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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气侵自动检测

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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:在南海勘探过程中,天然气流入频繁发生,对井控策略构成严重风险。传统的检测方法是对泥浆罐的泥浆录井进行分析,这种方法速度慢,而且气侵发生时间与气侵检测时间之间总是存在时滞。在这项工作中,提出了一种方法,允许使用人工智能和数据分析进行实时气体流入检测。为了开发该方法,收集了62口钻井208次井侵事件的泥浆测井(12个参数)。通过人工神经网络进行数据分析,建立了气侵预警系统模型。在此基础上,提出了一种利用泥浆测井进行实时气侵检测的综合方法。这是首次尝试利用录井和人工智能的数据分析进行实时气侵检测。该方法已成功地应用于南海气田,准确率高达95%。

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