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

Literature Information

Publication Date 2019-08-08
DOI 10.1039/C9AY01155B
Impact Factor 2.896
Authors

Lu-Jun Zhang, Xiao-Dong Huang, Yan Wang, Chun-Yan Wang, Yong-Zhi Sun


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Abstract

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.

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Analytical Methods

Analytical Methods
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Analytical Methods welcomes early applications of new analytical and bioanalytical methods and technology demonstrating the potential for societal impact. We require that methods and technology reported in the journal are sufficiently innovative, robust, accurate, and compared to other available methods for the intended application. Developments with interdisciplinary approaches are particularly welcome. Systems should be proven with suitably complex and analytically challenging samples. We encourage developments within, but not limited to, the following technologies and applications: global health, point-of-care and molecular diagnostics biosensors and bioengineering drug development and pharmaceutical analysis applied microfluidics and nanotechnology omics studies, such as proteomics, metabolomics or glycomics environmental, agricultural and food science neuroscience biochemical and clinical analysis forensic analysis industrial process and method development

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