基于级联相关神经网络的智能自适应降噪

J. Dheeba, A. Padma
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引用次数: 9

摘要

提出了一种基于级联相关神经网络的自适应噪声消除算法。在该算法中,目标是通过识别可测量噪声源与相应不可测量干扰之间的非线性模型来滤除干扰分量。在许多情况下,线性模型表现出色。然而,线性模型在非线性现象发生的情况下表现不佳。因此需要非线性滤波方法。多年来,神经网络一直是智能控制的主导技术。级联相关神经网络算法具有强大的学习能力和自适应能力。凭借学习能力,神经网络可以适应不断变化的环境。系统采用双输入单输出级联神经网络,消除了混杂在测试信号中的随机噪声。采用不同噪声源和噪声通道动力学的仿真研究结果表明,采用所提出的技术可以取得优异的性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Adaptive Noise Cancellation using Cascaded Correlation Neural Networks
A novel adaptive noise cancellation algorithm using cascaded correlation neural networks is described. In the proposed algorithm the objective is to filter out an interference component by identifying the non-linear model between a measurable noise source and the corresponding immeasurable interference. In many situations a linear model performs outstandingly. However a linear model does not perform well for situations where nonlinear phenomena occur. Hence there is a need of nonlinear filtering approach. The neural networks have been a predominant technology for intelligent control for many years. The cascaded correlation neural network algorithm has the powerful capabilities of learning and adaptation. By virtue of the learning ability, neural networks can be adapted to constantly changing environments. Two inputs, single output cascaded neural networks are used to develop the system, which eliminates the random noise, which is mixed with the test signal. Results of simulation studies using different noise sources and noise passage dynamics show that superior performance can be achieved using the proposed techniques
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