Classification of Hazardous Chemicals with Raman Spectrum by Convolution Neural Network

Liangrui Pan, Pronthep Pipitsunthonsan, M. Chongcheawchamnan
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引用次数: 2

Abstract

Dangerous chemicals have always been the hidden danger of social security, how to accurately identify chemicals is very important. In this experiment, the Raman scattering instrument will provide us with the Raman spectrum signal of about 190 chemical substances, each of which has its own characteristics. However, the traditional methods of identifying and classifying chemicals are not only inefficient, but also lack of security. This study proved the feasibility of using neural network to classify chemical substances. For one-dimensional signal, the experiment mainly uses the semi-supervised learning method to establish the 1D-DCNN model and simulate the real noise environment. One-dimensional signal is used as input and then the model is trained to get the model. The experimental results show that the accuracy of toxic and toxic, flammable, corrosive, environment hazard, health hazard, safe, expansive, harmful classification is 99% ± 1%. This shows that the 1D-DCNN model has strong anti-interference and robustness for signals in noise environments. This rapid classification method will provide reference value for the identification of chemical substances.
基于卷积神经网络的危险化学品拉曼光谱分类
危险化学品一直是社会安全隐患,如何准确识别化学品非常重要。在本次实验中,拉曼散射仪将为我们提供大约190种化学物质的拉曼光谱信号,每种化学物质都有自己的特点。然而,传统的化学品识别和分类方法不仅效率低下,而且缺乏安全性。本研究证明了利用神经网络对化学物质进行分类的可行性。对于一维信号,实验主要采用半监督学习方法建立1D-DCNN模型,模拟真实噪声环境。采用一维信号作为输入,对模型进行训练得到模型。实验结果表明,对有毒、有毒、易燃、腐蚀性、环境危害、健康危害、安全、膨胀、有害分类的准确度为99%±1%。这表明1D-DCNN模型对噪声环境下的信号具有较强的抗干扰性和鲁棒性。这种快速分类方法将为化学物质的鉴别提供参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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