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Research on low-complexity breadth-first detection for multiple-symbol differential unitary space-time modulation systems

机译:多符号差分unit时空调制系统的低复杂度广度优先检测研究

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摘要

The breadth-first searching algorithms, typically represented by K-best algorithm, are widely studied for multiplesymbol differential detection in multiple-input multiple-output systems due to the advantages of fixed complexity and latency which are very attractive for hardware implementation. However, it needs a large K value to achieve near maximum likelihood performance, which results in large complexity. In this study, a dynamic K-best detection with reduced average K value is proposed. It reduces the complexity on path expanding, path updating and comparing and swapping (C&S) operations by 24.24, 25 and 43.46%, respectively, with less performance degradation. After that, two low-complexity sorting architectures, Batcher's merge sort and K cycles sort, are presented and applied to the proposed dynamic K-best detection. The complexity analysis and simulation results show that, compared with the traditional Bubble sorting dynamic K-best detection, the K cycles sorting and the Batcher's merge sorting dynamic K-best detections can further save C&S operations by 59.5 and 11.2%, respectively, while performance cost capable of being ignored. Moreover, the K cycles sorting dynamic K-best detection achieves best trade-off on throughput and required memory, and the architecture of the Batcher's merge sorting dynamic K-best detection is more beneficial to parallel processing and multiple-processor structure.
机译:广度优先搜索算法(通常以K最佳算法为代表)由于具有固定复杂性和等待时间的优势而被广泛研究用于多输入多输出系统中的多符号差分检测,这对于硬件实现非常有吸引力。但是,它需要较大的K值才能达到接近最大的似然性能,从而导致复杂性高。在这项研究中,提出了减少平均K值的动态K最佳检测。它将路径扩展,路径更新以及比较和交换(C&S)操作的复杂度分别降低了24.24%,25%和43.46%,而性能下降较少。在此之后,提出了两种低复杂度的排序架构,即Batcher的合并排序和K循环排序,并将其应用于建议的动态K最佳检测。复杂性分析和仿真结果表明,与传统的冒泡排序动态K-best检测相比,K循环排序和Batcher的合并排序动态K-best检测可以分别将C&S操作节省59.5%和11.2%,而性能可以忽略的成本。此外,K循环排序动态K最佳检测在吞吐量和所需内存方面实现了最佳权衡,而Batcher合并排序动态K最佳检测的体系结构更有利于并行处理和多处理器结构。

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  • 来源
    《Communications, IET》 |2011年第13期|p.1868-1878|共11页
  • 作者单位

    Department of Information Engineering, China Jiliang University, Hang Zhou 310018, People's Republic of China;

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