$\kappa-\mu$衰落信道稀疏矢量编码性能分析

Jingjing Guo, Xuewan Zhang, Li You, Xiaoming Xu, Di Zhang
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引用次数: 0

摘要

本文研究了独立同分布k - u阴影衰落信道上短包传输的稀疏矢量编码(SVC)的符号误码率性能。首先分析了SVC方案的信噪比(SINR),结果表明,与常规基线相比,随着资源块数量的增加,相应的信噪比(SNR)性能有所提高,表明系统的可靠性得到了提高。然后,我们在$\kappa-\mu$衰落场景下推导了计算复杂度较低的简单SER解析表达式。$\kappa-\mu$衰落模型的通用性决定了其他已知的衰落分布及其包含分布可以作为特殊情况推导出来。仿真结果表明了所提方法的有效性,并表明SVC方案在较长的扩频序列下能显著提高系统的可靠性。
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Performance Analysis of Sparse Vector Coding over $\kappa-\mu$ Fading Channel
In this paper, the symbol error rate (SER) per-formance of sparse vector coding (SVC) for the short packet transmission over independent and identically distributed (i. i. d.) k - u shadowed fading channels is studied. We firstly analyze the signal to interference plus noise ratio (SINR) of the SVC scheme and show that the corresponding signal to noise ratio (SNR) performance can be improved with the increasing number of resource blocks compared to the conventional baseline, which indicates that the reliability of the system is improved. Then, we derive the simple SER analytical expression over the $\kappa-\mu$ fading scenario with low computational complexity. The versatility of the $\kappa-\mu$ fading model determines that the other well-known fading distributions and their inclusive ones can be derived as special cases. Simulation results indicate the validness of our derivations, and that the SVC scheme can greatly improve the system reliability with longer spreading sequences.
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