Automated Detection of Rig Events from Real-Time Surface Data Using Spectral Analysis and Machine Learning

T. S. Robinson, O. Revheim
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Abstract

The authors present a method for automated, high-fidelity detection of rig events characterized by complex temporal signals, such as downlinking, or wave-induced heave affecting floating rigs. These can adversely impact other systems utilizing relevant data streams, for example downlinking via mud pulse telemetry can interfere with detection of pressure changes that might indicate hole cleaning problems. Identifying these events using classification techniques applied to time-domain data is difficult, hence spectral (frequency domain) techniques, combined with Machine Learning (ML), were applied to solving this problem. Surface measurements from a variety of wells, fields, regions, service companies and operators were used to develop and validate the detection methods. Data was preprocessed using time-frequency analysis, and then input to discriminative classifiers to identify rig events of interest. For downlinking state detection, high recall and precision scores (both >93%) were achieved on independent holdout well data, and thus false positive rates were low. Successful detection was demonstrated on wells separate from the training data, hence the method is expected to generalize to new well operations. The detection method enhances situational awareness, and can actively support other software in improved automated decision-making by providing operational context in real-time, such as suppression of false warnings from monitoring pressure or modelled ECD for detecting signs of poor hole cleaning. These techniques are not limited to downlinking or heave detection, and can be applied more generally to scenarios with complex periodic signals.
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利用光谱分析和机器学习从实时地表数据中自动检测钻机事件
作者提出了一种自动化、高保真检测以复杂时间信号为特征的钻机事件的方法,如下行或影响浮式钻机的波浪引起的起伏。这可能会对其他利用相关数据流的系统产生不利影响,例如,通过泥浆脉冲遥测进行下行连接可能会干扰压力变化的检测,而压力变化可能表明井眼清洁存在问题。使用应用于时域数据的分类技术识别这些事件是困难的,因此频谱(频域)技术与机器学习(ML)相结合,被应用于解决这个问题。来自不同井、油田、地区、服务公司和运营商的地面测量数据被用于开发和验证检测方法。使用时频分析对数据进行预处理,然后输入判别分类器以识别感兴趣的钻机事件。对于下行状态检测,在独立的holdout井数据上获得了较高的查全率和查准率(均为93%),因此假阳性率很低。在与训练数据分离的井中成功地进行了检测,因此该方法有望推广到新井作业中。该检测方法增强了态势感知能力,并可以通过实时提供操作环境,积极支持其他软件改进自动化决策,例如抑制来自监测压力的错误警告,或模拟ECD,以检测井眼清洁不良的迹象。这些技术不仅限于下行链路或起伏检测,而且可以更广泛地应用于具有复杂周期信号的场景。
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