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基于二进小波变换自适应Kalman滤波反褶积
引用本文:董恩清,刘贵忠,张宗平.基于二进小波变换自适应Kalman滤波反褶积[J].电子学报,2001,29(1):64-67.
作者姓名:董恩清  刘贵忠  张宗平
作者单位:西安交通大学电子与信息工程学院信息与通信工程系,西安 710049
基金项目:国家自然科学基金!(No .69872 0 30 ),陕西省自然科学基金!(No.98x0 8)
摘    要:本文提出了基于二进小波变换自适应Kalman滤波反褶积(AKFD)新方法.它抛弃了传统预测反褶积对信号平稳性的假设,克服了提高分辨率反而明显降低信噪比的矛盾,其较好地压缩反射波形,但噪声并没有明显提高,所以具有很好的抗噪性能.在小波域进行的AKFD压制假反射比在时间域AKFD好,此外,该方法具有对信号分频进行AKFD的特性,增强了Kalman滤波的自适应性,所以在小波域下的分辨率明显比在时域内高.同时,该方法克服了在时域内进行的AKFD抬升低频成份的缺陷.经大量的模型及实际资料处理表明该方法具有明显的效果.

关 键 词:二进小波变换  自适应Kalman滤波  反褶积  非平稳信号  信噪比  多分辨分析  
文章编号:0372-2112(2001)01-0064-04
收稿时间:1999-06-08

Adaptive Kalman Filtering Deconvolution Based on Dyadic Wavelet Transform
DONG En-qing,LIU Gui-zhong,ZHANG ZONG-PING.Adaptive Kalman Filtering Deconvolution Based on Dyadic Wavelet Transform[J].Acta Electronica Sinica,2001,29(1):64-67.
Authors:DONG En-qing  LIU Gui-zhong  ZHANG ZONG-PING
Affiliation:School of Electronic and Information Engineering,Xi'an Jiaotong University,Xi'an 710049,China
Abstract:A new approach of adaptive Kalman filtering deconvolution (AKFD) is developed based on dyadic wavelet transforms.The technique discards the assumption of signals stationarity in predictive deconvolution,and overcomes the problem of improving resolution at the price of substantially decreasing signal to noise rate (SNR).The technique can well compress the reflection waveforms,but the noises are not lifted in substance.So it has a better ability of noise tolerance.Suppressing false reflections in dyadic wavelet transform domain is better than by applying AKFD in the time domain.In addition,since the technique also has the characteristic of adaptive Kalman filtering in every band for a signal respectively,it enhances the adaptation of Kalman filtering,and the resolution being obvious higher than that in the time domain.At the same time,the technique also overcomes the drawback of increasing the low frequency component of AKFD in the time domain.A great deal of numerical models and real seismic data indicate that the technique has obvious effects.
Keywords:dyadic wavelet transform  adaptive Kalman filtering  deconvolution  nonstationary signal  signal  to  noise ratio  multiresolution analysis (MRA)
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