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Low complexity Near-ML Sphere Decoding based on a MMSE ordering for Generalized Spatial Modulation

机译:基于MMSE排序的低复杂度近ML球形解码,用于广义空间调制

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Generalized Spatial Modulation (GSM) is a trans-mission technique used in wireless communications in which only part of the transmitter antennas are activated during each time signaling period. A low complexity Sphere Decoding (SD) algorithm to achieve maximum likelihood (ML) detection has recently been proposed by using subproblem partitions, sorting preprocessing and radius updating. However, the ordering method has a serious limitation when the number of activated antennas is equal to the number of received antennas. Therefore, alternative sorting methods are studied in the present paper. In addition, the computational cost of the ML algorithm can be high when the system sizes increases. In this paper a suboptimal version is proposed where only the first L SD subproblems are carried out. The results show that the proposed algorithm achieves near optimal performance at lower computational cost than ML algorithms.
机译:通用空间调制(GSM)是一种用于无线通信的传输技术,其中在每个时间信令周期内仅激活部分发射器天线。最近已经提出了一种通过使用子问题分区,排序预处理和半径更新来实现最大似然(ML)检测的低复杂度球形解码(SD)算法。然而,当激活的天线的数量等于接收的天线的数量时,排序方法具有严重的局限性。因此,本文研究了替代分类方法。另外,当系统大小增加时,ML算法的计算成本可能会很高。在本文中,提出了一个次优版本,其中仅执行了第一个L SD子问题。结果表明,与ML算法相比,该算法以较低的计算量实现了近乎最优的性能。

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