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Data analytics for oil sands subcool prediction - a comparative study of machine learning algorithms

机译:油砂亚电池预测数据分析 - 机器学习算法的比较研究

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Steam Assisted Gravity Drainage (SAGD) is an efficient and widely used technology to extract heavy oil from a reservoir. The accurate prediction of subcool plays a critical role in determining the economic performance of SAGD operations since it influences oil production and operational safety. This work focuses on developing a subcool model based on industrial datasets using deep learning and several other widely-used machine learning methods. Furthermore, this work compares and discusses the out-of-sample performance of different machine learning algorithms using industrial datasets. In addition, we also show that care has to be taken when using machine learning algorithms to solve engineering problems. Data quality and a priori process knowledge play a role in their performance.
机译:蒸汽辅助重力排水(SAGD)是一种有效且广泛使用的技术,用于从水库中提取重油。由于它影响石油生产和运营安全性,即在确定SAGD行动的经济性能方面,Subcool的准确预测起着关键作用。这项工作侧重于使用深度学习和其他几种广泛使用的机器学习方法的基于工业数据集的Subcool模型。此外,这项工作比较和讨论了使用工业数据集的不同机器学习算法的样本性能。此外,我们还表明,使用机器学习算法解决工程问题时必须进行护理。数据质量和先验过程知识在其性能中发挥作用。

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