Abstract:
The detection and characterization of macroscopic cracks inside dielectric materials is an important practical issue. Thus, there is a need to establish evaluation techn...Show MoreMetadata
Abstract:
The detection and characterization of macroscopic cracks inside dielectric materials is an important practical issue. Thus, there is a need to establish evaluation techniques, which can be used to characterize buried cracks; indeed, the knowledge of the geometrical configuration of a hidden crack is a key factor for fatigue crack engineering. Therefore, a microwave method for nondestructive characterization of macroscopic cracks inside dielectric materials is presented in this paper. This nondestructive and noncontact technique is based on the determination of the near-field reflection coefficient of an open-ended rectangular waveguide. The measurements are achieved by means of a microwave six-port-based system that operates at 35 GHz. We show that relatively small defects are detectable and demonstrate that the association of signal processing tools to this characterization method enables the retrieval of the crack profile in an acceptable manner. The reconstruction of a 1-D buried crack profile is performed by means of a multiple-multilayer-perceptron (MLP) approach. Several cases are investigated to demonstrate the capabilities of the method.
Published in: IEEE Transactions on Instrumentation and Measurement ( Volume: 57, Issue: 12, December 2008)
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Artificial Neural Network ,
- Microwave Techniques ,
- Macroscopic Cracks ,
- Reflection Coefficient ,
- Acceptable Manner ,
- Crack Detection ,
- Important Practical Issues ,
- Hidden Layer ,
- Penetration Depth ,
- Level Of Processing ,
- Empirical Tests ,
- Training Step ,
- Lateral Resolution ,
- Neurons In The Hidden Layer ,
- Triangular Shape ,
- Simulated Profiles ,
- Reflectance Properties ,
- Kinds Of Techniques ,
- Algorithmic Level ,
- Number Of Facts ,
- Section Shape ,
- High Frequency Structure Simulator ,
- Triangular Section
- Author Keywords
- Author Free Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Artificial Neural Network ,
- Microwave Techniques ,
- Macroscopic Cracks ,
- Reflection Coefficient ,
- Acceptable Manner ,
- Crack Detection ,
- Important Practical Issues ,
- Hidden Layer ,
- Penetration Depth ,
- Level Of Processing ,
- Empirical Tests ,
- Training Step ,
- Lateral Resolution ,
- Neurons In The Hidden Layer ,
- Triangular Shape ,
- Simulated Profiles ,
- Reflectance Properties ,
- Kinds Of Techniques ,
- Algorithmic Level ,
- Number Of Facts ,
- Section Shape ,
- High Frequency Structure Simulator ,
- Triangular Section
- Author Keywords
- Author Free Keywords