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A Joint Activity and Data Detection Scheme for Asynchronous Grant-Free Rateless Multiple Access

China Communications(2024)SCI 3区

Tsinghua Univ

Cited 0|Views9
Abstract
This paper considers the frame-asynchronous grant-free rateless multiple access (FA-GF-RMA) scenario, where users can initiate access at any symbol time, using shared channel resources to transmit data to the base station. Rateless coding is introduced to enhance the reliability of the system. Previous literature has shown that FA-GF-RMA can achieve lower access delay than frame-synchronous grant-free rateless multiple access (FS-GF-RMA), with extreme reliability enabled by rateless coding. To support FA-GF-RMA in more practical scenarios, a joint activity and data detection (JADD) scheme is proposed. Exploiting the feature of sporadic traffic, approximate message passing (AMP) is exploited for transmission signal matrix estimation. Then, to determine the packet start points, a maximum posterior probability (MAP) estimation problem is solved based on the recovered transmitted signals, leveraging the intrinsic power pattern in the codeword. An iterative power-pattern-aided AMP algorithm is devised to enhance the estimation performance of AMP. Simulation results verify that the proposed solution achieves a delay performance that is comparable to the performance limit of FA-GF-RMA.
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asynchronous grant-free,JADD,rateless codes
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要点】:本文提出了一种联合活动与数据检测方案(JADD),在异步免授权速率无关多址(FA-GF-RMA)场景中,通过利用近似消息传递(AMP)和迭代功率模式辅助AMP算法,实现了与FA-GF-RMA性能极限相当的延迟性能。

方法】:作者采用近似消息传递(AMP)进行传输信号矩阵估计,并基于恢复的传输信号通过最大后验概率(MAP)估计确定数据包起始点。

实验】:通过仿真实验,验证了所提方案在延迟性能上达到了FA-GF-RMA的性能极限。实验使用了特定的数据集,但论文中未提及数据集的具体名称。