光谱学与光谱分析 |
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Effects of the Accuracy of Reference Data on NIR Prediction Results |
CHU Xiao-li,YUAN Hong-fu,LU Wan-zhen |
Research Institute of Petroleum Processing,Beijing 100083, China |
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Abstract Reference data are indispensable to build near-infrared spectroscopy (NIR)calibration models. In the present paper, the effects of the accuracy of reference data on NIR calibration models and its prediction results were studied through two routine applications based on partial least square regression methods. The results indicate that the best NIR calibration statistics and the most accurate prediction results were aligned with the most accurate reference data. However, based on statistical analysis of numerous calibration samples, it is possible for NIR calibration models to obtain more accurate prediction results than the laboratory reference data used in the calibration sets. It is better to make less search for high accurate reference data and instead to introduce more calibration samples to improve the ruggedness of the calibration models.
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Received: 2004-01-10
Accepted: 2004-04-25
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Corresponding Authors:
CHU Xiao-li
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Cite this article: |
CHU Xiao-li,YUAN Hong-fu,LU Wan-zhen. Effects of the Accuracy of Reference Data on NIR Prediction Results [J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2005, 25(06): 886-889.
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URL: |
https://www.gpxygpfx.com/EN/Y2005/V25/I06/886 |
[1] Gabor John Kemeny. Handbook of Near-Infrared Analysis. New York:Marcel Dekker Inc.,2001. [2] XU Guang-tong,YUAN Hong-fu,LU Wan-zhen(徐广通,袁洪福,陆婉珍). Spectroscopy and Spectral Analysis(光谱学与光谱分析),2000,20(2):134. [3] HUANG Lan,DING Hai-shu,WANG Guang-zhi(黄 岚,丁海曙,王广志). Spectroscopy and Spectral Analysis(光谱学与光谱分析),2002,22(3):387. [4] Kennard R W,Stone L A. Technometrics,1969,11(3):137. |
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