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首页> 外文期刊>Journal of Petroleum Engineering >Knowledge Discovery for Classification of Three-Phase Vertical Flow Patterns of Heavy Oil from Pressure Drop and Flow Rate Data
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Knowledge Discovery for Classification of Three-Phase Vertical Flow Patterns of Heavy Oil from Pressure Drop and Flow Rate Data

机译:从压降和流量数据中发现重油三相垂直流型的知识发现

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This paper focuses on the use of artificial intelligence (AI) techniques to identify flow patterns acquired and recorded from experimental data of vertical upward three-phase pipe flow of heavy oil, air, and water at several different combinations, in which water is injected to work as the continuous phase (water-assisted flow). We investigate the use of data mining algorithms with rule and tree methods for classifying real data generated by a laboratory scale apparatus. The data presented in this paper represent different heavy oil flow conditions in a real production pipe.
机译:本文着重于使用人工智能(AI)技术来识别从重油,空气和水以几种不同组合注入水的垂直向上三相管道流动的实验数据中获得并记录的流动模式。作为连续相(水辅助流)工作。我们研究将数据挖掘算法与规则和树方法结合使用,以对实验室规模的仪器生成的真实数据进行分类。本文提供的数据代表实际生产管道中不同的重油流动状况。

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