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Intelligent Sensing and Identification of Spectrum Anomalies With Alpha-Stable Noise

Liu, Mingqian; Wen, Zhaoxi; Chen, Yunfei; Zhang, Junlin; Cheng, Huigui; Zhao, Nan

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Authors

Mingqian Liu

Zhaoxi Wen

Junlin Zhang

Huigui Cheng

Nan Zhao



Abstract

As the electromagnetic environment becomes more complex, a significant number of interferences and malfunctions of authorized equipment can result in anomalies in spectrum usage. Utilizing intelligent spectrum technology to sense and identify anomalies in the electromagnetic space is of great significance for the efficient use of the electromagnetic space. In this paper, a method for intelligent sensing and identification of anomalies in spectrum with alpha-stable noise is proposed. First, we use a delayed feedback network (DFN) to suppress alpha-stable noise. Then, we use a long short-term memory (LSTM) autoencoder-based attention mechanism to sense anomaly. Finally, we use the deep forest model to identify abnormal spectrum. Simulation results demonstrate that the proposed method effectively suppresses alpha-stable noise, and it outperforms existing methods in abnormal spectrum sensing and identification.

Citation

Liu, M., Wen, Z., Chen, Y., Zhang, J., Cheng, H., & Zhao, N. (online). Intelligent Sensing and Identification of Spectrum Anomalies With Alpha-Stable Noise. International Journal of Intelligent Systems, https://doi.org/10.1155/int/5010973

Journal Article Type Article
Acceptance Date Jan 9, 2025
Online Publication Date Feb 20, 2025
Deposit Date Apr 8, 2025
Publicly Available Date Apr 8, 2025
Journal International Journal of Intelligent Systems
Print ISSN 0884-8173
Electronic ISSN 1098-111X
Publisher Wiley
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1155/int/5010973
Public URL https://durham-repository.worktribe.com/output/3783697

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