差分空时调制的非相干序列检测

Cong Ling, K. H. Li, A. Kot
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摘要

提出了时间选择性衰落信道中差分空时调制(DSTM)的近似最大似然非相干序列检测(NSD)。本文的出发点是指数复杂度的DSTM的最佳多符号差分检测。通过截断增量度量的内存,得到有限状态网格,从而实现Viterbi算法进行序列检测。与现有的线性预测接收机相比,NSD的一个显著特点是它可以适应连续衰落中的非对角星座。误差分析表明,与线性预测接收机相比,性能有显著提高。通过结合减少状态序列检测技术,可以通过分支内存和网格大小来控制性能和复杂性的权衡。数值结果表明,使用L状态网格可以获得大部分性能增益,其中L为DSTM星座的大小。
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Noncoherent sequence detection of differential space-time modulatio
Approximate maximum-likelihood noncoherent sequence detection (NSD) for differential space-time modulation (DSTM) in time-selective fading channels is proposed. The starting point is the optimum multiple-symbol differential detection for DSTM that is characterized by exponential complexity. By truncating the memory of the incremental metric, a finite-state trellis is obtained so that a Viterbi algorithm can be implemented to perform sequence detection. Compared to existing linear predictive receivers, a distinguished feature of NSD is that it can accommodate nondiagonal constellations in continuous fading. Error analysis demonstrates that significant improvement in performance is achievable over linear prediction receivers. By incorporating the reduced-state sequence detection techniques, performance and complexity tradeoffs can be controlled by the branch memory and trellis size. Numerical results show that most of the performance gain can be achieved by using an L-state trellis, where L is the size of the DSTM constellation.
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