Control de precisión en manipuladores móviles industrialesdesafíos y soluciones

  1. Núñez Calvo, Naroa 1
  2. Sorrosal, Gorka 1
  3. Cabanes Axpe, Itziar 2
  4. Mancisidor Barinagarrementeria, Aitziber 2
  1. 1 Basque Research and Technology Alliance
    info

    Basque Research and Technology Alliance

    Mendaro, España

  2. 2 Universidad del País Vasco/Euskal Herriko Unibertsitatea
    info

    Universidad del País Vasco/Euskal Herriko Unibertsitatea

    Lejona, España

    ROR https://ror.org/000xsnr85

Revue:
Jornadas de Automática
  1. Cruz Martín, Ana María (coord.)
  2. Arévalo Espejo, V. (coord.)
  3. Fernández Lozano, Juan Jesús (coord.)

ISSN: 3045-4093

Année de publication: 2024

Número: 45

Type: Article

DOI: 10.17979/JA-CEA.2024.45.10906 DIALNET GOOGLE SCHOLAR lock_openAccès ouvert editor

Résumé

Los avances en la industria y tecnología, así como otros factores que los rodean, han generado nuevas exigencias a la hora de fabricar. Últimamente, ha habido un aumento en el uso de los manipuladores móviles, conformado por un brazo robótico montado sobre un robot móvil, para afrontar estas nuevas necesidades. Sin embargo, aún no alcanzan las precisiones que requieren ciertas aplicaciones industriales de gran exigencia. En este artículo se identifican y presentan las fuentes de error principales que aparecen tanto en los manipuladores móviles como en los elementos que lo conforman. Asimismo, se muestran las diferentes soluciones aportadas en la literatura, definiendo sus limitaciones y planteando los retos que quedan aún por abordar. Por último, se plantea una propuesta de control acoplado para conseguir el aumento de precisión de los manipuladores móviles aunando los rasgos positivos de los sistemas que lo componen: la precisión de un brazo robótico y la movilidad que proporciona una plataforma móvil.

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