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首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >Real-time diagnosis and alarm of down-hole incidents in the shale-gas well fracturing process
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Real-time diagnosis and alarm of down-hole incidents in the shale-gas well fracturing process

机译:页岩气井压裂过程中的实时诊断和颌洞事件的报警

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摘要

Detecting down-hole incidents in the shale-gas well fracturing process plays an important role in ensuring that the fracturing operations are carried out smoothly. This paper proposes a method to monitor down-hole incidents by extracting the qualitative trend of process variables (QTPV) using qualitative trend analysis. This is based on the consideration that QTPV is similar at different magnitudes of down-hole incidents and that deviations from the normal pattern may indicate a possible incident. Based on this, this paper presents a real-time diagnosis and alarm method of down-hole incidents using a multi-class support vector machine (MCSVM) model for qualitative trend classification in real-time. Compared with the traditional modelling process in which process data is directly used as the input item to develop the MCSVM classifier, the proposed method can achieve higher global accuracy, as well as lower false and missing alarm rates, even with limited incident cases. Moreover, successful real-time diagnosis and alarm of down-hole incidents (cracks forming in the strata, channelling near the wellbore area, and sand plugs) are demonstrated. The results suggest that the presented method is a reasonable starting point for monitoring down-hole incidents during the shale-gas well fracturing process. This approach can be integrated into a real-time monitoring and alarm device for field application during fracturing operations. (C) 2018 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:检测页岩气井压裂过程中的下孔事件在确保平稳地进行压裂操作时起着重要作用。本文提出了一种通过使用定性趋势分析提取过程变量(QTPV)的定性趋势来监测下孔事件的方法。这是基于QTPV在不同的下孔事件中的不同幅度类似的考虑,并且与正常模式的偏差可能表示可能的事件。基于此,本文使用多级支持向量机(MCSVM)模型实时使用多级支持向量机(MCSVM)模型实时诊断和警报方法。与传统建模过程相比,该过程数据被直接用作开发MCSVM分类器的输入项,所提出的方法可以实现更高的全球精度,以及较低的错误和丢失的报警速率,即使有有限的事件情况。此外,证实了井下事件的成功实时诊断和报警(在地层中形成的裂缝,在井筒区域附近沟通,以及砂塞)。结果表明,所提出的方法是在页岩气井压裂过程中监测下孔事故的合理起点。这种方法可以集成到压裂操作期间用于现场应用的实时监控设备。 (c)2018化学工程师机构。 elsevier b.v出版。保留所有权利。

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