An adaptive electrical resistance tomography sensor with flow pattern recognition capability

来源期刊:中南大学学报(英文版)2019年第3期

论文作者:王湃 李阳博 汪梅 秦学斌 LIU Lang(刘浪)

文章页码:612 - 622

Key words:electrical resistance tomography; adaptive sensor; sparse representation; flow pattern identification

Abstract: The all traditional electrical resistance tomography (ERT) sensors have a static structure, which cannot satisfy the intelligent requirements for adaptive optimization to ERT sensors that is subject to flow pattern changes during the real-time detection of two-phase flow. In view of this problem, an adaptive ERT sensor with a dynamic structure is proposed. The electrodes of the ERT sensor are arranged in an array structure, the flow pattern recognition technique is introduced into the ERT sensor design and accordingly an ERT flow pattern recognition method based on signal sparsity is proposed. This method uses the sparse representation of the signal to express the sampling voltage of the ERT system as a sparse combination and find its sparse solution to achieve the classification of different flow patterns. With the introduction of flow identification information, the sensor has an intelligent function of adaptively and dynamically adapting the sensor structure according to the real-time flow pattern change. The experimental results show that the sensor can automatically identify four typical flow patterns: core flow, bubble flow, laminar flow and circulation flow with recognition rates of 91%, 93%, 90% and 88% respectively. For different flow patterns, the dynamically optimized sensor can significantly improve the quality of ERT image reconstruction.

Cite this article as: WANG Pai, LI Yang-bo, WANG Mei, QIN Xue-bin, LIU Lang. An adaptive ERT sensor with flow pattern recognition capability [J]. Journal of Central South University, 2019, 26(3): 612–622. DOI: https://doi.org/10.1007/s11771-019-4032-8.

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