A novel concept of embedding orthogonal basis function expansion in a feedforward neural equaliser

S. Das
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Abstract

The proposed neural equaliser structure is based on an orthogonal basis function (OBF) expansion technique, motivated by genetic evolutionary concept, which utilizes a self-breeding approach to evolve new information so as to consolidate the final output.The equaliser structure developed using this novel approach has outperformed the conventional multilayer feedforward neural network (FNN) equaliser with a wide margin and its bit-error-rate performance is close to that of an optimal Bayesian equaliser. Also it learns faster with less training samples.Application of this proposed technique also reduces the structural complexity of a conventional FNN equaliser and has the potential to become a challenging candidate for real-time implementation issue.
在前馈神经均衡器中嵌入正交基函数展开的新概念
本文提出的神经均衡器结构基于正交基函数(OBF)展开技术,以遗传进化概念为动力,利用自繁殖方法进化新信息,从而巩固最终输出。利用这种新方法开发的均衡器结构比传统的多层前馈神经网络均衡器(FNN)具有更大的裕度,误码率性能接近最优贝叶斯均衡器。此外,它学习更快,训练样本更少。该技术的应用还降低了传统FNN均衡器的结构复杂性,并有可能成为实时实现问题的一个具有挑战性的候选方案。
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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