2009
DOI: 10.1016/j.ndteint.2009.06.009
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Development of a magnetic sensor for detection and sizing of internal pipeline corrosion defects

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Cited by 110 publications
(35 citation statements)
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“…In Gloria et al [28] the pipeline corrosion defects were detected with a modified MFL, not requiring the saturation of a material. 2 and 3D numerical models were constructed using Gmsh and GetDP freeware finite element programs, and the geometrical parameters of the set-up were optimised.…”
Section: Static Mflmentioning
confidence: 99%
“…In Gloria et al [28] the pipeline corrosion defects were detected with a modified MFL, not requiring the saturation of a material. 2 and 3D numerical models were constructed using Gmsh and GetDP freeware finite element programs, and the geometrical parameters of the set-up were optimised.…”
Section: Static Mflmentioning
confidence: 99%
“…24 Analogous to crack inspection using magnetic methods, metallic loss or other irregularities caused by corrosion can be inspected via magnetic leakage methods. 25 More work needs to be carried out to industrialize corrosion monitoring technology through measuring and mapping of magnetic fi elds.…”
Section: Anomaly Inspection Through Dynamic Magnetic Signal (Eddy Curmentioning
confidence: 99%
“…Therefore, it is difficult to inspect small diameter and thick wall pipelines using MFL. Similar to UT, the biggest advantage of MFL is high inspection accuracy, but it also has disadvantages including low spatial resolution and low readability of the MFL pig report generated by "magnetic spots" (Gloria et al, 2009;Carvalho et al, 2006;Camerini et al, 2008). Furthermore, due to the limited size of the sensor, the MFL pig has difficulty going through a curved pipeline.…”
Section: Introductionmentioning
confidence: 99%