Quantitative model of near infrared spectroscopy based on pretreatment combined with parallel convolution neural network

IF 3.1 3区 物理与天体物理 Q2 INSTRUMENTS & INSTRUMENTATION
Shui Yu , Kewei Huan , Xiaoxi Liu , Lei Wang , Xianwen Cao
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引用次数: 2

Abstract

With the advancement of near infrared spectroscopy and deep learning technology, nondestructive quantitative testing plays a crucial role in various fields such as agriculture, petrochemicals, medicine, food, and forage. Currently, a high precision prediction model combined with spectral pretreatment is gaining popularity. In this paper, a quantitative analysis model of convolutional neural network including parallel network module (PaBATunNet) was proposed. PaBATunNet was composed of a one-dimensional convolutional layer, a parallel convolution module, a flattening layer, four fully connected layers and a parameter regulator (PR). The parallel convolution module was made up of five submodules and a Concatenate function. The linear and nonlinear multidimensional features of the spectra were extracted by five submodules and spliced by Concatenate function. The prediction accuracy of PaBATunNet was improved by optimizing the model parameters through the PR. Moreover, eight spectral pretreatment methods combined with PaBATunNet were tested on public datasets of beer, milk, and grain. The results indicated that the prediction accuracy of PaBATunNet with different spectral pretreatment increased by 4.83% to 28.40% on beer, 7.09% to 27.99% on milk and 4.96% to 25.31% on grain, compared to the PaBATunNet with original spectral. Among all models, the first derivative (D1) PaBATunNet (D1-PaBATunNet) performed the best. Compared with D1 partial least squares (D1-PLS), the prediction accuracy of D1-PaBATunNet increased by 34.89%, 65.04%, and 48.26% on beer, milk, and grain, respectively. Compared with D1 principal component regression (D1-PCR), the prediction accuracy increased by 34.17%, 63.98%, and 48.08% on beer, milk, and grain, respectively. Compared with D1 support vector machine (D1-SVM), the prediction accuracy increased by 39.29%, 61.78%, and 50.50% on beer, milk, and grain, respectively. Compared with D1 back propagation neural network (D1-BP), the prediction accuracy increased by 90.29%, 63.72%, and 44.75% on beer, milk, and grain, respectively. The problems of low prediction accuracy, poor stability, poor generalization ability and high risk of overfitting have been solved by D1-PaBATunNet. This study establishes an essential theoretical foundation for building a fast, nondestructive and high-precision quantitative analysis model of near infrared spectroscopy.

基于预处理与并行卷积神经网络的近红外光谱定量模型
随着近红外光谱和深度学习技术的进步,无损定量检测在农业、石化、医药、食品和饲料等各个领域发挥着至关重要的作用。目前,一种结合光谱预处理的高精度预测模型越来越流行。本文提出了一个包含并行网络模块的卷积神经网络定量分析模型(PaBATunNet)。PaBATunNet由一个一维卷积层、一个并行卷积模块、一个平坦层、四个全连接层和一个参数调节器(PR)组成。并行卷积模块由五个子模块和一个级联函数组成。通过五个子模块提取光谱的线性和非线性多维特征,并通过级联函数进行拼接。通过PR优化模型参数,提高了PaBATunNet的预测精度。此外,在啤酒、牛奶和谷物的公共数据集上测试了八种与PaBATunNet相结合的光谱预处理方法。结果表明,与原始光谱的PaBATunNet相比,不同光谱预处理的PaBATunNet在啤酒、牛奶和谷物上的预测准确率分别提高了4.83%至28.40%、7.09%至27.99%和4.96%至25.31%。在所有模型中,一阶导数(D1)PaBATunNet(D1 PaBATunNet)表现最好。与D1偏最小二乘法(D1-PLS)相比,D1 PaBATunNet对啤酒、牛奶和谷物的预测准确率分别提高了34.89%、65.04%和48.26%。与D1主成分回归(D1-PCR)相比,啤酒、牛奶和谷物的预测准确率分别提高了34.17%、63.98%和48.08%。与D1支持向量机(D1-SVM)相比,啤酒、牛奶和谷物的预测准确率分别提高了39.29%、61.78%和50.50%。与D1反向传播神经网络(D1-BP)相比,啤酒、牛奶和谷物的预测准确率分别提高了90.29%、63.72%和44.75%。D1 PaBATunNet解决了预测精度低、稳定性差、泛化能力差、过拟合风险高的问题。本研究为建立快速、无损、高精度的近红外光谱定量分析模型奠定了重要的理论基础。
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来源期刊
CiteScore
5.70
自引率
12.10%
发文量
400
审稿时长
67 days
期刊介绍: The Journal covers the entire field of infrared physics and technology: theory, experiment, application, devices and instrumentation. Infrared'' is defined as covering the near, mid and far infrared (terahertz) regions from 0.75um (750nm) to 1mm (300GHz.) Submissions in the 300GHz to 100GHz region may be accepted at the editors discretion if their content is relevant to shorter wavelengths. Submissions must be primarily concerned with and directly relevant to this spectral region. Its core topics can be summarized as the generation, propagation and detection, of infrared radiation; the associated optics, materials and devices; and its use in all fields of science, industry, engineering and medicine. Infrared techniques occur in many different fields, notably spectroscopy and interferometry; material characterization and processing; atmospheric physics, astronomy and space research. Scientific aspects include lasers, quantum optics, quantum electronics, image processing and semiconductor physics. Some important applications are medical diagnostics and treatment, industrial inspection and environmental monitoring.
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