Peng Shuyan, Wei Shengkun, Zhang Guoyong, Xiong Xingliang, Ai Ming, Li Xiuhua, Shen Yin
College of Medical Information, Chongqing Medical University, Chongqing 400016, China.
Luzhou Vocational and Technical College, Sichuan, Luzhou 646000, China.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Mar 5;328:125452. doi: 10.1016/j.saa.2024.125452. Epub 2024 Nov 17.
Wheat is an important food crop in the world, and wheat gluten quality is one of the important standards for judging the use of wheat. In this study, a combination of chemometric and machine learning methods based on THz-TDS were used to identify three different gluten wheats (high gluten, medium gluten, and low gluten). After collecting the time-domain spectral information of the samples, the frequency-domain spectra, refractive index spectra and absorption coefficient spectra of the samples were obtained by calculating the optical parameters. The experimental results showed that there were differences in the refractive indices and absorption coefficients of wheat with different gluten levels. More importantly the differences in refractive index spectra were more significant. The Competitive Adaptive Reweighted Sampling (CARS) method was applied to select characteristic frequencies from the refractive index spectra within the frequency range of 0.1 to 1.5 THz, to establish a discrimination model for wheat gluten strength. We analysed and compared four discriminative models of Support Vector Machines (SVM), Back Propagation Neural Networks (BPNN), Improved Convolutional Neural Networks (Improved CNN) and Sparrow Algorithm Optimised Support Vector Machines (SSA-SVM). The final results indicated that the SSA-SVM model demonstrated the optimal discrimination performance, achieving an accuracy rate of 100% as reflected in the confusion matrix. In summary, this study provides an efficient, accurate, and non-destructive discrimination method for wheat gluten strength, offering a theoretical basis for differentiating wheat with varying gluten strengths in production processes. It holds practical significance for industrial production reference.
小麦是世界上重要的粮食作物,小麦面筋质量是评判小麦用途的重要标准之一。在本研究中,基于太赫兹时域光谱(THz-TDS)的化学计量学和机器学习方法相结合,用于鉴别三种不同面筋含量的小麦(高筋、中筋和低筋)。采集样品的时域光谱信息后,通过计算光学参数得到样品的频域光谱、折射率光谱和吸收系数光谱。实验结果表明,不同面筋含量的小麦在折射率和吸收系数上存在差异。更重要的是,折射率光谱的差异更为显著。应用竞争性自适应重加权采样(CARS)方法从0.1至1.5太赫兹频率范围内的折射率光谱中选择特征频率,建立小麦面筋强度判别模型。分析并比较了支持向量机(SVM)、反向传播神经网络(BPNN)、改进卷积神经网络(改进CNN)和麻雀算法优化支持向量机(SSA-SVM)四种判别模型。最终结果表明,SSA-SVM模型表现出最优的判别性能,如混淆矩阵所示准确率达到100%。综上所述,本研究为小麦面筋强度提供了一种高效、准确且无损的判别方法,为生产过程中区分不同面筋强度的小麦提供了理论依据,对工业生产具有实际参考意义。