• Optoelectronics Letters
  • Vol. 20, Issue 3, 171 (2024)
Jiaxing SUN1,2,3, Honglian LI1,2,3, Yuhang YAO1,2,3, Qiongyan YAN1,2,3, and Fang DONG1,2,3,*
Author Affiliations
  • 1College of Quality and Technology Supervising, Hebei University, Baoding 071000, China
  • 2National and Local Joint Engineering Center of Measuring Instruments and Metrology Systems, Baoding 071000,China
  • 3Key Laboratory of Energy Measurement and Safety Detection Technology in Hebei Province, Baoding 071000,China
  • show less
    DOI: 10.1007/s11801-024-3114-5 Cite this Article
    SUN Jiaxing, LI Honglian, YAO Yuhang, YAN Qiongyan, DONG Fang. Research on the identification of the production origin of Angelica dahurica using LIBS technology combined with machine learning algorithms[J]. Optoelectronics Letters, 2024, 20(3): 171 Copy Citation Text show less
    References

    [1] WANG L, SUN J, CHEN M, et al. Genetic diversity and quality traits of Angelica dahurica from different production regions[J]. Journal of Zhejiang University,2023, 40(01): 30-37. (in Chinese)

    [2] WU Y, CAO L, WANG Y, et al. Identification of metal elements in Chinese medicinal materials or excipients using LIBS spectroscopy[J]. Journal of pharmaceutical analysis, 2019, 39(03): 557-564. (in Chinese)

    [3] ZHENG P C, ZENG S, WANG J M, et al. Study on recognition of dendrobium officinale grades using LIBS[J]. Spectroscopy and spectral analysis, 2020,40(03): 941-944. (in Chinese)

    [4] CAI Y, ZHAO Z F, GUO L B, et al. Traceability study of dioscorea opposita herbal slices based on LIBS[J].Spectroscopy and spectral analysis, 2023, 43(01):138-144. (in Chinese)

    [5] MAGAIHAES A B, SENSI G S, RANULFI A, et al.Discrimination of genetically very close accessions of sweet orange (citrus sinensis L. Osbeck) by laser-induced breakdown spectroscopy (LIBS)[J]. Molecules,2021, 26(11): 3092.

    [6] LUKAS B, ZUZANA G, HANS L, et al. A critical review of recent trends in sample classification using laser-induced breakdown spectroscopy (LIBS)[J]. Trends in analytical chemistry, 2022: 116859.

    [7] SUN J X, LI H L, LV H S, et al. Research on heavy metal detection based on laser-induced breakdown spectroscopy technology under magnetic field constraint[J]. Journal of optoelectronics·laser, 2023, 34(04):422-428. (in Chinese)

    [8] JAKUB N, MICKAL K. Selecting training sets for support vector machines: a review[J]. Artificial intelligence review, 2019, 52(2): 857-900.

    [9] WU C T, WU L X, QIU C H, et al. Experimental and numerical studies on lithium-ion battery heat generation behaviors[J]. Energy reports, 2023, 9: 5064-5074.

    [10] GAO H, XUE L Y. Fitting LED spectral model with back propagation neural network based on improved genetic algorithm[J]. Progress in laser and optoelectronics,2017, 54(07): 294-302. (in Chinese)

    [11] HAN Q, YIN C, DENG Y Y, et al. Towards classification of architectural styles of Chinese traditional settlements using deep learning: a dataset, a new framework,and its interpretability[J]. Remote sensing, 2022,14(20): 5250.

    [12] DANA B H, MOHAMMAD K. A recursive general regression neural network (R-GRNN) oracle for classification problems[J]. Expert systems with applications,2019, 135: 273-286.

    [13] WANG Y, YANG L. Joint learning adaptive metric and optimal classification hyperplane[J]. Neural networks,2022, 148: 111-120.

    [14] WANG Y, HONG K, ZOU J, et al. A CNN-based visual sorting system with cloud-edge computing for flexible manufacturing systems[J]. IEEE transactions on industrial informatics, 2019, 16(7): 4726-4735.

    [15] JIRAPONG M, LUISE P, ACHIM S, et al. Human forehead recognition: a novel biometric modality based on near-infrared laser backscattering feature image using deep transfer learning[J]. IET biometrics, 2020,9(1): 31-37.

    [16] SUN B, JIANG D, ZUO Z, et al. Gender recognition via fused silhouette features based on visual sensors[J].IEEE sensors journal, 2019, 19(20): 9496-9503.

    SUN Jiaxing, LI Honglian, YAO Yuhang, YAN Qiongyan, DONG Fang. Research on the identification of the production origin of Angelica dahurica using LIBS technology combined with machine learning algorithms[J]. Optoelectronics Letters, 2024, 20(3): 171
    Download Citation