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An Efficient Neural-Network-Based Microseismic Monitoring Platform for Hydraulic Fracture on an Edge Computing Architecture

机译:基于边缘计算架构的基于神经网络的水力压裂微地震监测平台

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摘要

Microseismic monitoring is one of the most critical technologies for hydraulic fracturing in oil and gas production. To detect events in an accurate and efficient way, there are two major challenges. One challenge is how to achieve high accuracy due to a poor signal-to-noise ratio (SNR). The other one is concerned with real-time data transmission. Taking these challenges into consideration, an edge-computing-based platform, namely Edge-to-Center LearnReduce, is presented in this work. The platform consists of a data center with many edge components. At the data center, a neural network model combined with convolutional neural network (CNN) and long short-term memory (LSTM) is designed and this model is trained by using previously obtained data. Once the model is fully trained, it is sent to edge components for events detection and data reduction. At each edge component, a probabilistic inference is added to the neural network model to improve its accuracy. Finally, the reduced data is delivered to the data center. Based on experiment results, a high detection accuracy (over 96%) with less transmitted data (about 90%) was achieved by using the proposed approach on a microseismic monitoring system. These results show that the platform can simultaneously improve the accuracy and efficiency of microseismic monitoring.
机译:微地震监测是油气生产中水力压裂的最关键技术之一。为了以准确有效的方式检测事件,存在两个主要挑战。一个挑战是由于差的信噪比(SNR)如何实现高精度。另一个与实时数据传输有关。考虑到这些挑战,本文提出了一种基于边缘计算的平台,即边缘到中心的LearnReduce。该平台由具有许多边缘组件的数据中心组成。在数据中心,设计了结合卷积神经网络(CNN)和长短期记忆(LSTM)的神经网络模型,并使用先前获得的数据对该模型进行训练。对模型进行全面训练后,会将其发送到边缘组件以进行事件检测和数据缩减。在每个边缘组件处,将概率推断添加到神经网络模型以提高其准确性。最后,将减少的数据传递到数据中心。根据实验结果,通过在微地震监测系统上使用所提出的方法,可以实现较高的检测精度(超过96%)和较少的传输数据(约90%)。这些结果表明该平台可以同时提高微震监测的准确性和效率。

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