LLM-based Network Experimentation: Channel Capacity of MRC Diversity Receiver in κ-μ Fading Environment Case Study

XVII International Conference on Systems, Automatic Control and Measurements, SAUM 2024 (pp. 76-79)

АУТОР(И) / AUTHOR(S): Nenad Petrović , Elida Suljović , Nemanja Zdravković , Suad Suljović , Goran Đorđević 

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DOI:  10.46793/SAUM24.076P

САЖЕТАК / ABSTRACT:

In this paper considers a micro-MRC receiver with L branches operating over a correlated gamma-shadowed k-µ fading channel. The channel capacity for such a system is determined from the maximum signal-to-noise ratio (SNR) on the L-branch. The results are presented graphically to illustrate the effects of different system parameters on performance and the improvements due to the benefits of combined diversity. Additionally, we introduce the adoption of Large Language Models (LLMs) in order to make network experimentation more convenient, using the previously presented expression as a case study.

КЉУЧНЕ РЕЧИ / KEYWORDS:

MRC combining, k-µ fading, channel capacity, LLM

ПРОЈЕКАТ/ ACKNOWLEDGEMENT:

This work was also supported by the Ministry of Science, Technological Development and Innovation of the Republic of Serbia grant number 451-03-65/2024-03/200102.

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