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基于消噪处理岩石声发射信号到达时间的识别方法
引用本文:鲜晓东,袁双,纪松林.基于消噪处理岩石声发射信号到达时间的识别方法[J].煤炭学报,2015,40(Z1):100-106.
作者姓名:鲜晓东  袁双  纪松林
作者单位:1.重庆大学 煤矿灾害动力学与控制国家重点实验室 重庆 400044;; 2.重庆大学 自动化学院 智能感知与控制实验室,重庆 400044
基金项目:中央高校基本科研业务费资助项目(CDJZR12248801); 长江学者和创新团队发展计划资助项目(IRT13043)
摘    要:在岩石声发射源时差定位的研究中,信号到达时间是重要信息。岩石声发射信号复杂,含有大量脉冲干扰与随机噪声,到达时间可读性差。针对以上问题,首先对原始声发射信号进行中值滤波和奇异值分解,消除部分脉冲干扰与随机噪声;其次进行小波包分解软阈值消噪,保留信号的主要成分,提高信噪比,增强到达时间的可读性;最后结合信号与噪声的时间序列模型(AutoRegressive,AR模型),第1次计算赤池信息量准则的K值(Akaike Information Criterion,AIC(K)值),获得到达时间窗口,在该窗口内第2次计算AIC(K)值,实现了到达时间的自动识别,避免了在整个信号序列下计算AR模型的阶数与次数。

关 键 词:声发射源  小波包分解  信号消噪  AR模型  到达时间  
收稿时间:2014-02-21

Method for identifying arrival time of acoustic emission signal based on de-noising processing
Abstract:Signal arrival time is vital information in the research of rock acoustic emission source TDOA location.Rock acoustic emission signal is complex and contains a lot of pulse interferences and random noises.Its arrival time is of poor readability.The method of traditional manual identification is time-consuming,for instance,the threshold method presents low accuracy,and AR-AIC method’s precision would decrease if SNR is low.To solve the problems mentioned above,firstly,part of the pulse interferences and random noises in original acoustic emission signals were eliminated by median filter and singular value decomposition.Secondly,the main components of the signals were retained to improve SNR and enhance the readability of arrival time by wavelet packet decomposition soft threshold de-noising.Finally,arrival time was identified in the gained time window through combining with the AR model of signals and noises by calculating AIC(K) twice.
Keywords:acoustic emission source  wavelet packet decomposition  signal de-noising processing  AR model  arrival time
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