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Data driven methodology for model selection in flow pattern prediction

机译:数据流预测中模型选择的数据驱动方法

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摘要

The determination of multiphase flow parameters such as flow pattern, pressure drop and liquid holdup, is a very challenging and valuable problem in chemical, oil and gas industries, especially during transportation. There are two main approaches to solve this problem in literature: data based algorithms and mechanistic models. Although data based methods may achieve better prediction accuracy, they fail to explain the two-phase characteristics (i.e. pressure gradient, holdup, gas and liquid local velocities, etc.). Recently, many approaches have been made for establishing a unified mechanistic model for steady-state two-phase flow to predict accurately the mentioned properties. This paper proposes a novel data-driven methodology for selecting closure relationships from the models included in the unified model. A decision tree based model is built based on a data driven methodology developed from a 27670 points data set and later tested for flow pattern prediction in a set made of 9224 observations. The closure relationship selection model achieved high accuracy in classifying flow regimes for a wide range of two-phase flow conditions. Intermittent flow registering the highest accuracy (86.32%) and annular flow the lowest (49.11%). The results show that less than 10% of global accuracy is lost compared to direct data based algorithms, which is explained by the worse performance presented for atypical values and zones close to boundaries between flow patterns.
机译:在化工,石油和天然气工业中,尤其是在运输过程中,确定多相流参数(例如流型,压降和液体滞留率)是一个非常具有挑战性和有价值的问题。在文献中,有两种主要方法可以解决此问题:基于数据的算法和机械模型。尽管基于数据的方法可以实现更好的预测精度,但它们无法解释两相特征(即压力梯度,滞留率,气体和液体局部速度等)。最近,已经采取了许多方法来建立稳态两相流的统一力学模型,以准确地预测所提到的特性。本文提出了一种新的数据驱动方法,用于从统一模型中包括的模型中选择闭合关系。基于决策树的模型是基于从27670个点的数据集开发的数据驱动方法构建的,随后在由9224个观测值组成的集合中测试了流模式预测。闭合关系选择模型在对广泛的两相流条件进行流态分类时实现了高精度。间歇流量记录的准确性最高(86.32%),而环形流量记录的最低准确性(49.11%)。结果表明,与基于直接数据的算法相比,丢失了不到10%的全局精度,这可以用非典型值和接近流型边界的区域的较差性能来解释。

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