Article ID Journal Published Year Pages File Type
667232 International Journal of Multiphase Flow 2014 14 Pages PDF
Abstract

•Gas–liquid flow pattern identification using fuzzy evaluation of 3D ECT images.•Nonlinear electrical 3D capacitance tomography reconstruction algorithms are used.•A set of fuzzy-based features is calculated for flow regime classification.•Fuzzy logic inference can classify flow patterns with a very high accuracy.

From variety of industry-oriented imaging solutions the electrical capacitance tomography applied to the two-phase gas–liquid mixtures visualization and the phase distribution calculation is getting popular especially when flow key parameters are required. Industry demands particularly include efficient non-invasive automatic phase fraction calculation and flow structure identification in the vertical and horizontal pipelines. This can be solved by using non-deterministic fuzzy-logic based techniques for analysis of volumetric images. This paper presents a preliminary study on automated two-phase gas–liquid flow pattern identification based on a fuzzy evaluation of series of reconstructed 3D ECT volumetric images. The set of volume data is obtained by using nonlinear electrical capacitance tomography reconstruction algorithms. Finally a set of fuzzy-based features is calculated for flow substructure classification. As a result of this analysis obtained features will be used to classify given volumetric image into one of known flow regime structures.

Related Topics
Physical Sciences and Engineering Chemical Engineering Fluid Flow and Transfer Processes
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