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Application of Kalman Filtering Techniques for Microseismic Event Detection

机译:卡尔曼滤波技术在微震事件检测中的应用

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Microseismic monitoring systems are generally installed in areas of induced seismicity caused by human activity. Induced seismicity results from changes in the state of stress which may occur as a result of excavation within the rock mass in mining (i.e., rockbursts), and changes in hydrostatic pressures and rock temperatures (e.g.,. during fluid injection or extraction) in oil exploitation, dam construction of fluid disposal. Microseismic monitoring systems determine event locations and important source parameters such as attenuation, seismic moment, source radius, static stress drop, peak particle velocity and seismic energy. An essential part of the operation of a microseismic monitoring system is the reliable detection of microseismic events. In the absence of reliable, automated picking techniques, operators rely upon manual picking. This is time-consuming, costly and, in the presence of background noise, very prone to error. The techniques described in this paper not only permit the reliable identification of events in cluttered signal environments they have also enabled the authors to develop reliable automated event picking procedures. This opens they way to use microseismic monitoring as a cost-effective production/operations procedure. It has been the experience of the authors that in certain noisy environments, the seismic monitoring system may trigger on and subsequently acquire substantial quantities of erroneous data, due to the high energy content of the ambient noise. Digital filtering techniques need to be applied on the microseismic data so that the ambient noise is removed and event detection simplified. The monitoring of seismic acoustic emissions is a continuous, real-time process and it is desirable to implement digital filters which can also be designed in the time domain and in real-time such as the Kalman Filter. This paper presents a real-time Kalman Filter which removes the statistically describable background noise from the recorded seismic traces.
机译:微地震监测系统通常安装在由人类活动引起的地震诱发区域中。感应地震活动是由于应力状态的变化而产生的,应力状态的变化可能是由于采矿过程中岩体内部的开挖(例如,岩爆)以及油中静水压力和岩石温度的变化(例如,在注入或提取过程中)引起的开采,大坝建设中的流体处理。微地震监测系统确定事件的位置和重要的震源参数,例如衰减,地震矩,震源半径,静态应力降,峰值粒子速度和地震能量。微地震监测系统操作的重要部分是对微地震事件的可靠检测。在缺乏可靠的自动拣选技术的情况下,操作员依靠人工拣选。这是费时的,昂贵的,并且在存在背景噪声的情况下非常容易出错。本文中描述的技术不仅允许在杂乱的信号环境中可靠地识别事件,还使作者能够开发可靠的自动化事件选择程序。这为他们开辟了一种途径,可以将微震监测用作具有成本效益的生产/运营程序。作者的经验是,由于周围噪声的高能量含量,在某些嘈杂的环境中,地震监测系统可能会触发并随后获取大量错误数据。需要将数字滤波技术应用于微震数据,以便消除环境噪声并简化事件检测。地震声发射的监视是一个连续的实时过程,并且希望实现也可以在时域和实时中设计的数字滤波器,例如卡尔曼滤波器。本文提出了一种实时卡尔曼滤波器,可从记录的地震迹线中去除统计上可描述的背景噪声。

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