Kick Detection and Influx Size Estimation during Offshore Drilling Operations using Deep Learning

A. K. Fjetland, Jing Zhou, Darshana Abeyrathna, Jan Einar Gravdal
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引用次数: 18

Abstract

An uncontrolled or unobserved influx or kick during drilling has the potential to induce a well blowout, one of the most harmful incidences during drilling both in regards to economic and environmental cost. Since kicks during drilling are serious risks, it is important to improve kick and loss detection performance and capabilities and to develop automatic flux detection methodology. There are clear patterns during a influx incident. However, due to complex processes and sparse instrumentation it is difficult to predict the behaviour of kicks or losses based on sensor data combined with physical models alone. Emerging technologies within Deep Learning are however quite adapt at picking up on, and quantifying, subtle patterns in time series given enough data. In this paper, a new model is developed using Long Short-Term Memory (LSTM), a Recurrent Deep Neural Network, for kick detection and influx size estimation during drilling operations. The proposed detection methodology is based on simulated drilling dataand involves detecting and quantifying the influx of fluids between fractured formations and the well bore. The results show that the proposed methods are effective both to detect and estimate the influx size during drilling operations, so that corrective actions can be taken before any major problem occurs.
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基于深度学习的海上钻井作业井涌检测与井涌规模估计
钻井过程中不受控制或未被发现的井涌或井涌都有可能导致井喷,这是钻井过程中最具经济和环境成本的事故之一。由于钻井过程中的井涌是严重的风险,因此提高井涌和漏失检测性能和能力以及开发自动通量检测方法非常重要。大量涌入的事件有明显的规律。然而,由于复杂的过程和稀疏的仪器,很难根据传感器数据和物理模型单独预测井涌或井漏的行为。然而,深度学习中的新兴技术非常适合在给定足够数据的情况下,捕捉和量化时间序列中的微妙模式。本文利用长短期记忆(LSTM)——一种循环深度神经网络,开发了一种新的模型,用于钻井作业中的井涌检测和井涌规模估计。所提出的检测方法基于模拟钻井数据,包括检测和量化裂缝地层与井筒之间的流体流入。结果表明,该方法能够有效地检测和估计钻井过程中的流入规模,从而在任何重大问题发生之前采取纠正措施。
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