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首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >Field data analysis and risk assessment of gas kick during industrial deepwater drilling process based on supervised learning algorithm
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Field data analysis and risk assessment of gas kick during industrial deepwater drilling process based on supervised learning algorithm

机译:基于监督学习算法的工业深水钻井过程中天然气踢的现场数据分析与风险评估

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During industrial offshore deep-water drilling process, gas kick event occurs frequently due to extremely narrow Mud Weight (MW) window (minimum 0.01sg) and negligible safety margins for the well control purposes. Further, traditional gas kick detection methods in such environments have significant time-lag and can often lead to severe well control issues, and occasionally to well blowouts or borehole abandonment. In this study, firstly, the raw field data is processed through data collection, data cleaning, feature scaling, outlier detection, data labeling and dataset splitting. Additionally, a novel data labeling criterion for gas kick risks is proposed where five kick risks (Indicated by different colors in this study) are defined based on three key indicators: differential flow out (DFO), kick gain volume (Vol), and kick duration time (Time). Kick risk status represents one of the following cases: Case 0 - No indicators are activated (Green), Case 1 - Multi-drilling parameters deviation or DFO is activated (Orange), Case 2 - DFO and Vol are simultaneously activated (Light Red), Case 3 - DFO and Time are simultaneously activated (Light Red), Case 4 - DFO, Vol and Time alarms are simultaneously activated (Dark Red). Then, a novel data mining method using Long Short-Term Memory (LSTM) Recurrent Neural Network (RNN) is presented for early detection of gas kick events by analyzing time series data from field drilling process. The network parameters such as number of hidden layers and number of neurons are initialized to build the LSTM network. The learned LSTM model is evaluated using the testing set, and the best LSTM model (six (6)-layers eighty (80)-nodes (6 L*80 N)) is optimally selected and deployed. The accuracy of deployed LSTM model is 87 % in the testing dataset, which is reliable enough to identify the kick fault during the deep-water drilling field operation. Lastly, the LSTM model detected the gas kick events earlier than the "Tank Volume" detection method in several representative case studies to conclude that the application of LSTM model can potentially improve well control safety in the deep-water wells with narrow MW windows. (C) 2020 Published by Elsevier B.V. on behalf of Institution of Chemical Engineers.
机译:在工业海上深水钻井过程中,由于泥浆重量(MW)窗口极窄(最小0.01sg)和井控安全余量可忽略不计,气体井涌事件频繁发生。此外,在这种环境中,传统的气体井涌检测方法具有明显的时间滞后性,通常会导致严重的井控问题,偶尔还会导致井喷或井眼废弃。在本研究中,首先,通过数据收集、数据清理、特征缩放、异常检测、数据标记和数据集分割对原始现场数据进行处理。此外,还提出了一种新的气体井涌风险数据标记标准,其中基于三个关键指标定义了五种井涌风险(本研究中用不同的颜色表示):差异流出(DFO)、井涌增加量(Vol)和井涌持续时间(time)。井涌风险状态代表以下情况之一:情况0-无指示器激活(绿色),情况1-多钻井参数偏差或DFO激活(橙色),情况2-DFO和Vol同时激活(浅红色),情况3-DFO和时间同时激活(浅红色),情况4-DFO、Vol和时间警报同时激活(深红色)。然后,通过分析钻井过程的时间序列数据,提出了一种基于长短时记忆(LSTM)递归神经网络(RNN)的数据挖掘方法,用于早期检测井涌事件。初始化网络参数,如隐层数和神经元数,以构建LSTM网络。使用测试集评估学习的LSTM模型,并优化选择和部署最佳LSTM模型(六(6)层八十(80)个节点(6L*80N))。部署的LSTM模型在测试数据集中的准确率为87%,足以可靠地识别深水钻井现场作业中的井涌断层。最后,在几个具有代表性的案例研究中,LSTM模型比“储罐容积”检测方法更早地检测到气体井涌事件,从而得出结论,LSTM模型的应用可能会提高窄MW窗口深水井的井控安全性。(C) 2020年由爱思唯尔B.V.代表化学工程师学会出版。

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