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On the Comparison of Capacitance-Based Tomography Data Normalization Methods for Multilayer Perceptron Recognition of Gas-Oil Flow Patterns

机译:基于电容层析成像数据归一化方法在气油流型多层感知器识别中的比较

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Normalization is important for Electrical Capacitance Tomography (ECT) data due to the very small capacitance values obtained either from the physical or simulated ECT system.? Thus far, there are two commonly used normalization methods for ECT, but their suitability has not been investigated.? This paper presents the work on comparing the performances of two Multilayer Perceptron (MLP) neural networks; one trained based on ECT data normalized using the conventional equation and the other normalized using the improved equation, to recognize gas-oil flow patterns.? The correct pattern recognition percentages for both MLPs were calculated and compared.? The results showed that the MLP trained with the conventional ECT normalization equation out-performed the ones trained with the improved normalization data for the task of gas-oil pattern recognition.
机译:由于从物理或模拟ECT系统获得的电容值非常小,因此归一化对于电容层析成像(ECT)数据非常重要。到目前为止,有两种常用的ECT归一化方法,但尚未研究其适用性。本文介绍了比较两个多层感知器(MLP)神经网络的性能的工作。一个基于使用常规公式归一化的ECT数据进行训练,另一个基于使用改进的公式归一化的数据进行训练,以识别出油气流动模式。计算并比较了两个MLP的正确模式识别百分比。结果表明,用常规ECT归一化方程训练的MLP优于用改进的归一化数据训练的MLP在汽油模式识别方面的任务。

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