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JOURNALS // Computer Research and Modeling // Archive

Computer Research and Modeling, 2025 Volume 17, Issue 1, Pages 109–123 (Mi crm1259)

MODELS IN PHYSICS AND TECHNOLOGY

Prediction of frequency resource occupancy in a cognitive radio system using the Kolmogorov – Arnold neural network

Ya. R. Adamovskiya, R. P. Bohusha, N. M. Naumovichb

a Polotsk State University, 29 Blokhina st., Novopolotsk, Republic of Belarus
b Belarusian State University of Informatics and Radioelectronics, 6 st. P. Brovki, Minsk, Republic of Belarus

Abstract: For cognitive radio systems, it is important to use efficient algorithms that search for free channels that can be provided to secondary users. Therefore, this paper is devoted to improving the accuracy of prediction frequency resource occupancy of a cellular communication system using spatiotemporal radio environment maps. The formation of a radio environment map is implemented for the fourthgeneration cellular communication system Long-Term Evolution. Taking this into account, a model structure has been developed that includes data generation and allows training and testing of an artificial neural network to predict the occupancy of frequency resources presented as the contents of radio environment map cells. A method for assessing prediction accuracy is described. The simulation model of the cellular communication system is implemented in the MatLab. The developed frequency resource occupancy prediction model is implemented in the Python. The complete file structure of the model is presented. The experiments were performed using artificial neural networks based on the Long Short-Term Memory and Kolmogorov – Arnold neural network architectures, taking into account its modification. It was found that with an equal number of parameters, the Kolmogorov – Arnold neural network learns faster for a given task. The obtained research results indicate an increase in the accuracy of prediction the occupancy of the frequency resource of the cellular communication system when using the Kolmogorov – Arnold neural network.

Keywords: cellular communication system, Long-Term Evolution, Long Short-Term Memory, artificial neural networks

UDC: 004.942

Received: 15.09.2024
Revised: 14.11.2024
Accepted: 29.12.2024

DOI: 10.20537/2076-7633-2025-17-1-109-123



© Steklov Math. Inst. of RAS, 2025