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Least bit error rate adaptive nonlinear equalisers for binary signalling

机译:用于二进制信令的最低误码率自适应非线性均衡器

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The paper considers the problem of constructing adaptive minimum bit error rate (MBER) neural network equalisers for binary signalling. Motivated from a kernel density estimation of the bit error rate (BER) as a smooth function of training data, a stochastic gradient algorithm called the least bit error rate (LBER) is developed for adaptive nonlinear equalisers. This LBER algorithm is applied to adaptive training of a radial basis function (RBF) equaliser in a channel intersymbol interference (ISI) plus co-channel interference setting. A simulation study shows that the proposed algorithm has good convergence speed, and a small-size RBF equaliser trained by the LBER can closely approximate the performance of the optimal Bayesian equaliser. The results also demonstrate that the standard adaptive algorithm, the least mean square (LMS), performs poorly for neural network equalisers, because the minimum mean square error (MMSE) is clearly suboptimal in the equalisation setting.
机译:本文考虑了为二进制信令构造自适应最小误码率(MBER)神经网络均衡器的问题。根据作为训练数据的平滑函数的误码率(BER)的内核密度估计,人们为自适应非线性均衡器开发了一种称为最小误码率(LBER)的随机梯度算法。该LBER算法应用于信道符号间干扰(ISI)和同信道干扰设置中的径向基函数(RBF)均衡器的自适应训练。仿真研究表明,该算法具有良好的收敛速度,由LBER训练的小尺寸RBF均衡器可以逼近最佳贝叶斯均衡器的性能。结果还表明,标准的自适应算法最小均方(LMS)在神经网络均衡器中的性能较差,因为最小均方误差(MMSE)在均衡设置中显然次优。

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