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Numerical Analysis for Joint PHY and MAC Perspective of Compressive Sensing Multi-User Detection with Coded Random Access

机译:用编码随机接入压缩感测多用户检测关节PHY和MAC透视的数值分析

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Massive Machine Communication (MMC) in the next generation of mobile communication (5G) systems requires new Medium Access Control (MAC) and physical (PHY) layer concepts to handle massive access with low overhead. The recently developed concept coded random access is capable of resolving collisions in massive access at MAC layer. Furthermore, Compressive Sensing Multi-User Detection (CS-MUD) achieves joint activity and data detection from the PHY layer perspective by exploiting sparsity in sporadic multi-user detection. In [1], a joint design of these two concepts was semi-analytically evaluated combining CS-MUD with coded random access under certain assumptions, which showed a promising performance for supporting MMC. In this work, a full link-level analysis of the joint protocol will be presented to verify the previous results and provide deep insights on the link-level performance. Although the joint approach on the link-level shows a small throughput loss compared to the semi-analytical evaluation, high system flexibility can be achieved by tuning MAC and PHY resources dynamically based on the numerical analysis which can be referred to in the joint MAC-/PHY-layer design.
机译:在下一代移动通信(5G)系统中的大规模机器通信(MMC)需要新的媒体访问控制(MAC)和物理(PHY)层概念来处理具有低开销的大量访问。最近开发的概念编码随机访问能够解决MAC层的大规模访问中的碰撞。此外,压缩感测多用户检测(CS-MUD)通过利用散散多用户检测的稀疏性来实现来自PHY层视角的关节活动和数据检测。在[1]中,这两个概念的联合设计是半分析的CS-MUD在某些假设下与编码随机接入组合的CS-MUD,这表明了用于支持MMC的有希望的性能。在这项工作中,将提出联合协议的完整链接级别分析,以验证以前的结果,并对链路级性能提供深刻的见解。虽然链接层面上的联合方法显示了与半分析评估相比的小吞吐量损失,但通过基于可以在联合MAC中的数值分析调谐MAC和PHY资源,可以通过调谐MAC和PHY资源来实现高系统灵活性/ phy层设计。

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