Signal Sorting Algorithm of Hybrid Frequency Hopping Network Station Based on Neural Network
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Published:2021-01-01
Issue:1
Volume:1757
Page:012091
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ISSN:1742-6588
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Container-title:Journal of Physics: Conference Series
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language:
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Short-container-title:J. Phys.: Conf. Ser.
Author:
Wang Zhongyong,Zhang Beibei,Zhu Zhengyu,Gong Kexian
Abstract
Abstract
In a non-cooperative frequency hopping communication system, the frequency hopping network station sorting of the received hybrid signals plays an important role and becomes an active research area in recent years. In order to solve the problem that the currently widely used clustering algorithm can not achieve satisfactory accuracy. In this paper, we propose a signal sorting method for hybrid frequency hopping network stations by applying the neural network to classify the frequency hopping description words of signals. Additionally, the conjugate gradient algorithm is utilized in the neural network training process to improve the convergence speed. Simulation results demonstrate that when compared with the clustering algorithm, the proposed algorithm converges with fewer iterations and delivers better sorting accuracy, especially in a low signal to noise ratio environment.
Subject
General Physics and Astronomy
Reference12 articles.
1. Equivariant adaptive source separation;Cardoso;J. IEEE Trans Signal Proc.,1996
2. Frequency-Hopping Radio Station Individual Identification Method Based on Instantaneous Characteristics in Frequency Domain;Chenhui;Computer Engineering and Applications,2013
3. Individual Identification Method of Frequency Hopping Radio Station Based on Instantaneous Envelope Characteristics;Chenhui;Journal of Signal Proc.,2012
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