Department of Agricultural and Biological Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.
Department of Agricultural and Biological Engineering, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA.
Food Chem. 2022 Jul 30;383:132442. doi: 10.1016/j.foodchem.2022.132442. Epub 2022 Feb 12.
Many studies have been conducted using NIR spectroscopy to predict corn constituents; however, a systematic investigation of the spectral sub-regions under the scope of overtones and combinations has not been performed. In this study, the corn spectra were divided into second overtones (1100-1388 nm), first overtones (1390-1852 nm), and combinations (1852-2498 nm). Then, using variable importance in projection and genetic algorithm, each region was inspected sequentially to identify the most informative sub-region for each attribute to improve interpretability. The identified spectral subsets were further tuned to select the most influential bands for each attribute. The sub-regions in combinations bands was most informative for predicting water (1908-2108 nm, 2 bands), oil (2176-2304 nm, 6 bands), and protein (2130-2190 nm, 3 bands), whereas the first overtones region was the best for predicting starch (1452-1770 nm, 5 bands). Results provided valuable information for potential hardware and software improvements.
许多研究都采用近红外光谱法来预测玉米成分;然而,对于泛音和组合范围内的光谱子区域,尚未进行系统的研究。在本研究中,玉米光谱被分为二次泛音区(1100-1388nm)、一次泛音区(1390-1852nm)和组合区(1852-2498nm)。然后,使用投影变量重要性和遗传算法,依次检查每个区域,以确定每个属性的最具信息量的子区域,从而提高可解释性。进一步调整识别出的光谱子集,以选择每个属性的最具影响力的波段。组合波段的子区域对于预测水分(1908-2108nm,2 个波段)、油分(2176-2304nm,6 个波段)和蛋白质(2130-2190nm,3 个波段)最具信息量,而一次泛音区对于预测淀粉(1452-1770nm,5 个波段)最佳。结果为潜在的硬件和软件改进提供了有价值的信息。