, China
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													    | Abstract  The grey-brown alluvial soil in northern china was selected as research object, and the feasibility and possibility of real-time analyzing soil parameter with NIR spectroscopic techniques were explored. One hundred fifty samples were collected from a winter wheat farm. NIR absorbance spectra were rapidly measured under their original conditions by a Nicolet Antaris FT-NIR analyzer. Three soil parameters, namely soil moisture, SOM (soil organic mater) and TN (total nitrogen) content, were analyzed. For soil moisture content, a linear regression model was available, using 1 920 nm wavelength with correlation coefficient of 0.937, so that the results obtained could be directly used to real-time evaluate soil moisture. SOM content and TN content were estimated with a multiple linear regression model, 1 870 and 1 378 nm wavelengths were selected in the SOM estimate model, and 2 262 and 1 888 nm wavelengths were selected in the TN estimate model. The results showed that soil SOM and TN contents can be evaluated by using NIR absorbance spectra of soil samples. |  
															| Received: 2005-03-03    
						    						    							Accepted: 2005-06-17 |  
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															| Corresponding Authors:
																LI Min-zan |  |  
														
															| Cite this article: |  
															| SUN Jian-ying,LI Min-zan,ZHENG Li-hua, et al. Real-Time Analysis of Soil Moisture, Soil Organic Matter, and Soil Total Nitrogen with NIR Spectra [J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2006, 26(03): 426-429. |  |  |  
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															| URL: |  
															| https://www.gpxygpfx.com/EN/Y2006/V26/I03/426 |  
													
														  
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