Improving ANN based Channel Identification and Compensation using GRNN Method under Fast Fading Environment

T. Omura, Nythanel Hoeur, K. Maruta, Chanz-Jun Ahn
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引用次数: 3

Abstract

Under the fast fading environment, the estimated channel state information (CSI) is largely different from real channel state particularly in the last part of the packet. To mitigate this influence, we previously proposed a multilayer feedforward neural network (MLFNN) based channel estimation method. Regression capability of the MLFNN well estimated the whole transition of CSI. This network is trained by using a few CSI data set at beginning part of the packet. These partial CSIs are obtained by the pilot-aided channel estimation (PCE) and the decision feedback channel estimation (DFCE). However, MLFNN back-propagation (BP) training needs iterative renewal process of parameters. Thus, the computational complexity of the training part is quite large. To overcome this problem, this paper newly proposes a generalized regression neural network (GRNN) based channel estimation for OFDM system. Because of the direct detection method for parameters applied to GRNN, it can estimate the whole transition of channel states without huge complexity training and the processing delay. The computer simulation results clarifies that the proposed method can improve the BER performance even while the calculation quantity is minimized.
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改进快速衰落环境下基于神经网络的信道识别与补偿方法
在快速衰落环境下,估计的信道状态信息(CSI)与实际信道状态有很大的差异,特别是在数据包的最后部分。为了减轻这种影响,我们之前提出了一种基于多层前馈神经网络(MLFNN)的信道估计方法。MLFNN的回归能力较好地估计了CSI的整个过渡。该网络通过使用数据包开头部分的少量CSI数据集进行训练。这些部分信道估计分别由导频辅助信道估计(PCE)和决策反馈信道估计(DFCE)得到。然而,MLFNN的BP训练需要参数的迭代更新过程。因此,训练部分的计算复杂度相当大。针对这一问题,本文提出了一种基于广义回归神经网络(GRNN)的OFDM信道估计方法。由于GRNN采用直接检测参数的方法,它可以估计整个通道状态的转变,而不需要巨大的复杂度训练和处理延迟。计算机仿真结果表明,该方法可以在最小化计算量的情况下提高误码率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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