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Determination of soybean routine quality parameters using near‐infrared spectroscopy

机译:使用近红外光谱法测定大豆常规质量参数

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摘要

Large differences in quality existed between soybean samples. In order to rapidly detect soybean quality between samples from different areas, we have developed near‐infrared spectroscopy (NIRS) models for the moisture, crude fat, and protein content of soybeans, based on 360 soybean samples collected from different areas. Compared with whole kernels, soybean powder with particle sizes of 60 mesh was more suitable for modeling of moisture, crude fat, and protein content. To increase the reproducibility of the prediction model, uniform particle sizes of soybeans were prepared by grinding and sieving soybeans with different sizes and colors. Modeling analysis showed that the internal cross‐validation correlation coefficients (R cv) for the moisture, crude fat, and protein content of soybeans were .965, .941, and .949, respectively, and the determination coefficients (R 2) were .966, .958, and .958. NIRS performed well as a rapid method for the determination of routine quality parameters and provided reference data for the analysis of soybean quality using FT‐NIRS.
机译:大豆样品之间存在很大的质量差异。为了快速检测来自不同区域的样品之间的大豆质量,我们基于从不同区域收集的360个大豆样品,开发了针对大豆的水分,粗脂肪和蛋白质含量的近红外光谱(NIRS)模型。与全粒相比,粒径为60目的大豆粉更适合用于水分,粗脂肪和蛋白质含量的建模。为了提高预测模型的可重复性,通过对具有不同尺寸和颜色的大豆进行研磨和筛分来制备均一的大豆粒径。建模分析表明,大豆的水分,粗脂肪和蛋白质含量的内部交叉验证相关系数(R cv)分别为.965,.941和.949,测定系数(R 2 )分别是.966,.958和.958。 NIRS作为确定常规质量参数的快速方法表现良好,并为使用FT-NIRS分析大豆质量提供了参考数据。

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