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Development of Wheat Component Detector Based on Near Infrared Spectrum

Li-yu Mao, Bin, Hong-ming Zhang, Lu Bo, Xue-yu Gong,Xiang-hui Yin,Yong-cai Shen,Fu Jia, Fu-di Wang,Hu Kui, Sun Bo, Fan Yu, Zeng Chao,Hua-jian Ji,Zi-chao Lin

SPECTROSCOPY AND SPECTRAL ANALYSIS(2024)

Univ South China | Chinese Acad Sci | Hefei Normal Univ | Anhui Univ

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Abstract
Currently, the traditional measuring methods of grain quality are mainly the traditional separation and manual inspection, which take a long time and have low efficiency. Near Infrared (NIR, 780 similar to 2500 nm) spectral analysis technology has the advantages of a wide range of applicable samples, high accuracy of quantitative measurement, high measurement efficiency, and non-destructive testing, which is widely used in agriculture online or rapid measurement. Currently, the existing NIR instruments measuring grain quality are expensive, which prevents a wider application of this kind of device. Moreover, the predicting model is limited in applicability due to the differences ingrains in different seasons and regions. To solve these problems. in this study. new type of NIR spectrometer system is developed to measure wheat quality. The system uses a control system developed with Python, By setting and modifying the acquisition parameters, the three steering gears and weight sensors are integrated to control the spectra data acquisition. The spectral data are preprocessed and substituted into the model to calculate the quality parameters of the target wheat samples. The principal component analysis (PCA) method removes the outlier's spectral data. Then, the selected spectral data are preprocessed by recursive mean filtering and standard normal transformation (SNV), Finally, the optimized model is obtained with the partial least squares regression (PLS) method after competitive adaptive reweighting sampling (CARS) wavelength selection. The prediction model is currently developed for moisture, wet gluten, and whiteness of wheat. The results show that this model can effectively reduce the error caused by stray light, sample uniformity, and other effective factors. The developed NIR spectrometer system can satisfy the requirements of grain acquisition and storage.
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Near infrared spectroscopy,Wheat quality,PLS,Python
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要点】:本研究开发了一种基于近红外光谱的小麦成分检测系统,提高了测量效率并降低了成本,适用于不同季节和地区的小麦质量检测。

方法】:通过Python开发的控制系统,整合三向舵轮和重量传感器,对光谱数据进行采集,并使用主成分分析(PCA)、递归均值滤波和标准正态变换(SNV)对数据进行预处理,再通过竞争性自适应重采样(CARS)波长选择和偏最小二乘回归(PLS)方法建立优化模型。

实验】:实验使用新开发的NIR光谱仪系统对小麦样品进行检测,数据集名称未提及,结果显示模型能有效降低杂散光、样品均匀性等因素引起的误差,满足粮食收购和储存的要求。