Uso de redes neuronales artificiales y señales electromiográficas para el diseño y control de prótesis inteligentes

Autores/as

DOI:

https://doi.org/10.56162/transdigital346

Palabras clave:

señales electrmiográficas, redes neuronales artificiales, prótesis, inteligencia artificial

Resumen

Cada año, muchas personas alrededor del mundo pierden extremidades corporales debido a enfermedades, accidentes u otras circunstancias. Hoy en día, la tecnología permite desarrollar prótesis de poco coste económico y alta eficiencia en su respuesta. Estas nuevas tecnológicas ayudan al momento de diseñar prótesis, pues no se enfocan únicamente en la parte estética, sino en que sean funcionales y emulen los movimientos naturales del miembro perdido. En este artículo se presenta una revisión de las técnicas más utilizadas para generar prótesis, además de centrarse en aquellas que utilizan esquemas de inteligencia artificial, como las redes neuronales y elementos biométricos para su control.

Citas

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Publicado

26-07-2024

Cómo citar

Tinoco Varela, D. (2024). Uso de redes neuronales artificiales y señales electromiográficas para el diseño y control de prótesis inteligentes. Transdigital, 5(10), e346. https://doi.org/10.56162/transdigital346

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