Niu H, Wu T, Chen J, Zhang Y, Wang Q, Zhao Y, Wang G, Lei X, Tang W, Huang C, Guan YL, Debbah M, Adachi F, Al-Dhahir N, Schober R, Yuen C (2026)
Publication Type: Journal article
Publication year: 2026
Book Volume: 25
Pages Range: 15232-15247
Artificial noise (AN) has been recognized as an effective physical-layer security scheme impairing the eavesdropper (Eve). Recently, artificial noise elimination (ANE) has emerged as a promising strategy to mitigate the impact of AN at Eves. However, conventional ANE schemes rely on prior knowledge, such as legitimate channel state information (CSI) or classification information, which may limit their practical applicability. To address these practical challenges, we propose an ANE scheme beyond prior knowledge (BPK) by leveraging machine learning algorithms. Firstly, a coarse projection is applied to partially eliminate the impact of AN using maximum likelihood estimation on the equivalent AN matrix. Secondly, a density clustering algorithm is introduced to obtain classification information based on the coarsely-projected observed vectors. Thirdly, a generalized principal component analysis (PCA)-based ANE algorithm is developed to effectively mitigate the residual AN using the obtained classification information. Furthermore, the artificial-noise-to-signal ratio (ANSR) and computational complexity are analyzed for performance revaluation, and a redefinition of several AN design principles is provided for scenarios involving a powerful Eve equipped with the BPK-ANE scheme by deriving the validity boundary. Finally, numerical results reveal key insights into four principles of AN: 1) Allocating less power to AN; 2) Reducing the randomness of AN; 3) Increasing the number of transmit antennas; and 4) Increasing the modulation order.
APA:
Niu, H., Wu, T., Chen, J., Zhang, Y., Wang, Q., Zhao, Y.,... Yuen, C. (2026). Redefinition of Principles for Artificial Noise: Insights From Physical Layer Insecurity. IEEE Transactions on Wireless Communications, 25, 15232-15247. https://doi.org/10.1109/TWC.2026.3681901
MLA:
Niu, Hong, et al. "Redefinition of Principles for Artificial Noise: Insights From Physical Layer Insecurity." IEEE Transactions on Wireless Communications 25 (2026): 15232-15247.
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