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Adaptive non linear system identification and channel equalization usinf functional link artificial neural network

机译:基于功能链接人工神经网络的自适应非线性系统辨识与信道均衡

摘要

In system theory, characterization and identification are fundamental problems. When the plant behavior is completely unknown, it may be characterized using certain model and then, its identification may be carried out with some artificial neural networks(ANN) like multilayer perceptron(MLP) or functional link artificial neural network(FLANN) using some learning rules such as back propagation (BP) algorithm. They offer flexibility, adaptability and versatility, so that a variety of approaches may be used to meet a specific goal, depending upon the circumstances and the requirements of the design specifications. The primary aim of the present thesis is to provide a framework for the systematic design of adaptation laws for nonlinear system identification and channel equalization. While constructing an artificial neural network the designer is often faced with the problem of choosing a network of the right size for the task. The advantages of using a smaller neural network are cheaper cost of computation and better generalization ability. However, a network which is too small may never solve the problem, while a larger network may even have the advantage of a faster learning rate. Thus it makes sense to start with a large network and then reduce its size. For this reason a Genetic Algorithm (GA) based pruning strategy is reported. GA is based upon the process of natural selection and does not require error gradient statistics. As a consequence, a GA is able to find a global error minimum. Transmission bandwidth is one of the most precious resources in digital communication systems. Communication channels are usually modeled as band-limited linear finite impulse response (FIR) filters with low pass frequency response. When the amplitude and the envelope delay response are not constant within the bandwidth of the filter, the channel distorts the transmitted signal causing intersymbol interference (ISI). The addition of noise during propagation also degrades the quality of the received signal. All the signal processing methods used at the receiver's end to compensate the introduced channel distortion and recover the transmitted symbols are referred as channel equalization techniques.When the nonlinearity associated with the system or the channel is more the number of branches in FLANN increases even some cases give poor performance. To decrease the number of branches and increase the performance a two stage FLANN called cascaded FLANN (CFLANN) is proposed.This thesis presents a comprehensive study covering artificial neural network (ANN) implementation for nonlinear system identification and channel equalization. Three ANN structures, MLP, FLANN, CFLANN and their conventional gradient-descent training methods are extensively studied. Simulation results demonstrate that FLANN and CFLANN methods are directly applicable for a large class of nonlinear control systems and communication problems.
机译:在系统理论中,表征和识别是基本问题。当植物的行为完全未知时,可以使用某种模型对其进行表征,然后,可以使用一些学习的人工神经网络(例如多层感知器(MLP)或功能链接人工神经网络(FLANN))进行识别。规则,例如反向传播(BP)算法。它们提供了灵活性,适应性和多功能性,因此可以根据情况和设计规范的要求使用各种方法来满足特定的目标。本文的主要目的是为非线性系统识别和信道均衡的自适应律的系统设计提供一个框架。在构建人工神经网络时,设计人员经常面临选择适合任务大小的网络的问题。使用较小的神经网络的优点是更便宜的计算成本和更好的泛化能力。但是,太小的网络可能永远无法解决问题,而更大的网络甚至可能具有更快的学习速度的优势。因此,从大型网络开始,然后减小其大小是有意义的。因此,报告了一种基于遗传算法(GA)的修剪策略。 GA基于自然选择过程,不需要误差梯度统计。结果,GA能够找到全局误差最小值。传输带宽是数字通信系统中最宝贵的资源之一。通信信道通常被建模为具有低通频率响应的带限线性有限脉冲响应(FIR)滤波器。当幅度和包络延迟响应在滤波器的带宽内不恒定时,信道会使发射信号失真,从而导致符号间干扰(ISI)。传播过程中增加的噪声也会降低接收信号的质量。接收机端用来补偿引入的信道失真并恢复所传输符号的所有信号处理方法都称为信道均衡技术。当与系统或信道相关的非线性程度较大时,FLANN中的分支数量甚至会增加表现不佳。为了减少分支的数量并提高性能,提出了一种称为级联FLANN(CFLANN)的两级FLANN。本文提出了一个涵盖人工神经网络(ANN)实现的非线性系统识别和通道均衡的综合研究。对三种神经网络结构,MLP,FLANN,CFLANN及其常规的梯度下降训练方法进行了广泛的研究。仿真结果表明,FLANN和CFLANN方法可直接应用于大量的非线性控制系统和通信问题。

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    Sahoo Ajit Kumar;

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  • 年度 2007
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