Deep or Shallow? A Comparative Analysis on the Oil Species Identification Based on Excitation-Emission Matrix and Multiple Machine Learning Algorithms

被引:5
|
作者
Xie, Ming [1 ]
Xu, Qintuan [1 ]
Li, Ying [1 ]
机构
[1] Dalian Maritime Univ, Nav Coll, Dalian, Peoples R China
关键词
Fluorescence spectroscopy; Excitation-emission matrix; Ultraviolet-induced fluorescence; Oil spill; Machine learning; Deep learning; LASER-INDUCED FLUORESCENCE; IN-SITU ANALYSIS; DIFFUSE-REFLECTANCE; RANDOM FOREST; SPECTROSCOPY; SPILL; DIFFERENTIATION; SPECTRA;
D O I
10.1007/s10895-023-03511-w
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
With the continuous expansion of petroleum extraction, transportation, and storage, the risk of oil spills at sea has also increased, posing a serious threat to marine safety. The excitation-emission matrix (EEM), which is composed of the fluorometric spectra under multiple excitation wavelengths, becomes a feasible approach to identify oil species. Despite the fact that various machine learning models have been applied to analyse EEMs of oil pollutants, it is unclear how much improvements the deep learning models have achieved, especially comparing with the shallow learning models. This paper presents a comparative analysis on the oil species identification using four types of machine learning models: random forest (RF), support vector machine (SVM), back propagation neural network (BPNN), and deep convolutional neural network (DCNN). The fluorescence of some common oils was excited using a tuneable xenon lamp and collected with a high-resolution spectrometer to form the EEMs for model training and testing.The results show that SVM, BPNN, and DCNN achieved high identification accuracies that are more than 93% on all types of oils tested in the study. The two deep learning models didn't have significant improvement over the SVM model. Considering the fact that the deep learning models require much larger number of calculations and longer running time, the SVM tends to be more suitable for oil species identification when considering the balance between the model accuracy and efficiency. This study provides some guidance on the choices of oil species identification model in the cases of oil spills.
引用
收藏
页码:2907 / 2915
页数:9
相关论文
共 50 条
  • [1] Oil species identification based on fluorescence excitation-emission matrix and transformer-based deep learning
    Xie, Ming
    Xie, Lei
    Li, Ying
    Han, Bing
    SPECTROCHIMICA ACTA PART A-MOLECULAR AND BIOMOLECULAR SPECTROSCOPY, 2023, 302
  • [2] Oil Species Identification Based on the Fluorescence Spectroscopic Analysis Using the Excitation-Emission Matrix and Transfer Learning
    Xu, Qintuan
    Li, Ying
    Xie, Ming
    WATER AIR AND SOIL POLLUTION, 2024, 235 (10):
  • [3] Identification of Camellia Oil Adulteration With Excitation-Emission Matrix Fluorescence Spectra and Deep Learning
    Wei, Chaojie
    Wang, Wei
    Jiao, Yanna
    Yoon, Seung-Chul
    Ni, Xinzhi
    Wang, Xiaorong
    Song, Ziwei
    JOURNAL OF FLUORESCENCE, 2025,
  • [4] Research of Identification Method for the Oil Spills Species Based on Fluorescence Excitation-Emission Matrix and Parallel Factor Analysis
    Zhou Yan-lei
    Zhou Fei-fei
    Jiang Cong-cong
    Shi Xiao-yong
    Su Rong-guo
    SPECTROSCOPY AND SPECTRAL ANALYSIS, 2018, 38 (02) : 475 - 480
  • [5] Intelligent analysis of excitation-emission matrix fluorescence fingerprint to identify and quantify adulteration in camellia oil based on machine learning
    Chen, An-Qi
    Wu, Hai -Long
    Wang, Tong
    Wang, Xiao-Zhi
    Sun, Hai-Bo
    Yu, Ru-Qin
    TALANTA, 2023, 251
  • [6] Oil pollutant identification based on excitation-emission matrix of UV-induced fluorescence and deep convolutional neural network
    Ying Li
    Yunpeng Jia
    Xiaohua Cai
    Ming Xie
    Zhenduo Zhang
    Environmental Science and Pollution Research, 2022, 29 : 68152 - 68160
  • [7] Oil pollutant identification based on excitation-emission matrix of UV-induced fluorescence and deep convolutional neural network
    Li, Ying
    Jia, Yunpeng
    Cai, Xiaohua
    Xie, Ming
    Zhang, Zhenduo
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2022, 29 (45) : 68152 - 68160
  • [8] Identification of species and sources of atmospheric chromophores by fluorescence excitation-emission matrix with parallel factor analysis
    Chen, Qingcai
    Li, Jinwen
    Hua, Xiaoyu
    Jiang, Xiaotong
    Mu, Zhen
    Wang, Mamin
    Wang, Jin
    Shan, Ming
    Yang, Xudong
    Fan, Xingjun
    Song, Jianzhong
    Wang, Yuqin
    Guan, Dongjie
    Du, Lin
    SCIENCE OF THE TOTAL ENVIRONMENT, 2020, 718
  • [9] Fast identification of fluorescent components in three-dimensional excitation-emission matrix fluorescence spectra via deep learning
    Xu, Run-Ze
    Cao, Jia-Shun
    Feng, Ganyu
    Luo, Jing-Yang
    Feng, Qian
    Ni, Bing-Jie
    Fang, Fang
    CHEMICAL ENGINEERING JOURNAL, 2022, 430
  • [10] Fast and accurate identification of pathogenic bacteria using excitation-emission spectroscopy and machine learning
    Henry, Jacob
    Endres, Jennifer L.
    Sadykov, Marat R.
    Bayles, Kenneth W.
    Svechkarev, Denis
    SENSORS & DIAGNOSTICS, 2024, 3 (08):