Title :
Three-dimensional defect inversion from magnetic flux leakage signals using iterative neural network
Author :
Junjie Chen ; Songling Huang ; Wei Zhao
Author_Institution :
Dept. of Electr. Eng., Tsinghua Univ., Beijing, China
Abstract :
Defect inversion is of special interest to magnetic flux leakage (MFL) inspection in industry. This study proposes an iterative neural network to reconstruct three-dimensional defect profiles from three-axial MFL signals in pipeline inspection. A radial basis function neural network is utilised as the forward model to predict the MFL signals given a defect profile, and the defect profile gets updated based on a combination of gradient descent and simulated annealing in the iterative inversion procedure. Accuracy of the proposed inversion procedure is demonstrated in estimating the profile of different defects in steel pipes. Experimental result based on three-axial simulated MFL data also shows that the proposed inversion approach is robust even in presence of reasonable noise.
Keywords :
gradient methods; inspection; magnetic flux; magnetic leakage; mechanical engineering computing; nondestructive testing; pipelines; radial basis function networks; signal detection; signal reconstruction; simulated annealing; steel; 3D defect inversion; MFL inspection; defect profile reconstruction; forward model; gradient descent method; iterative inversion procedure; iterative neural network; magnetic flux leakage; pipeline inspection; radial basis function neural network; simulated annealing; steel pipes; three axial MFL signal detection;
Journal_Title :
Science, Measurement & Technology, IET
DOI :
10.1049/iet-smt.2014.0173