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Anomaly detection in milling tools using acoustic signals and generative adversarial networks

  • Clayton Cooper
  • , Jianjing Zhang
  • , Robert X. Gao
  • , Peng Wang
  • , Ihab Ragai

Producción científica: Conference articlerevisión exhaustiva

36 Citas (Scopus)

Resumen

Acoustic monitoring presents itself as a flexible but under-reported method of tool condition monitoring in milling operations. This paper demonstrates the power of the monitoring paradigm by presenting a method of characterizing milling tool conditions by detecting anomalies in the time-frequency domain of the tools' acoustic spectrum during cutting operations. This is done by training a generative adversarial neural network on only a single, readily obtained class of acoustic data and then inverting the generator to perform anomaly detection. Anomalous and non-anomalous data are shown to be nearly linearly separable using the proposed method, resulting in 90.56% tool condition classification accuracy and a 24.49% improvement over classification without the method.

Idioma originalEnglish
Páginas (desde-hasta)372-378
Número de páginas7
Publicación48th SME North American Manufacturing Research Conference, NAMRC 48
Volumen48
DOI
EstadoPublished - 2020
Evento48th SME North American Manufacturing Research Conference, NAMRC 48 - Cincinnati, United States
Duración: jun 22 2020jun 26 2020

Nota bibliográfica

Publisher Copyright:
© 2020 The Authors. Published by Elsevier B.V.

ASJC Scopus subject areas

  • Artificial Intelligence
  • Industrial and Manufacturing Engineering

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