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首页> 外文期刊>Computational geosciences >Application of machine learning to characterize gas hydrate reservoirs in Mackenzie Delta (Canada) and on the Alaska north slope (USA)
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Application of machine learning to characterize gas hydrate reservoirs in Mackenzie Delta (Canada) and on the Alaska north slope (USA)

机译:机器学习在麦肯齐三角洲(加拿大)和阿拉斯加北坡(美国)天然气水合物储层表征中的应用

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Abstract Artificial neural network-trained models were used to predict gas hydrate saturation distributions in permafrost-associated deposits in the Eileen Gas Hydrate Trend on the Alaska North Slope (ANS), USA and at the Mallik research site in the Beaufort-Mackenzie Basin, Northwest Territories, Canada. The database of Logging-While-Drilling (LWD) and wireline logs collected at five wells (Mount Elbert, I?nik Sikumi, and Kuparuk 7–11–12 wells at ANS, plus 2L-38 and 5L-38 wells at the Mallik research site) includes more than 10,000 depth points, which were used for training, validation, and testing the machine learning (ML) models. Data used in training the ML models include the well logs of density, porosity, electrical resistivity, gamma radiation, and acoustic wave velocity measurements. Combinations of two or three out of these five well logs were found to reliably predict the gas hydrate saturation with accuracy varying between 80 and 90 when compared to the gas hydrate saturations derived from Nuclear Magnetic Resonance (NMR)-based technique. The ML models trained on data from three ANS wells achieved high fidelity predictions of gas hydrate saturation at the Mallik site. The results obtained in this study indicate that ML models trained on data from one geological basin can successfully predict key reservoir parameters for permafrost-associated gas hydrate accumulations within another basin. A generalized approach for selecting a well log combination that can improve model accuracy is discussed. Overall, the study outcome supports earlier work demonstrating that ML models trained on non-NMR well logs are a viable alternative to physics-driven methods for predicting gas hydrate saturations.
机译:摘要 利用人工神经网络训练的模型预测了美国阿拉斯加北坡艾琳天然气水合物趋势和加拿大西北地区Beaufort-Mackenzie盆地Mallik研究地点的多年冻土相关矿床的天然气水合物饱和度分布。在五口井(ANS 的 Mount Elbert、I?nik Sikumi 和 Kuparuk 7-11-12 井,以及 Mallik 研究地点的 2L-38 和 5L-38 井)收集的随钻测井 (LWD) 和电缆测井数据库包括 10,000 多个深度点,用于训练、验证和测试机器学习 (ML) 模型。用于训练 ML 模型的数据包括密度、孔隙度、电阻率、伽马辐射和声波速度测量的井日志。与基于核磁共振(NMR)的技术得出的天然气水合物饱和度相比,这五个测井仪中的两个或三个的组合可以可靠地预测天然气水合物饱和度,准确度在80%至90%之间。基于三口ANS井的数据训练的ML模型实现了对Mallik现场天然气水合物饱和度的高保真预测。本研究的结果表明,基于一个地质盆地数据训练的ML模型可以成功预测另一个盆地内永久冻土相关天然气水合物成藏的关键储层参数。讨论了一种选择可以提高模型精度的测井组合的通用方法。总体而言,研究结果支持了早期的工作,表明在非NMR测井仪上训练的ML模型是预测天然气水合物饱和度的物理驱动方法的可行替代方案。

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