RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications

On the basis of the chaotic features of the frequency hopping signal, frequency band prediction for frequency hopping signal can enhance the interference effect of the signal greatly. However, poor prediction accuracy often limits its development in the military field. Therefore, for the sake of enh...

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Main Authors: Shengyan Zhu, Yongjian Wang, Jianbo Zheng, Shupeng Wang
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/5570685
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spelling doaj-6bbc74c09822471ca39bc95c03d7262a2021-04-26T00:04:00ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/5570685RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping CommunicationsShengyan Zhu0Yongjian Wang1Jianbo Zheng2Shupeng Wang3Faculty of Quality Management and Inspection & Quarantine Sanjiang Research Institute of Artificial Intelligence & RoboticsNational Computer Network Emergency Response Technical TeamKey Laboratory of Human-Machine Intelligence-Synergy SystemsInstitute of Information EngineeringOn the basis of the chaotic features of the frequency hopping signal, frequency band prediction for frequency hopping signal can enhance the interference effect of the signal greatly. However, poor prediction accuracy often limits its development in the military field. Therefore, for the sake of enhancing the frequency band prediction accuracy of frequency hopping signal, this paper studies the radial basis function (RBF) neural network frequency hopping signal frequency band prediction model based on the gradient descent method and improved the particle swarm optimization algorithm, respectively. The former uses a step-by-step algorithm to optimize the center value and weight so that the network can find the most suitable initial state. Then, the clustering selection optimization algorithm is employed to optimize the central value. In addition, it optimizes the weight by using a gradient descent method of the optimal learning rate. The latter optimizes the structure of the RBF neural network through the combination of the subtractive clustering algorithm and improved the particle swarm optimization (PSO) algorithm. Simulation results demonstrate that the gradient RBF algorithm model performs better in terms of accuracy, but time efficiency is lower, while the PSO-RBF algorithm has better time efficiency.http://dx.doi.org/10.1155/2021/5570685
collection DOAJ
language English
format Article
sources DOAJ
author Shengyan Zhu
Yongjian Wang
Jianbo Zheng
Shupeng Wang
spellingShingle Shengyan Zhu
Yongjian Wang
Jianbo Zheng
Shupeng Wang
RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
Wireless Communications and Mobile Computing
author_facet Shengyan Zhu
Yongjian Wang
Jianbo Zheng
Shupeng Wang
author_sort Shengyan Zhu
title RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
title_short RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
title_full RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
title_fullStr RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
title_full_unstemmed RBF Neural Network-Based Frequency Band Prediction for Future Frequency Hopping Communications
title_sort rbf neural network-based frequency band prediction for future frequency hopping communications
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description On the basis of the chaotic features of the frequency hopping signal, frequency band prediction for frequency hopping signal can enhance the interference effect of the signal greatly. However, poor prediction accuracy often limits its development in the military field. Therefore, for the sake of enhancing the frequency band prediction accuracy of frequency hopping signal, this paper studies the radial basis function (RBF) neural network frequency hopping signal frequency band prediction model based on the gradient descent method and improved the particle swarm optimization algorithm, respectively. The former uses a step-by-step algorithm to optimize the center value and weight so that the network can find the most suitable initial state. Then, the clustering selection optimization algorithm is employed to optimize the central value. In addition, it optimizes the weight by using a gradient descent method of the optimal learning rate. The latter optimizes the structure of the RBF neural network through the combination of the subtractive clustering algorithm and improved the particle swarm optimization (PSO) algorithm. Simulation results demonstrate that the gradient RBF algorithm model performs better in terms of accuracy, but time efficiency is lower, while the PSO-RBF algorithm has better time efficiency.
url http://dx.doi.org/10.1155/2021/5570685
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AT yongjianwang rbfneuralnetworkbasedfrequencybandpredictionforfuturefrequencyhoppingcommunications
AT jianbozheng rbfneuralnetworkbasedfrequencybandpredictionforfuturefrequencyhoppingcommunications
AT shupengwang rbfneuralnetworkbasedfrequencybandpredictionforfuturefrequencyhoppingcommunications
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