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首页> 外文期刊>Pure and Applied Geophysics >Passive (Micro-) Seismic Event Detection by Identifying Embedded “Event” Anomalies Within Statistically Describable Background Noise
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Passive (Micro-) Seismic Event Detection by Identifying Embedded “Event” Anomalies Within Statistically Describable Background Noise

机译:通过识别统计上可描述的背景噪声内的嵌入式“事件”异常来进行被动(微)地震事件检测

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摘要

Among engineers there is considerable interest in the real-time identification of “events” within time series data with a low signal to noise ratio. This is especially true for acoustic emission analysis, which is utilized to assess the integrity and safety of many structures and is also applied in the field of passive seismic monitoring (PSM). Here an array of seismic receivers are used to acquire acoustic signals to monitor locations where seismic activity is expected: underground excavations, deep open pits and quarries, reservoirs into which fluids are injected or from which fluids are produced, permeable subsurface formations, or sites of large underground explosions. The most important element of PSM is event detection: the monitoring of seismic acoustic emissions is a continuous, real-time process which typically runs 24 h a day, 7 days a week, and therefore a PSM system with poor event detection can easily acquire terabytes of useless data as it does not identify crucial acoustic events. This paper outlines a new algorithm developed for this application, the so-called SEED™ (Signal Enhancement and Event Detection) algorithm. The SEED™ algorithm uses real-time Bayesian recursive estimation digital filtering techniques for PSM signal enhancement and event detection.
机译:工程师对实时识别具有低信噪比的时间序列数据中的“事件”非常感兴趣。对于声发射分析而言尤其如此,该声发射分析用于评估许多结构的完整性和安全性,并且还应用于被动地震监测(PSM)领域。在这里,一系列的地震接收器用于获取声波信号,以监测预期发生地震活动的位置:地下开挖,深空洞和采石场,向其中注入流体或从中产生流体的储层,可渗透的地下地层或大型地下爆炸。 PSM的最重要元素是事件检测:地震声发射的监视是一个连续的实时过程,通常每周7天,每天24个小时运行,因此事件检测能力较差的PSM系统可以轻松获取TB级数据。无用的数据,因为它不能识别关键的声音事件。本文概述了为此应用开发的一种新算法,即所谓的SEED™(信号增强和事件检测)算法。 SEED™算法将实时贝叶斯递归估计数字滤波技术用于PSM信号增强和事件检测。

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