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Blind Fuzzy Adaptation Step Control for a Concurrent Neural Network Equalizer

机译:并发神经网络均衡器的盲模拟适应步骤控制

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Mobile communications, not infrequently, are disrupted by multipath propagation in the wireless channel. In this context, this paper proposes a new blind concurrent equalization approach that combines a Phase Transmittance Radial Basis Function Neural Network (PTRBFNN) and the classic Constant Modulus Algorithm (CMA) in a concurrent architecture, with a Fuzzy Controller (FC) responsible for adapting the PTRBFNN and CMA step sizes. Differently from the Neural Network (NN) based equalizers present in literature, the proposed Fuzzy Controller Concurrent Neural Network Equalizer (FC-CNNE) is a completely self-taught concurrent architecture that does not need any training. The Fuzzy Controller inputs are based on the estimated mean squared error of the equalization process and on its variation in time. The proposed solution has been evaluated over standard multipath VHF/UHF channels defined by the International Telecommunication Union. Results show that the FC-CNNE is able to achieve lower residual steady-state MSE value and/or faster convergence rate and consequently lower Bit Error Rate (BER) when compared to Constant Modulus Algorithm-Phase Transmittance Radial Basis Function Neural Network (CMA-PTRBFNN) equalizer.
机译:移动通信不是不经常的,在无线信道中的多径传播中断。在这种情况下,本文提出了一种新的盲常规均衡方法,该方法将相透射径向基函数神经网络(PtrBFNN)和经典常量模数算法(CMA)与并发架构中的经典常量模数算法(CMA)组合,其负责适度的模糊控制器(FC) PTRBFNN和CMA步骤尺寸。不同于文献中存在的基于神经网络(NN)的均衡器,所提出的模糊控制器并发神经网络均衡器(FC-CNNE)是一种完全自学的并发架构,不需要任何培训。模糊控制器输入基于均衡过程的估计平均平方误差和其时间变化。所提出的解决方案已经通过国际电信联盟定义的标准多径VHF / UHF渠道进行了评估。结果表明,与恒定模量算法相透射径向基函数神经网络相比,FC-CNNE能够实现较低的残余稳态MSE值和/或更快的收敛速率,从而降低比特错误率(BER)(CMA- ptrbfnn)均衡器。

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