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Application of a New Wavelet Threshold Method in Unconventional Oil and Gas Reservoir Seismic Data Denoising

机译:新的小波阈值法在非常规油气藏地震数据去噪中的应用

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Seismic data processing is an important aspect to improve the signal to noise ratio. The main work of this paper is to combine the characteristics of seismic data, using wavelet transform method, to eliminate and control such random noise, aiming to improve the signal to noise ratio and the technical methods used in large data systems, so that there can be better promotion and application. In recent years, prestack data denoising of all-digital three-dimensional seismic data is the key to data processing. Contrapose the characteristics of all-digital three-dimensional seismic data, and, on the basis of previous studies, a new threshold function is proposed. Comparing between conventional hard threshold and soft threshold, this function not only is easy to compute, but also has excellent mathematical properties and a clear physical meaning. The simulation results proved that this method can well remove the random noise. Using this threshold function in actual seismic processing of unconventional lithologic gas reservoir with low porosity, low permeability, low abundance, and strong heterogeneity, the results show that the denoising method can availably improve seismic processing effects and enhance the signal to noise ratio (SNR).
机译:地震数据处理是提高信噪比的重要方面。本文的主要工作是结合地震数据的特征,采用小波变换的方法,消除和控制这种随机噪声,以提高信噪比和大数据系统中使用的技术方法,从而可以得到更好的推广和应用。近年来,全数字三维地震数据的叠前数据降噪是数据处理的关键。对比全数字三维地震数据的特点,在以往研究的基础上,提出了一种新的阈值函数。与传统的硬阈值和软阈值相比,该函数不仅易于计算,而且具有出色的数学性能和明确的物理含义。仿真结果表明,该方法可以很好地消除随机噪声。利用该阈值函数对低孔隙度,低渗透率,低丰度,非均质性强的非常规岩性气藏进行实际地震处理,结果表明,该去噪方法可以有效改善地震处理效果,提高信噪比(SNR)。 。

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