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Generalized flow pattern image reconstruction algorithm for electrical capacitance tomography

Successful applications of electrical capacitance tomography (ECT) depend on the speed and precision of the image reconstruction algorithms. In this paper, based on the semiparametric model, a generalized objective functional that considers the outliers in the measured capacitance data and the model...

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Published in:Nuclear engineering and design 2011-06, Vol.241 (6), p.1970-1980
Main Authors: Liu, S., Lei, J., Li, Z.H., Han, Z.X., Li, J.T., Chen, Q.
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cited_by cdi_FETCH-LOGICAL-c377t-3a0de68378f0c3d55589f761da4be64e9480825223b51b6067ec6fd6142b2543
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container_end_page 1980
container_issue 6
container_start_page 1970
container_title Nuclear engineering and design
container_volume 241
creator Liu, S.
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description Successful applications of electrical capacitance tomography (ECT) depend on the speed and precision of the image reconstruction algorithms. In this paper, based on the semiparametric model, a generalized objective functional that considers the outliers in the measured capacitance data and the model error is proposed. A regularized combination minimax estimation is developed. An efficient algorithm, which integrates the advantages of the homotopy method where the homotopy equation is designed by the fixed-point homotopy and solved using the fixed-point iteration algorithm based on the alternate iteration scheme, the quantum particle swarm optimization algorithm that is coupled with the crossover and mutation operators, and the simulated annealing algorithm, is proposed. This algorithm is tested by the noise-free capacitance data and the noise-contaminated capacitance data, and encouraging results are observed. Numerical simulation results reveal the effectiveness and superiority of the proposed algorithm. In the cases of the reconstructed objects considered in this paper, the reconstructed results by the proposed algorithm show great improvement in the spatial resolution and accuracy. The spatial resolution of the reconstructed images is enhanced, and the artifacts in the reconstructed images can be removed effectively. Furthermore, the reconstructed results by the proposed algorithm under the noise-contaminated capacitance data reveal that the proposed algorithm is very competent to deal with the inaccurate nature in the capacitance data. Consequently, a promising algorithm is introduced for ECT image reconstruction.
doi_str_mv 10.1016/j.nucengdes.2010.09.010
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source ScienceDirect Freedom Collection 2022-2024
subjects Algorithms
Applied sciences
Capacitance
Controled nuclear fusion plants
Energy
Energy. Thermal use of fuels
Exact sciences and technology
Fission nuclear power plants
Fuels
Image reconstruction
Installations for energy generation and conversion: thermal and electrical energy
Iterative methods
Mathematical models
Nuclear fuels
Spatial resolution
Tomography
title Generalized flow pattern image reconstruction algorithm for electrical capacitance tomography
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