Friday, July 19, 2019

Model-Based Iterative Reconstruction for One-Sided Ultrasonic Non-Destructive Evaluation


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Description
One-sided ultrasonic non-destructive evaluation (UNDE) is extensively used to characterize structures that need to be inspected and maintained from defects and flaws that could affect the performance of power plants, such as nuclear power plants. Most UNDE systems send acoustic pulses into the structure of interest, measure the received waveform and use an algorithm to reconstruct the quantity of interest. The most widely used algorithm in UNDE systems is the synthetic aperture focusing technique (SAFT) because it produces acceptable results in real time. A few regularized inversion techniques with linear models have been proposed which can improve on SAFT, but they tend to make simplifying assumptions that do not address how to obtain reconstructions from large real data sets. In this paper, we propose a model-based iterative reconstruction (MBIR) algorithm designed for scanning UNDE systems. To further reduce some of the artifacts in the results, we enhance the forward model to account for the transmitted beam profile, the occurrence of direct arrival signals, and the correlation between scans from adjacent regions. Next, we combine the forward model with a spatially variant prior model to account for the attenuation of deeper regions. We also present an algorithm to jointly reconstruct measurements from large data sets. Finally, using simulated and extensive experimental data, we show MBIR results and demonstrate how we can improve over SAFT as well as existing regularized inversion techniques.

Content:-
Abstract
I. INTRODUCTION
II. FORWARD MODEL OF ONE-SIDED UNDE
III. PRIOR MODEL OF THE IMAGE
IV. OPTIMIZATION OF MAP COST FUNCTION
V. RESULTS
VI. CONCLUSION
VII. ACKNOWLEDGMENT

Author Details
"Hani Almansouri"

"Singanallur Venkatakrishnan"

"Charles Bouman1"

"Hector Santos-Villalobos"




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