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A Novel Neural Detector Based on Self-Organizing Map for Frequency-Selective Rayleigh Fading Channel

机译:一种基于频率选择性瑞利衰落信道自组织映射的新型神经检测器

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摘要

In a high-rate indoor wireless personal communication system, the delay spread due to multi-path propagation results in inter-symbol interference which can significantly increase the transmission bit error rate (BER). The technique most commonly used for combating the intersymbol interference and frequency-selective fading found in communications channels is the adaptive equalization. In this paper, we propose a novel neural detector based on self-organizing map (SOM) to improve the system performance of the receiver. In the proposed scheme, the SOM is used as an adaptive detector of equalizer, which updates the decision levels to follow the received faded signal. To adapt the proposed scheme to the time-varying channel, we use the Euclidean distance, which will be updated automatically according to the received faded signal, as an adaptive radius to define the neighborhood of the winning neuron of the SOM algorithm. Simulations on a 16 QAM system show that the receiver using the proposed neural detector has a significantly better BER performance than the traditional receiver.
机译:在高速室内无线个人通信系统中,由于多径传播导致的延迟扩展会导致码间干扰,从而显著提高传输误码率(BER)。最常用于对抗通信信道中发现的码间干扰和频率选择性衰落的技术是自适应均衡。本文提出了一种基于自组织映射(SOM)的神经检测器,以提高接收机的系统性能。在所提出的方案中,SOM被用作均衡器的自适应检测器,它更新决策电平以跟踪接收到的衰落信号。为了使所提方案适应时变信道,我们使用欧氏距离(根据接收到的衰落信号自动更新)作为自适应半径来定义SOM算法中获胜神经元的邻域。在16 QAM系统上的仿真表明,与传统接收机相比,使用神经检测器的接收机具有明显更好的误码率性能。

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