PAPR reduction using model‐driven hybrid algorithms in the 6G NOMA waveform

Arun Kumar, Nishant Gaur, Aziz Nanthaamornphong
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Abstract

In the evolving landscape of sixth‐generation (6G) network technologies, Non‐Orthogonal Multiple Access (NOMA) systems are pivotal for achieving enhanced spectral efficiency and network capacity. However, a significant challenge in NOMA systems is the high Peak‐to‐Average Power Ratio (PAPR), which undermines system efficiency by necessitating high‐power amplifiers (HPAs) to operate in their less efficient, non‐linear range. Addressing this, we introduce a novel hybrid approach, the Selective Mapping‐Circular Transformation Method (SLM‐CTM), which ingeniously amalgamates the strengths of Selective Mapping (SLM) and the Circular Transformation Method (CTM) to mitigate PAPR issues. SLM is renowned for its peak power reduction capabilities without adding to system complexity, whereas CTM is valued for its simplicity and controlled signal distortion. The proposed SLM‐CTM strategy employs a blend of linear and nonlinear techniques to effectively lower PAPR in non‐orthogonal NOMA configurations, thereby reducing high‐power peaks while simultaneously enhancing signal quality. This paper delineates the application of the SLM‐CTM algorithm to evaluate critical NOMA parameters such as Power Spectral Density (PSD), Bit Error Rate (BER), and PAPR. Simulation results highlight the efficacy of SLM‐CTM over conventional SLM, demonstrating a significant throughput improvement of 3.2 dB and a PAPR reduction of 4.6 dB, underscoring the potential of SLM‐CTM in elevating the performance of NOMA systems within 6G network.
在 6G NOMA 波形中使用模型驱动混合算法降低 PAPR
在不断发展的第六代(6G)网络技术中,非正交多址(NOMA)系统对于实现更高的频谱效率和网络容量至关重要。然而,NOMA 系统面临的一个重大挑战是峰均功率比(PAPR)过高,这使得高功率放大器(HPA)必须在效率较低的非线性范围内工作,从而影响了系统效率。为解决这一问题,我们引入了一种新颖的混合方法,即选择性映射-环形变换法(SLM-CTM),它巧妙地融合了选择性映射(SLM)和环形变换法(CTM)的优势,以缓解 PAPR 问题。SLM 以其在不增加系统复杂性的情况下降低峰值功率的能力而闻名,而 CTM 则以其简单性和可控信号失真而备受推崇。所提出的 SLM-CTM 策略融合了线性和非线性技术,可有效降低非正交 NOMA 配置中的 PAPR,从而在提高信号质量的同时降低高功率峰值。本文阐述了 SLM-CTM 算法在评估功率谱密度 (PSD)、误码率 (BER) 和 PAPR 等关键 NOMA 参数中的应用。仿真结果凸显了 SLM-CTM 相对于传统 SLM 的功效,显示吞吐量显著提高了 3.2 dB,PAPR 降低了 4.6 dB,突出了 SLM-CTM 在提升 6G 网络中 NOMA 系统性能方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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