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Journal of Failure Analysis and Prevention

, Volume 18, Issue 2, pp 435–444 | Cite as

Automatic Optical Inspection of Solder Ball Burn Defects on Head Gimbal Assembly

  • Jirarat Ieamsaard
  • Paisarn Muneesawang
  • Frode Sandnes
Technical Article---Peer-Reviewed
  • 59 Downloads

Abstract

The detection of low-quality solder joints in hard disk drive manufacturing is a time-consuming, error-prone and costly process that is often performed manually. This paper thus proposes two automated optical solder jet ball joint defect inspection methods for head gimbal assembly (HGA) production. The first method uses a support vector machine (SVM) for fault detection, and the second method uses vertical edge detection to identify solder ball and pad burning defects. The methods were tested with 5530 HGA images, and their performance was compared to a Bayesian-based method. Experimental results show that the vertical edge detection method gave the best results, with an under reject rate of 0.75% and an over reject rate of 1.88%. The accuracy of the vertical edge detection method was 98.2%, which is higher than the accuracy of 89.9% for the Bayesian-based method, and 84.6% for the SVM-based method.

Keywords

Optical inspection Solder jet ball joint defect Vertical edge detection HDD manufacture 

Notes

Acknowledgments

This project is financially supported by the Thailand Research Fund (TRF).

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Copyright information

© ASM International 2018

Authors and Affiliations

  1. 1.Department of Electrical and Computer Engineering, Faculty of EngineeringNaresuan UniversityPhitsanulokThailand
  2. 2.Department of Computer Engineering, Faculty of Industrial TechnologyPibulsongkram Rajabhat UniversityPhitsanulokThailand
  3. 3.Institute of Information Technology, Faculty of Technology, Art and DesignOslo Metropolitan UniversityOsloNorway
  4. 4.Westerdals Oslo School of Arts Communication and TechnologyOsloNorway

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