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Discussion on dual-tree complex wavelet transform and generalized regression neural network based concentration-resolved fluorescence spectroscopy for oil identification

机译:浅谈双树复合小波变换与广义回归神经网络的浓度分辨荧光光谱法

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摘要

There has been a growing concern in recent years about the increasing occurrence of oil spills into the environment and the proven toxic potential of these pollutants on human health and wildlife. Precisely and rapidly determining the sources of spilled oils can provide scientific evidence for the investigation and handling of spilled oil accidents. As traditional fluorescence spectroscopy detects in the linear concentration range, a concentration-resolved fluorescence spectroscopy (CRFS) is proposed in this paper, which introduces concentration as a new dimension. A data processing strategy combining multiple algorithms was applied to the CRFS for oil spill identification. Dual-tree complex wavelet transform (DTCWT) is used to extract multi-scale and multi-directional features of CRFS to ensure the accuracy of identification, while principal component analysis (PCA) is used to reduce the dimensions of the feature spectrum for the purpose of improving the identification speed. Three kinds of artificial neural networks (back propagation neural network (BP), probabilistic neural network (PNN), and generalized regression neural network (GRNN)), which are used as powerful classifiers for oil identification, were compared based on the spectral data processed by DTCWT and PCA. With 100% accuracy, GRNN was proved to be more suitable for oil classification and identification, especially for small sample sizes. The combination of the CRFS technique and this data processing strategy was revealed as a powerful methodology to differentiate a challenging sample set involving diesel (diesel 2002), fuel (heavy fuel 4#) and crude oils (Xia, Shang, Zhengqi), offering potential applications for use in real-time and economic oil fingerprint identification.
机译:近年来关于越来越多的石油泄漏进入环境以及这些污染物对人类健康和野生动物的毒性潜力而越来越令人担忧。精确快速地确定溢油的来源可以为溢出的石油事故进行调查和处理提供科学证据。随着传统荧光光谱检测在线性浓度范围,本文提出了浓度分辨的荧光光谱(CRF),其将浓度引入新的尺寸。将多种算法组合的数据处理策略应用于用于漏油识别的CRF。双树复杂小波变换(DTCWT)用于提取CRF的多尺度和多向特征,以确保识别的准确性,而主要成分分析(PCA)用于减少特征频谱的尺寸以实现该目的提高识别速度。基于处理的光谱数据,比较了三种人工神经网络(后传播神经网络(BP),概率性神经网络(PNN)和广义回归神经网络(GRNN)),其用作油识别的强大分类器通过DTCWT和PCA。精度100%,被证明GRNN更适合于油分类和鉴定,特别是对于小型样本尺寸。 CRFS技术的组合和这种数据处理策略被揭示为涉及柴油(柴油2002),燃料(重型燃料4#)和原油(夏,尚,正时),提供潜力的具有挑战性的样本集应用用于实时和经济用油指纹识别。

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  • 来源
    《Analytical methods 》 |2019年第36期| 共9页
  • 作者单位

    Weifang Univ Dept Phys &

    Optoelect Engn Weifang 261061 Shandong Peoples R China;

    Weifang Univ Dept Phys &

    Optoelect Engn Weifang 261061 Shandong Peoples R China;

    Weifang Univ Dept Phys &

    Optoelect Engn Weifang 261061 Shandong Peoples R China;

    Weifang Univ Dept Phys &

    Optoelect Engn Weifang 261061 Shandong Peoples R China;

    Weifang Univ Inst New Electromagnet Mat Weifang 261061 Shandong Peoples R China;

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  • 正文语种 eng
  • 中图分类 分析化学 ;
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