location:Home > 2019 VOL.2 Aug No.4 > Design of rapid detection system for damage of key components of mechanical equipment

2019 VOL.2 Aug No.4

  • Title: Design of rapid detection system for damage of key components of mechanical equipment
  • Name: Cinzia Pierce
  • Company: The University of Texas at Austin
  • Abstract:

    The traditional part damage detection system has the disadvantages of low detection rate and poor authenticity of damage assessment. In order to solve the above problems, a rapid detection system for damage of key components of mechanical equipment is designed. Through the data acquisition module design, detection and screening module design two steps, complete the hardware module construction of the new system. On this basis, through the three steps of damage maximum calibration, detection of connected area determination, and regional center rearrangement, the software module construction of the new system is completed, and the smooth application of the critical detection system for mechanical equipment key components is realized smoothly. The experimental results of the simulation system operating environment show that compared with the traditional system, after applying the new system, the damage detection rate and the authenticity of the damage assessment of the parts are improved to some extent.

  • Keyword: mechanical equipment; component damage; rapid detection; data acquisition; detection and screening; damage maximum; connected re
  • DOI: 10.12250/jpciams2019040124
  • Citation form: Cinzia Pierce.Design of rapid detection system for damage of key components of mechanical equipment[J]. Computer Informatization and Mechanical System, 2019, vol. 2, pp. 43-47.
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Tsuruta Institute of Medical Information Technology
Address:[502,5-47-6], Tsuyama, Tsukuba, Saitama, Japan TEL:008148-28809 fax:008148-28808 Japan,Email:jpciams@hotmail.com,2019-09-16