Title :
Adaptive Wavelets for Characterizing Magnetic Flux Leakage Signals From Pipeline Inspection
Author :
Joshi, Ameet ; Udpa, Lalita ; Udpa, Satish ; Tamburrino, Antonello
Author_Institution :
Electr. & Comput. Eng. Dept., Michigan State Univ., East Lansing, MI
Abstract :
Natural gas transmission pipelines are commonly inspected using magnetic flux leakage (MFL) method for detecting cracks and corrosion in the pipewall. Traditionally the MFL data obtained is processed to estimate an equivalent length (L), width (W), and depth (D) of defects. This information is then used to predict the maximum safe operating pressure (MAOP). In order to obtain a more accurate estimate for the MAOP, it is necessary to invert the MFL signal in terms of the full three-dimensional (3-D) depth profile of defects. This paper proposes a novel iterative method of inversion using adaptive wavelets and radial basis function neural network (RBFNN) that can efficiently reduce the data dimensionality and predict the full 3-D depth profile. Initials results obtained using simulated data are presented
Keywords :
cracks; inspection; inverse problems; iterative methods; magnetic flux; magnetic leakage; natural gas technology; pipelines; radial basis function networks; signal processing; wavelet transforms; 3D depth profile; adaptive wavelets; corrosion detection; cracks detection; iterative inversion; magnetic flux leakage method; maximum safe operating pressure; natural gas transmission pipelines; pipeline inspection; radial basis function neural network; Corrosion; Discrete wavelet transforms; Inspection; Magnetic flux leakage; Pipelines; Probes; Radial basis function networks; Sensor arrays; Signal resolution; Wavelet transforms; Adaptive wavelets; MFL inspection; RBFNN; iterative inversion;
Journal_Title :
Magnetics, IEEE Transactions on
DOI :
10.1109/TMAG.2006.880091