Classification of Composite Defects Using the Signature Classification Development System

Abstract

The Johns Hopkins University Applied Physics Laboratory and the Carderock Division of the Naval Surface Warfare Center are developing a Signature Classification Development System (SCDS) to transfer classification technology to nondestructive evaluation (NDE) field equipment. SCDS is a personal computer-based software tool-kit for developing classification algorithms. It includes support for digital signal processing, gating of the signatures, generation of feature vectors, and classification of vectors using artificial neural networks. SCDS successfully classifies ultrasonic signatures from defects in thick section, graphite/epoxy composite test panels. Seven test panels were fabricated with programmed defects embedded one-eighth or halfway into the panel. Six of the panels contain defects representing delaminations, porosity, and contaminations, and one panel serves as a reference standard. Ultrasonic signatures were recorded from the test panels using an ultrasonic C-scan system. SCDS was used to process the signatures and generate feature vectors for input to the artificial neural networks. The classifier achieved a 94% accuracy for one defect, and perfect accuracy for two other defects.

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Document Details

Document Type
Technical Report
Publication Date
Apr 01, 1996
Accession Number
ADP010224

Entities

People

  • Carol A. Lebowitz
  • Jeffrey S. Lin
  • Lawrence M. Brown

Organizations

  • Johns Hopkins University

Tags

DTIC Thesaurus Topics

  • Automatic Programming
  • Composite Materials
  • Computer Programs
  • Computers
  • Digital Signal Processing
  • Epoxy Composites
  • Failure Mode And Effect Analysis
  • Fiber Reinforced Composites
  • Frequency
  • Graphitic Materials
  • Materials
  • Mechanical Properties
  • Neural Networks
  • Power Spectra
  • Reliability
  • Signal Processing
  • Test Sets

Readers

  • Computer Vision.
  • Reinforced Composite Materials
  • Research Science/Academic Research

Technology Areas

  • AI & ML