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Analysis of instrument self-noise and microseismic event detection using power spectral density estimates

机译:使用功率谱密度估计分析仪器自噪声和微震事件检测

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Apart from the event magnitude, hypocentral distance, and background noise level, the instrument self-noise can also act as a major constraint for the detection of weak microseismic events in particular for deployments in quiet environments such as below 1.5-2km depths. Instrument self-noise levels that are comparable or above background noise levels may not only complicate detection of weak events at larger distances but also challenge methods such as seismic interferometry which aim at analysis of coherent features in the noise wavefields to reveal subsurface structure. In this article we use power spectral densities to estimate the instrument self-noise for a sample dataset and show how it could affect further analysis. We also suggest that the variations of the spectral powers in a time-frequency representation can be used as a new criterion for event detection and therefore propose a new event time picking algorithm. Compared to the common Short-time average and Long-time average (STA/LTA) method, our suggested technique requires easier parameter settings and detects small events with anomalous spectral powers with respect to an estimated background noise spectrum.
机译:除了活动幅度,斜视距离和背景噪声水平之外,仪器自噪声还可以作为检测弱微震事件的主要限制,特别是在静安静的环境中的部署,如低于1.5-2km深度。仪器自噪声水平可比较或高于背景噪声水平可以不仅使较大距离处的弱事件的检测,而且挑战诸如地震干涉测量的挑战方法,该方法旨在分析噪声波场中的相干特征来揭示地下结构。在本文中,我们使用功率谱密度来估计样品数据集的仪器自噪声,并显示如何影响进一步分析。我们还建议在时频表示中的光谱功率的变化可以用作事件检测的新标准,因此提出了一种新的事件时间拣选算法。与常见的短时间平均值和长时间平均值(STA / LTA)方法相比,我们的建议技术需要更轻松的参数设置,并检测相对于估计的背景噪声谱的异常光谱功率的小事件。

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