Real time, accurate passive seismic event detection is a critical safety measure across a range of monitoring applications from reservoir stability to carbon storage to volcanic tremor detection. The most common detection procedure remains the Short-Term-Average to Long-Term-Average (STA/LTA) trigger despite its common pitfalls of requiring a signal-to-noise ratio greater than one and being highly sensitive to the trigger parameters. Whilst numerous alternatives have been proposed, they often are tailored to a specific monitoring setting and therefore cannot be globally applied, or they are too computationally expensive therefore cannot be run real time. This work introduces a deep learning approach to event detection that is an alternative to the STA/LTA trigger. A bi-directional, long-short-term memory, neural network is trained solely on synthetic traces. Evaluated on synthetic and field data, the neural network approach significantly outperforms the STA/LTA trigger both on the number of correctly detected arrivals as well as on reducing the number of falsely detected events. Its real time applicability is proven with 600 traces processed in real time on a single processing unit.
翻译:准确被动地震事件探测是一系列监测应用的关键安全措施,从储油层稳定到碳储存到火山震探测,最常用的探测程序仍然是短期到长期变化(STA/LTA)的短期常识触发程序,尽管其常见的陷阱是要求信号对噪音比率大于一个信号对音的比率,对触发参数高度敏感。虽然提出了许多替代方法,但它们往往适合特定的监测环境,因此无法在全球应用,或者它们计算太昂贵,因此无法实时运行。这项工作为事件探测引入了一种深层次的学习方法,这是STA/LTA触发器的一种替代办法。双向、长期短期内存、神经网络只接受合成痕迹的培训。根据合成数据和实地数据评估,神经网络方法大大超过STA/LTA触发器的正确抵达次数以及减少错误检测事件的数量。其实际适用性得到证明,在单个处理单位实时处理了600个痕迹。