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Flow regimes identification and liquid-holdup prediction in horizontal multiphase flow based on neuro-fuzzy inference systems

机译:基于神经模糊推理系统的水平多相流流态识别与持液预测

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Numerous techniques have been used to identify flow regimes and liquid holdup in horizontal multiphase flow, but often neither perform well nor very accurate. Recently, neuro-fuzzy inference systems learning scheme have been gaining popularity in its capability for solving both prediction and classification problems. It is a hybrid intelligent systems scheme that is able to forecast an output in the uncertainty situations. This paper investigates the capabilities of neuro-fuzzy Type! in identifying flow regimes and forecasting liquid holdup in horizontal multiphase flow. The performance of neuro-fuzzy modeling scheme is implemented using different real-world industry databases. Comparative studies were carried out to compare neuro-fuzzy systems performance with the most popular existing approaches in identifying flow regimes and predict liquid holdup in horizontal multiphase flow. Results show that neuro-fuzzy is flexible, reliable, outperforms the existing techniques and show bright future capabilities in solving different oil and gas industry problems, namely, rock mechanics properties, water saturation, faccis classification, and distinct bioinformatics applications.
机译:已经使用多种技术来确定水平多相流中的流态和液体滞留率,但通常效果不佳或非常不准确。近来,神经模糊推理系统学习方案在解决预测和分类问题方面的能力已得到普及。它是一种混合智能系统方案,能够在不确定情况下预测输出。本文研究了神经模糊类型的能力!确定流态并预测水平多相流中的持液量。神经模糊建模方案的性能是使用不同的实际行业数据库实现的。进行了比较研究,以将神经模糊系统的性能与最流行的现有方法进行比较,以识别流态并预测水平多相流中的液体滞留量。结果表明,神经模糊技术具有灵活性,可靠性,性能优于现有技术,并且在解决石油和天然气行业的各种问题方面具有广阔的前景,这些问题包括岩石力学性质,水饱和度,faccis分类以及独特的生物信息学应用。

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