基于神经网络系统的数字通信信道均衡策略

Ami Kumar Parida, S. Panda, R.P. Singh
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引用次数: 3

摘要

在目前的数字信号传输中,码间干扰是选频信道中最令人关注的问题。为了避免这种缺点,并获得初始传输信息,在接收端有一个均衡过程,补偿由于ISI而损坏的数据。因此,作为通道均衡器的基本技术通常适用于最小化符号间干扰的后果。自适应均衡器非常适合处理通信信道的时变和随机特性。这种对话式均衡器本质上与信道相反,信道的影响可以进行补偿。对于非逆信道,也不存在均衡器。现在我们考虑比传统均衡器更好的性能,可以提出一种神经均衡器。本研究还反映了均方误差最小化的过程,以及ISI引起的失真。分析结果表明,神经均衡器的工作性能远优于现有的会话式均衡器系统。对于每个信道都有自己的误码率和有噪声的数据,对所规划的均衡器的结果进行了深入考虑。仿真结果表明,合理设计的均衡器在性能方面具有较低的误码率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Strategy on Channel Equalization for Digital Communication Based on Neural Network System
In present scenario when we talk about digital signal transmission inter symbol interference is the most exciting problem over frequency selective communication channel. To avoid such drawback and to get back initial transmitted information there is an equalization process at the receiver end which compensating corrupted data due to ISI. Hence the basic techniques as Channel equalizers are generally adapted to minimize consequences are Inter-Symbol Interference. An adaptive equalizer is highly suitable to handle the time varying and random nature of communication channel. This conversational equalizer by nature inverse to channel and channel’s influence can be compensating. Also for non inverse channel there is no existence of equalizer. Now we think about better performance comparing with traditional, and a neural equalizer can be proposed. This research paper also reflecting the process of minimizing of mean square error and also distortion due to ISI. Analysis outcome of this work satisfy us that neural equalizer operational behavior much better than all existing conversational system of equalizers. The outcome on the planned equalizer is deeply considered for every channel having its own bit-error rate with noisy data. Result after Simulation expressing the properly designed equalizer has lower Bit Error Rate (BER) with respect to performance.
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