Coded Thermal Wave Imaging based Defect Detection in Composites using Neural Networks

Publish Year: 1401
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_IJE-35-1_010

تاریخ نمایه سازی: 10 آبان 1400

Abstract:

Industry ۴.۰ focuses on the deployment of artificial intelligence in various fields for automation of variety of industrial applications like aerospace, defence, material manufacturing, etc. Application of these principles to active thermography, facilitates automatic defect detection without human intervention and helps in automation in assessing the integrity and product quality. This paper employs artificial neural network (ANN) based classification post-processing modality for exploring subsurface anomalies with improved resolution and enhanced detectability. A modified bi-phase seven-bit barker coded thermal wave imaging is used to simulate the specimens. Experimentation has been carried over CFRP and GFRP specimens using artificially made flat bottom holes of various sizes and depths. A phase based theoretical model also developed for quantitative assessment of depth of the anomaly and experimentally cross verified with a maximum depth error of ۳%. Additionally, subsurface anomalies are compared based on probability of detection (POD) and signal to noise ratio (SNR). ANN provides better visualization of defects with ۹۶% probability of detection even for small aspect ratio in contrast to conventional post processing modalities.

Authors

Muzammil Parvez M

Department of ECE, Bharath Institute of Higher education and research (BIHER), Chennai

j Shanmugam

Professor, Dept of ECE Bharath Institute of Higher Education and Research (Chennai)

M Sangeetha

Professor, Dept of ECE Bharath Institute of Higher Education and Research (Chennai)

V.S Ghali

Professor, Dept of ECE Bharath Institute of Higher Education and Research (Chennai)