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Publication no. C-2003-0415-07R
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ARTICLE
Hardness Measurement of Bulk
Wheat by Single-Kernel Visible and Near-Infrared Reflectance Spectroscopy.
Elizabeth B. Maghirang (1) and Floyd E. Dowell (1,2). (1) Engineering
Research Unit, Grain Marketing and Production Research Center, ARS-USDA, 1515
College Avenue, Manhattan, KS 66502. (2) Corresponding author. Phone:
785-776-2753. Fax: 785-776-2792. E-mail: <fdowell@gmprc.ksu.edu> Cereal Chem.
80(3):316-322. Accepted January 3, 2003. This article is in the public domain
and not copyrightable. It may be freely reprinted with customary crediting of
the source. American Association of Cereal Chemists, Inc., 2003.
Reflectance spectra (400 to 1700 nm) of single wheat kernels collected using the
Single Kernel Characterization System (SKCS) 4170 were analyzed for wheat grain
hardness using partial least squares (PLS) regression. The wavelengths (650 to
700, 1100, 1200, 1380, 1450, and 1670 nm) that contributed most to the ability
of the model to predict hardness were related to protein, starch, and color
differences. Slightly better prediction results were observed when the 550-1690
nm region was used compared with 950-1690 nm region across all sample sizes. For
the 30-kernel mass-averaged model, the hardness prediction for 550-1690 nm
spectra resulted in a coefficient of determination (R(^2)) = 0.91, standard
error of cross validation (SECV) = 7.70, and relative predictive determinant
(RPD) = 3.3, while the 950-1690 nm had R(^2) = 0.88, SECV = 8.67, and RPD =
2.9. Average hardness of hard and soft wheat validation samples based on
mass-averaged spectra of 30 kernels was predicted and compared with the SKCS
4100 reference method (R(^2) = 0.88). Compared with the reference SKCS
hardness classification, the 30-kernel (550-1690 nm) prediction model correctly
differentiated (97%) between hard and soft wheat. Monte Carlo simulation
technique coupled with the SKCS 4100 hardness classification logic was used for
classifying mixed wheat samples. Compared with the reference, the prediction
model correctly classified mixed samples with 72-100% accuracy. Results
confirmed the potential of using visible and near-infrared reflectance
spectroscopy of whole single kernels of wheat as a rapid and nondestructive
measurement of bulk wheat grain hardness.
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