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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Source separation for simultaneous towed-streamer marine acquisition - A compressed sensing approach
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Source separation for simultaneous towed-streamer marine acquisition - A compressed sensing approach

机译:同步拖缆海上采集的源分离-压缩传感方法

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Simultaneous marine acquisition is an economic way to sample seismic data and speed up acquisition, wherein single or multiple source vessels fire sources at near-simultaneous or slightly random times, resulting in overlapping shot records. The current paradigm for simultaneous towed-streamer marine acquisition incorporates "low variability" in source firing times, i.e., 0 <= 1 or 2 s because the sources and receivers are moving. This results in a low degree of randomness in simultaneous data, which is challenging to separate (into its constituent sources) using compressed-sensing-based separation techniques because randomization is key to successful recovery via compressed sensing. We have addressed the challenge of source separation for simultaneous towed-streamer acquisitions via two compressed-sensing-based approaches, i.e., sparsity promotion and rank minimization. We have evaluated the performance of the sparsity-promotion- and rank-minimization-based techniques by simulating two simultaneous towed-streamer acquisition scenarios, i.e., over/under and simultaneous long offset. A field data example from the Gulf of Suez for the over/under acquisition scenario was also developed. We observed that the proposed approaches gave good and comparable recovery qualities of the separated sources, but the rank-minimization technique outperformed the sparsity-promoting technique in terms of the computational time and memory. We also compared these two techniques with the normal-moveout-based median-filtering-type approach, which had comparable results.
机译:同步海上采集是一种采样地震数据并加快采集速度的经济方法,其中单源或多源船只在接近同时或稍微随机的时间发射源,从而导致炮弹记录重叠。当前的拖曳拖缆同时海上捕获的范例在源发射时间中包括“低可变性”,即0 <= 1或2 s,因为源和接收器正在移动。这导致同步数据的随机性较低,使用基于压缩传感的分离技术很难将其分离(分成其组成源),因为随机化是通过压缩传感成功恢复的关键。我们已经通过两种基于压缩感知的方法(即稀疏性提升和等级最小化)解决了同时拖曳拖缆采集的源头分离难题。我们通过模拟两个同时拖曳拖缆采集方案(即过度/不足和同时发生长偏移)来评估基于稀疏促进和等级最小化的技术的性能。还开发了来自苏伊士湾的现场数据示例,用于超量/不足量采集方案。我们观察到,所提出的方法可为分离的源提供良好且可比的恢复质量,但是在计算时间和内存方面,等级最小化技术优于稀疏性增强技术。我们还将这两种技术与基于法线偏移的中值滤波类型方法进行了比较,其结果具有可比性。

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