Super fast and efficient channel equalizer architecture based on neural network

R. Kumar, S. Jalali
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引用次数: 2

Abstract

Broadband wireless communication systems are currently in a rapid evolutionary phase in terms of development of various technologies, development of various applications, deployment of various services and generation of many important standards in the field. Ever increasing demand on various services justifies the need for the transmission of data at the highest possible data rates. The multipath and fading characteristics of the wireless channels result in various impairments and distortions, the most important of those being the Inter-Symbol Interference (ISI) especially at relatively high data rates. Among the various possible solutions to mitigate ISI, the adaptive equalizer remains one of the most attractive solutions, particularly the algorithms requiring minimal or no training sequence and at the same time are computationally efficient. This paper presents a novel neural networks based architecture for channel equalizers that require only order of 20-40 training symbols to converge to the optimum solution and at the same time is computationally efficient.
基于神经网络的超快速高效信道均衡器架构
从各种技术的发展、各种应用的开发、各种业务的部署和许多重要标准的产生等方面来看,宽带无线通信系统目前正处于一个快速发展的阶段。对各种业务日益增长的需求证明需要以尽可能高的数据速率传输数据。无线信道的多径和衰落特性导致了各种各样的损伤和失真,其中最重要的是码间干扰(ISI),特别是在相对较高的数据速率下。在各种可能的缓解ISI的解决方案中,自适应均衡器仍然是最具吸引力的解决方案之一,特别是需要最小或不需要训练序列的算法,同时计算效率高。本文提出了一种新的基于神经网络的信道均衡器结构,它只需要20-40阶的训练符号就能收敛到最优解,同时计算效率很高。
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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