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Automatic Gas Influxes Detection in Offshore Drilling Based on Machine Learning Technology

机译:基于机器学习技术的海上钻井自动气体涌入检测

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The gas influxes occur frequently during the exploration in the South China Sea, which can pose severe risks to well control strategies. The traditional detection method is to analyze the mud-log of mud tanks, which is slow and there is always a time-lag between the gas influxes occurrence time and the influxes detection time. In this work, a methodology is proposed that allows for real-time gas influxes detection using artificial intelligence and data analytics. To develop the methodology, mud-log (12 parameters) are collected for 208 influxes incidents for 62 drilled wells. Data analysis through artificial neural network is carried out to develop gas influxes warning system model. Then, a new comprehensive method using mud-log, is proposed for real-time gas influxes detection. This is one of the first attempts for real time gas influxes detection utilizing data analysis of mud logging and artificial intelligence. This methodology is successfully applied to gas field in South China Sea with accuracies up to 95% achieved.
机译:南海勘探期间,气体涌入频繁发生,这可能会对井控制策略构成严重风险。传统的检测方法是分析泥浆罐的泥块,这缓慢,气体涌入发生时间和涌入时间之间总是存在的时间滞后。在这项工作中,提出了一种方法,其允许使用人工智能和数据分析进行实时气体涌入检测。要开发方法,将收集Mud-Log(12个参数)为62次钻孔井208个涌入事件。通过人工神经网络进行数据分析,开发气体涌入警告系统模型。然后,提出了一种新的综合方法,用于实时气体涌入检测。这是利用泥浆测井和人工智能数据分析的实时气体涌入检测的第一次尝试之一。该方法成功地应用于南海的气田,可达95%的准确性。

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