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首页> 外文期刊>Geophysics: Journal of the Society of Exploration Geophysicists >Semiautomatic first-arrival picking of microseismic events by using the pixel-wise convolutional image segmentation method
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Semiautomatic first-arrival picking of microseismic events by using the pixel-wise convolutional image segmentation method

机译:使用像素 - 明智的卷积图像分割方法,半自动第一到达微震事件的挑选

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摘要

Microseismic imaging plays an important role in hydraulic fracture detection, and the first-arrival picking of microseismic events is the bedrock of microseismic imaging. Manual picking is the most reliable and also the most time-consuming method for the detection of the first arrival of microseismic events. Accurate and efficient first-arrival picking in a real noisy environment is a challenge for most of the automatic first-arrival picking methods. We have developed a novel workflow to automatically pick the first arrival of microseismics by using a state-of-the art pixel-wise convolutional image segmentation method. We first form the training data by randomly selecting part of the microseismic traces and manually pick the time index of the first arrivals. Next, we segment the selected traces into two parts according to the time index of manual picking and assign each part a label accordingly. Then, we build an encoder-decoder convolutional neural network architecture and use the training data and training label as the input. Next, we obtain the trained network hierarchy by learning the segmented training data and labels. Finally, we predict the first arrivals of microseismic events by applying the trained network hierarchy to the rest of the microseismic traces. The synthetic and field data examples demonstrate that our method successfully identifies the first arrivals. The predicted first-arrival result obtained by using our method is superior to the result obtained by using the traditional method of short-term average and long-term average.
机译:微震成像在液压断裂检测中起着重要作用,微震事件的第一到来挑选是微震成像的基岩。手动拣选是最可靠的,也是检测微震事件的第一到来的最耗时的方法。在真正的嘈杂环境中准确和高效的初始到达挑选是大多数自动第一到来拣选方法的挑战。我们开发了一种新颖的工作流程,通过使用最先进的像素 - 明智的卷积图像分割方法自动选择微震器的第一到来。我们首先通过随机选择部分微震迹线来形成培训数据,并手动选择第一个到达的时间指数。接下来,我们根据手动拣选的时间索引将所选迹线部门分成两部分,并相应地分配每个部件标签。然后,我们构建编码器解码器卷积神经网络架构,并使用训练数据和训练标签作为输入。接下来,我们通过学习分段培训数据和标签来获得训练的网络层次结构。最后,我们通过将训练的网络层次结构应用于其余微震迹线来预测微震事件的第一个到达。合成和现场数据示例表明我们的方法成功地识别了第一个到达。通过使用我们的方法获得的预测的第一到达结果优于通过使用传统的短期平均和长期平均值获得的结果。

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