Capacity Analysis of Non-Orthogonal Multiple Access (NOMA) Network over Rayleigh Fading Channel with Dynamic Power Allocation and Imperfect SIC

Rummi Sirait, G. Wibisono
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引用次数: 4

Abstract

Non-Orthogonal Multiple Access (NOMA) is a multiple access scheme that can increase channel capacity and spectral efficiency by using superposition coding (SC) on the transmitter and successive interference cancellation (SIC) to detect multiuser on the receiver. This paper investigates the effect of imperfect SIC and dynamic power allocation on NOMA channel capacity. Based on the simulation results, it is shown that the sum capacity of NOMA schemes in the imperfect SIC with dynamic power allocation is better than the sum capacity of orthogonal multiple access (OMA) schemes. The sum capacity of NOMA users with dynamic power allocation is better than fixed power allocation. In imperfect SIC, with a transmit power value of 3 0 dBm and the value of the residual interference level is 0.005, the channel capacity is 9.04 bps/Hz. While the residual interference level is 0.02, the channel capacity is 7.07 bps/Hz.
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动态功率分配和不完全SIC条件下瑞利衰落信道非正交多址网络容量分析
非正交多址(NOMA)是一种通过在发送端使用叠加编码(SC)和在接收端使用连续干扰抵消(SIC)检测多用户来提高信道容量和频谱效率的多址方案。本文研究了不完全SIC和动态功率分配对NOMA信道容量的影响。仿真结果表明,在动态功率分配不完全SIC下,NOMA方案的总容量优于正交多址(OMA)方案的总容量。动态功率分配的NOMA用户总容量优于固定功率分配。在不完全SIC条件下,发射功率为30dbm,剩余干扰电平为0.005,信道容量为9.04 bps/Hz。当剩余干扰电平为0.02时,信道容量为7.07 bps/Hz。
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