文章摘要
刘 军.基于改进混沌果蝇优化小波阈值法地震信号随机噪声压制[J].地质与勘探,2017,53(4):765-772
基于改进混沌果蝇优化小波阈值法地震信号随机噪声压制
Suppression of seismic random noise based on the improved wavelet threshold method using chaotic fruit fly optimization
投稿时间:2017-04-05  修订日期:2017-05-23
DOI:
中文关键词: 地震信号 随机噪声 小波阈值法 混沌果蝇
英文关键词: seismic signal, random noise, wavelet threshold method, chaotic fruit fly
基金项目:国家自然科学基金项目(编号51304050)、东华理工大学核技术应用教育部工程研究中心开放基金(编号HJSJYB2015-13、HJSJYB2016-9、HJSJYB2016-1)和江西省自然科学基金(编号20161BBE53006)联合资助。
作者单位E-mail
刘 军 东华理工大学核技术应用教育部工程研究中心江西南昌 东华理工大学地球物理与测控技术学院江西南昌 972443976@qq.com 
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中文摘要:
      由于野外采集地震资料往往带有较多的随机噪声,给资料解释造成困难。针对小波阈值去噪的阈值选取通常需要对信号进行先验估计,带有较强猜测性,阈值选取难以获得最优结果。本文提出基于改进混沌果蝇优化的小波阈值法,将基于广义交叉验证(GCV)函数设定为阈值选取目标函数,在混沌果蝇优化算法中引入调节系数实现对该目标函数的迭代寻优,在无先验信息前提下,获取最优小波阈值。通过将本文算法用于合成地震记录和实际地震记录进行去噪处理,并对比常用小波阈值去噪算法,证明了本文算法的有效性。
英文摘要:
      It is usually difficult to interpret the seismic data collected in the field bearing a large amount of random noise. Although the wavelet threshold method can be used to remove such noise, it requires prior estimation of the signal, which is largely conjecture, hard to obtain optimal results. In this article, we propose a wavelet threshold denoising method based on the improved chaotic fruit fly optimization. This method selects the objective function based on the generalized cross validation (GCV) as the threshold selection function. In order to optimize this objective function, adjustment coefficient is introduced into the optimization algorithm of the chaotic fruit fly. Then the optimal wavelet threshold can be obtained without any prior information. By denoising tests of synthetic seismic records and measured seismic data and comparing with the commonly-used wavelet threshold denoising method, the effectiveness of this new method is proved .
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