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The study of sphere radius based on multiple symbol differential unitary space-time system

机译:基于多个符号差分酉空时系统的球半径研究

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To solve the problem of high complexity for multiple symbol differential detection (MSDD), a series sub-superior detect algorithms have been proposed at present, wherein the depth-first sphere decoding is a classical algorithm whose performance approximates to the maximum likelihood detection. But it still has high computing complexity, and the pipeline and parallel operations are very difficult, so it is impossible to use widely in practice. At present the sphere decoding reduces complexity mainly by two ways: First, choosing the appropriate radius, second, combining with the K-Best algorithm, but the latter will cause some loss of performance. This paper focuses on the former, and researches two low-complexity radiuses based on the width-first tree detection. The performances of sphere decoding with two radiuses and maximum likelihood detection are compared. The simulation results show that the performances of the three are very similar at the low SNR, but as the SNR increased, the maximum likelihood is superior to the performance of nonlinear radius, nonlinear radius is better than linear radius, but the gap is smaller than 0.5dB. Complexity analysis shows that the complexity of sphere decoding with the appropriate radiuses can reduce a lot compared with maximum likelihood detection.
机译:为了解决多个符号差分检测(MSDD)的高复杂性的问题,目前已经提出了串联级检测算法,其中深度 - 第一球体解码是一种经典算法,其性能近似于最大似然检测。但它仍然具有很高的计算复杂性,并且管道和平行操作非常困难,因此在实践中不可能广泛使用。目前球体解码主要通过两种方式降低复杂性:首先,选择合适的半径,第二,结合K-Best算法,但后者将导致一些性能损失。本文侧重于前者,并根据宽度第一树检测研究两个低复杂性半径。比较了两个半径和最大似然检测的球体解码的性能。仿真结果表明,这三者的性能在低SNR中非常相似,但随着SNR的增加,最大可能性优于非线性半径的性能,非线性半径优于线性半径,但间隙小于线性半径0.5dB。复杂性分析表明,与最大似然检测相比,使用适当的半径的球体解码的复杂性可以减少很多。

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