• Journal of Terahertz Science and Electronic Information Technology
  • Vol. 19, Issue 4, 623 (2021)
XU Tiantian1、*, HAN Guangjie1、2, ZOU Yan3, ZHU Hongbo4, WANG Min1, and LIN Chuan5
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
  • 4[in Chinese]
  • 5[in Chinese]
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    DOI: 10.11805/tkyda2021084 Cite this Article
    XU Tiantian, HAN Guangjie, ZOU Yan, ZHU Hongbo, WANG Min, LIN Chuan. Electromagnetic Power Spectrum Density prediction model based on hybrid machine learning[J]. Journal of Terahertz Science and Electronic Information Technology , 2021, 19(4): 623 Copy Citation Text show less
    References

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    [17] LI K,LIU Z,HE S,et al. TF 2 an:a temporal-frequency fusion attention network for spectrum energy level prediction[C]// 2019 16th Annual IEEE International Conference on Sensing,Communication,and Networking. Boston,Massachusetts, USA:IEEE, 2019.

    XU Tiantian, HAN Guangjie, ZOU Yan, ZHU Hongbo, WANG Min, LIN Chuan. Electromagnetic Power Spectrum Density prediction model based on hybrid machine learning[J]. Journal of Terahertz Science and Electronic Information Technology , 2021, 19(4): 623
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