A robust RBF neural net Bayesian estimator for channel equalization

D. Khedim, A. Benyettou, M. Woolfson
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Abstract

The characteristic (transfer function) of a dispersive M-ary channel equalizer designed through a Bayesian estimator, a performance indicator that is not trivial to obtain for M>2 due to intersymbol interference (ISI), is investigated. A set of curves is obtained and interpreted. Implementation through a radial basis function neural network is considered. It is shown that because network centers endure updating with different rates, the equalizer characteristic errates off the optimum, causing thus the symbol error rate and/or the training time to increase. A solution, based on incorporating an underlying symmetry in the channel response levels into the updating algorithm, brings the characteristic uniformly closer to the optimal one. It is also provided a strategy endowing the network with self-initializing. Simulation results are presented for a channel with sufficient ISI strength.
信道均衡的鲁棒RBF神经网络贝叶斯估计
利用贝叶斯估计器设计的色散M通道均衡器的特性(传递函数)进行了研究,贝叶斯估计器是由于码间干扰(ISI)导致M>2时不易获得的性能指标。得到并解释了一组曲线。通过径向基函数神经网络实现。结果表明,由于网络中心以不同的速率进行更新,均衡器特性偏离了最优值,从而导致符号错误率和/或训练时间增加。一种基于将信道响应水平的潜在对称性纳入更新算法的解决方案,使特征均匀地接近最优特征。给出了一种使网络具有自初始化的策略。给出了具有足够ISI强度的信道的仿真结果。
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