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Determination of multi-component flow process parameters based on electrical capacitance tomography data using artificial neural networksudud

机译:使用人工神经网络确定基于电容层析成像数据的多组分流动过程参数 ud UD

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摘要

Artificial neural networks have been used to investigate their capabilities at estimating key parameters for the characterisation of flow processes, based on electrical capacitance-sensed tomographic (ECT) data. The estimations of the parameters are done directly, without recourse to tomographic images. The parameters of interest include component height and interface orientation of two-component flows, and component fractions of two-component and three-component flows. Separate multi-layer perceptron networks were trained with patterns consisting of pairs of simulated ECT data and the corresponding component heights, interface orientations and component fractions. The networks were then tested with patterns consisting of unlearned simulated ECT data of various flows and, with real ECT data of gas-water flows. The neural systems provided estimations having mean absolute errors of less than 1% for oil and water heights and fractions; and less than 10° for interface orientations. When tested with real plant ECT data, the mean absolute errors were less than 4% for water height, less than 15° for gas-water interface orientation and less than 3% for water fraction, respectively. The results demonstrate the feasibility of the application of artificial neural networks for flow process parameter estimations based upon tomography data.
机译:人工神经网络已被用来研究其在基于电容感应层析成像(ECT)数据估算表征流动过程的关键参数方面的能力。参数的估计直接完成,而无需借助断层图像。感兴趣的参数包括两组分流的组分高度和界面取向,以及两组分和三组分流的组分分数。使用由成对的模拟ECT数据对以及相应的组件高度,界面方向和组件分数组成的模式对单独的多层感知器网络进行训练。然后,使用由各种流量的未经学习的模拟ECT数据和气-水流量的真实ECT数据组成的模式对网络进行测试。神经系统提供的估计值对油和水的高度和分数的平均绝对误差小于1%;界面方向小于10°。用真实的植物ECT数据进行测试时,水高度的平均绝对误差小于4%,气水界面方向的平均绝对误差小于15°,水分数的平均绝对误差分别小于3%。结果证明了将人工神经网络应用于基于层析成像数据的流动过程参数估计的可行性。

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