Adaptive seismic noise reduction using Wiener filter

Sesar Prabu Dwi Sriyanto
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引用次数: 1

Abstract

Seismic noise disrupts the earthquake observation system due to the frequency and amplitude of seismic noise similar to the earthquake signal. The filter process is one of the methods that can be used to reduce seismic noise. In this study, the Wiener filter algorithm was designed with the Decision-Directed method for Apriori SNR estimation. This filter was chosen because it is adaptive, so it can adjust to environmental conditions without requiring manual parameter settings. The data used are earthquake signals that occur in the Palu area, Central Sulawesi, which are recorded on PKA29 temporary seismic station from February 3 to April 28, 2015. After each signal data has been filtered, then it is evaluated by calculating SNR differences before and after filtering, the signal's dominant frequency, and the cross-correlation of the signal before and after filtering. As a result, the Wiener filter is able to reduce the noise content in earthquake signals according to noisy frequencies before earthquake signals. The impact is that SNR has increased with an average of 8.056 dB. In addition, this filter is also able to maintain the shape of earthquake signals. This is indicated by the normalization value of the cross-correlation between signals before and after the filter which ranges from 0.703 to 1.00.
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基于维纳滤波器的自适应地震降噪
由于地震噪声的频率和振幅与地震信号相似,地震噪声干扰了地震观测系统。滤波过程是可以用来降低地震噪声的方法之一。在本研究中,采用决策导向方法设计了用于Apriori信噪比估计的维纳滤波器算法。之所以选择此过滤器,是因为它具有自适应性,因此可以根据环境条件进行调整,而无需手动设置参数。使用的数据是2015年2月3日至4月28日PKA29临时地震台记录的中苏拉威西省巴鲁地区的地震信号。在对每个信号数据进行滤波后,通过计算滤波前后的SNR差、信号的主频以及滤波前后信号的互相关来对其进行评估。因此,维纳滤波器能够根据地震信号之前的噪声频率来降低地震信号中的噪声含量。影响是SNR平均增加了8.056dB。此外,这种滤波器还能够保持地震信号的形状。这由滤波器之前和之后的信号之间的互相关的归一化值表示,该归一化值的范围从0.703到1.00。
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