Rail Flatness Measurement Based on Dual Laser Triangulation

  1. Usamentiaga, Rubén 1
  2. Garcia, Daniel F. 1
  3. DelaCalle, Francisco J. 1
  1. 1 Universidad de Oviedo
    info

    Universidad de Oviedo

    Oviedo, España

    ROR https://ror.org/006gksa02

Actas:
2023 IEEE Industry Applications Society Annual Meeting (IAS)

ISSN: 2576-702X

ISBN: 979-8-3503-2016-9

Ano de publicación: 2023

Tipo: Achega congreso

DOI: 10.1109/IAS54024.2023.10406938 GOOGLE SCHOLAR lock_openAcceso aberto editor

Resumo

Surface metrology is crucial task in automated quality control. The measurement of surface features such as regular and irregular patterns, roughness, waviness, flatness and dimensions is of utmost importance to ensure products are being manufactured according to specifications. This work focuses on flatness measurement in rails, which is a quality parameter affected by roller deformations during rail production. This work proposes a flatness measurement system for rails based on a dual triangulation configuration. Innovative solutions are provided for the most challenging tasks including calibration, registration, calculation of the deviations of the surface from their intended shape, filtering and flatness characterization. Extensive tests on synthetic and real data indicate excellent performance in terms of measurement accuracy, robustness and reliability.

Información de financiamento

This work has been partially funded by the project PID2021- 124383OB-I00 of the Spanish National Plan for Research, Development and Innovation.

Financiadores

  • Spanish National Plan for Research, Development and Innovation Spain
    • PID2021- 124383OB-I00

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