Design of Adaptive Channel Equaliser on Neural Framework Using Fuzzy Logic Based Multilevel Sigmoid Slope Adaptation

Susmita Das
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引用次数: 2

Abstract

Adaptive equalisation in digital communication systems is a process of compensating the disruptive effects caused mainly by inter symbol interference in a band-limited channel and plays a vital role for enabling higher data rate in modern digital communication system. Designing efficient equalisers having low structural complexity and faster learning algorithms is also an area of much research interest in the present scenario. This research work proposes adaptive channel equalisation techniques on Recurrent Neural Network framework. Exhaustive simulation studies carried out prove that by replacing the conventional sigmoid activation functions in each of the processing nodes of recurrent neural network with multilevel sigmoid activation functions, the bit error rate performance have significantly improved. Further slopes of different levels of the multi-level sigmoid have been adapted using fuzzy logic control concept Simulation results cosidering standard channel models show faster learning with less number of training samples and performance level comparable to the their conventional counterparts. Also there is scope for parallel implementation of slope adaptation technique in real-time implementation.
基于模糊逻辑的多电平s型斜率自适应神经网络信道均衡器设计
数字通信系统中的自适应均衡是一种补偿带限信道中主要由码间干扰引起的干扰效应的过程,对于实现现代数字通信系统中更高的数据速率起着至关重要的作用。设计具有低结构复杂性和更快学习算法的高效均衡器也是目前研究的一个领域。本研究提出了基于递归神经网络框架的自适应信道均衡技术。详尽的仿真研究证明,将递归神经网络各处理节点中的常规sigmoid激活函数替换为多层sigmoid激活函数,可以显著提高误码率性能。使用模糊逻辑控制概念对多级s型曲线的不同层次的斜率进行了调整。考虑标准信道模型的仿真结果表明,与传统模型相比,使用更少的训练样本和性能水平,学习速度更快。在实时实现中,坡度自适应技术也有并行实现的余地。
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