This title appears in the Scientific Report :
2001
Please use the identifier:
http://hdl.handle.net/2128/2095 in citations.
Defect detection and classification using a SQUID based multiple frequency eddy current NDE system
Defect detection and classification using a SQUID based multiple frequency eddy current NDE system
The probability of detection (POD) of hidden fatigue defects in riveted multilayer joints, e.g. aircraft fuselage, can be improved by using sophisticated eddy-current systems which provide more information than conventional NDE equipment. In order to collect this information, sensor arrays or multi-...
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Personal Name(s): | von Kreutzbruck, M. |
---|---|
Allweins, K. / Rühl, T. / Mück, M. / Heiden, C. / Krause, H.-J. / Hohmann, R. | |
Contributing Institute: |
Institut für Bio- und Chemosensoren; ISG-2 |
Published in: | IEEE transactions on applied superconductivity, 11 (2001) S. 1032 |
Imprint: |
New York, NY
IEEE
2001
|
Physical Description: |
1032 |
Document Type: |
Journal Article |
Research Program: |
Schichtsysteme und Bauelemente der Supraleiterelektronik |
Series Title: |
IEEE Transactions on Applied Superconductivity
11 |
Subject (ZB): | |
Link: |
OpenAccess |
Publikationsportal JuSER |
The probability of detection (POD) of hidden fatigue defects in riveted multilayer joints, e.g. aircraft fuselage, can be improved by using sophisticated eddy-current systems which provide more information than conventional NDE equipment. In order to collect this information, sensor arrays or multi-frequency excitation schemes can be used. We have performed simulations and measurements with an eddy current NDE system based on a SQUID magnetometer. To distinguish between signals caused by material defects and those caused by structures in the sample, such as bolts or rivets, a high signal-to-noise ratio is required. Our system provides a large analog dynamic range of more than 140 dB/root Hz in unshielded environment, a digital dynamics of the ADC of more than 25 bit (>150 dB) and multiple frequency excitation. A large number of stacked aluminum samples resembling aircraft fuselage were measured, containing titanium rivets and hidden defects In different depths in order to obtain sufficient statistical information for classification of the defect geometry. We report on flaw reconstruction using adapted feature extraction and neural network techniques. |