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Performance of Modified Fractional Frequency Reuse Algorithm in Random Ultra Dense Networks
Performance of Modified Fractional Frequency Reuse Algorithm in Random Ultra Dense Networks
Bach Hung Luu
Mitigating intercell interference by employing fractional frequency reuse algorithms is one of the important approaches to improving user performance in 5G and Beyond 5G cellular network systems, which typically have a high density of Base Stations (BSs). While most frequency reuse algorithms are based on the downlink Signal-to-Interference-plus-Noise Ratio (SINR) or the distance between the user and its serving BS to classify Cell-Edge Users (CEUs) and Cell-Center Users (CCUs), this paper discusses a modified algorithm that uses the power ratio between the signal strengths from the serving BS and the second nearest BS for user classification. Specifically, if the power ratio is below a predefined threshold, the user is classified as a CEU and is served with higher transmission power. Simulation results show that increasing transmission power is necessary to enhance CEU performance, but it also degrades the performance of typical users. The use of frequency reuse algorithms is particularly feasible in environments with a high density of obstacles, where intercell interference can be effectively suppressed.
Xuất bản trên:
Performance of Modified Fractional Frequency Reuse Algorithm in Random Ultra Dense Networks
Ngày đăng:
2026
Nhà xuất bản:
Địa điểm:
Từ khoá:
Algorithms Cellular Noise Digital and Analog Signal Processing Signal Processing Standardization Wireless and Mobile Communication
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