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Prediction of Casing Damage in Unconsolidated Sandstone Reservoirs Using Machine Learning Algorithms

机译:基于机器学习算法的疏松砂岩油藏套管损伤预测

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Despite numerous studies in the subject matter, there is no mature casing damage prediction method based on historical casing damage data in the oil and water well production stage for unconsolidated sandstone reservoirs. We use two popular algorithms to establish a prediction model for the sand-sand casing damage area, eXtreme Gradient Boosted Trees (XGBoost) and Light Gradient Boosted Trees (LGBM). According to data analysis and casing damage mechanism, we selected 19 casing damage factors for oil wells and 18 for water injection wells. Geological, reservoir, completion and historical production/operation data for 653 production layers and 212 injection layers in Gangxi Oilfield are collected to form dataset. Among them, the casings of 91 production layers and 22 injection layers were damaged. The dataset is split into 80% training and 20% holdout datasets. A training dataset is split into 10-fold cross validation. Two machine learning algorithms are evaluated predicting casing damage and their performance is compared. For production wells, the prediction accuracy of LGBM model is higher, up to 95.4%. For injection wells, the prediction accuracy of LGBM model is higher, up to 100%. Therefore, we can use more accurate model to predict casing damage in unconsolidated sandstone reservoirs, and determine main controllable factors of casing damage in risk wells, so as to provide technical guidance for technicians to take preventive measures.
机译:尽管在该主题上进行了大量研究,但尚无基于未固结砂岩油藏在油水井生产阶段的套管历史历史数据的成熟套管破坏预测方法。我们使用两种流行的算法为沙砂套管破坏区域建立预测模型:极限梯度增强树(XGBoost)和轻度梯度增强树(LGBM)。根据数据分析和套管损坏机理,我们选择了油井的19个套管损坏因子和注水井的18个套管损坏因子。收集赣西油田653个生产层和212个注入层的地质,储层,完井和历史生产/运营数据,形成数据集。其中91个生产层和22个注入层的套管损坏。该数据集分为80%训练数据集和20%保持数据集。训练数据集分为10倍交叉验证。对两种机器学习算法进行了评估,以预测套管损坏,并比较了它们的性能。对于生产井,LGBM模型的预测精度更高,高达95.4%。对于注入井,LGBM模型的预测精度较高,最高可达100%。因此,我们可以使用更准确的模型来预测未固结砂岩油藏的套管损坏,并确定风险井中套管损坏的主要可控因素,从而为技术人员采取预防措施提供技术指导。

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