基于检测子集排序的低复杂度深度学习辅助金码球解码

IF 1 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
Bhekisizwe Mthethwa;Hongjun Xu
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引用次数: 0

摘要

 摘要——Golden码是一种空时分组编码(STBC)方案,它比现代无线通信标准中广泛使用的Alamouti STBC具有空间复用增益。金码由于其固有的高检测复杂度,尚未在现代无线标准中被广泛采用。然而,已经开发了像具有排序检测子集的球体解码(SD-SDS)这样的检测算法来降低这种检测复杂度。文献表明,对于所有信噪比(SNR)值,与传统的球面解码(SD)算法相比,SD-SDS算法具有较低的检测复杂度。SD-SDS算法在高信噪比下具有较低的检测复杂度;然而,在低SNR下,检测复杂度更高。我们提出了一种深度神经网络(DNN)辅助的SD-SDS算法(SD-SDS-DNN),该算法将降低Golden码的SD-SDS-低SNR检测复杂性,同时保持误码率(BER)性能。在16-QAM的低SNR值下,所提出的SD-SDS-DNN相对于SD-SDS实现了75%的检测复杂度降低,同时保持了BER性能。对于64-QAM,相对于低SNR下的SD-SDS,SD-SDS-DNN实现了99%的检测复杂度降低,同时保持了BER性能。SD-SDS-DNN还被证明实现了与Alamouti线性最大似然(ML)检测器相比的低检测复杂度,用于8比特/s/Hz的频谱效率。对于12比特/s/Hz的频谱效率,SD-SDS-DNN实现了比Alamouti线性ML检测器低90%的检测复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low Complexity Deep Learning-Assisted Golden Code Sphere-Decoding with Sorted Detection Subsets
Golden code is a space-time block coding (STBC) scheme that has spatial multiplexing gain over the Alamouti STBC which is widely used in modern wireless communication standards. Golden code has not been widely adopted in modern wireless standards because of its inherent high detection complexity. However, detection algorithms like the sphere-decoding with sorted detection subsets (SD-SDS) have been developed to lower this detection complexity. Literature indicates that the SD-SDS algorithm has lower detection complexity relative to the traditional sphere-decoding (SD) algorithm, for all signal-to-noise ratio (SNR) values. The SD-SDS algorithm exhibits low detection complexity at high SNR; however, at low SNR the detection complexity is higher. We propose a deep neural network (DNN) aided SD-SDS algorithm (SD-SDS-DNN) that will lower the Golden code's SD-SDS low SNR detection complexity, whilst maintaining the bit-error-rate (BER) performance. The proposed SD-SDS-DNN is shown to achieve a 75% reduction in detection complexity relative to SD-SDS at low SNR values for 16-QAM, whilst maintaining the BER performance. For 64-QAM, the SD-SDS-DNN achieves 99% reduction in detection complexity relative to the SD-SDS at low SNR, whilst maintaining the BER performance. The SD-SDS-DNN has also shown to achieve low detection complexity comparable to that of the Alamouti linear maximum likelihood (ML) detector for a spectral efficiency of 8 bits/s/Hz. For a spectral efficiency of 12 bits/s/Hz, the SD-SDS-DNN achieves a detection complexity that is 90% lower than the Alamouti linear ML detector.
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来源期刊
SAIEE Africa Research Journal
SAIEE Africa Research Journal ENGINEERING, ELECTRICAL & ELECTRONIC-
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