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Block Deep Neural Network-Based Signal Detector for Generalized Spatial Modulation

机译:阻止基于神经网络的基于神经网络的信号检测器,用于广义空间调制

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摘要

Generalized Spatial Modulation (GSM) is being considered for high capacity and energy-efficient networks of the future. However, signal detection due to inter channel interference among the active antennas is a challenge in GSM systems and is the focus of this letter. Specifically, we explore the feasibility of using deep neural networks (DNN) for signal detection in GSM. In particular, we propose a block DNN (B-DNN) based architecture, where the active antennas and their transmitted constellation symbols are detected by smaller sub-DNNs. After N-ordinary DNN detection, the Euclidean distance-based soft constellation algorithm is implemented. The proposed B-DNN detector achieves a BER performance that is superior to traditional block zero-forcing (B-ZF) and block minimum mean-squared error (B-MMSE) detection schemes and similar to that of classical maximum likelihood (ML) detector. Further, the proposed method requires less computation time and is more accurate than alternative conventional numerical methods.
机译:广义空间调制(GSM)被认为是未来的高容量和节能网络。然而,由于主动天线之间的频道间干扰导致的信号检测是GSM系统中的挑战,并且是这封信的焦点。具体而言,我们探讨了使用深神经网络(DNN)在GSM中进行信号检测的可行性。特别地,我们提出基于块DNN(B-DNN)的架构,其中活动天线及其发送的星座符号由较小的子DNN检测。在N-普通DNN检测之后,实现了欧几里德距离的软星座算法。所提出的B-DNN探测器实现了比传统块零强制(B-ZF)优于传统的块零强制(B-ZF)的BER性能,并阻止最小平均误差(B-MMSE)检测方案,类似于经典最大可能性(ML)检测器。此外,所提出的方法需要较少的计算时间并且比替代的常规数值方法更准确。

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