Application of Data Association and Perceptron Artificial Neural Networks (AR-ANN) in Fault Detection in Dynamic Systems: Gears

Authors

  • Paulo Roberto Tebon
  • Roberto Outa
  • Fábio Roberto Chavarette
  • Aparecido Carlos Gonçalves
  • Sandro da Silva Pinto
  • Samuel Stabile

Keywords:

Artificial Neural Network-ANN; Data-Mining; Vibration; Bioengineering; Fault Detection; Association Rules-AR

Abstract

This work demonstrates a study of identification, classification and grouping of different signals, whose objective is the detection of failures between a pair of gears. Therefore, it is a multidisciplinary work, as it promotes an application of low-cost embedded systems and methodologies of computer science in the area of mechanical engineering. For this to be done, the concept of perceptron artificial neural networks (ANN) associated with the data association rules (AR) theorem belonging to the concept of data-mining was used. This association was developed because it is easy to access and has great potential in identification and classification. We named these different theorems AR-ANN. The result of the application of AR-ANN to the reference and faulty signs was successful, whose classification demonstrated a high rate of correct and in the training phase of the perceptron network, the balance of the adjustment line was obtained, demonstrated by linear regression and weights (variables).

Downloads

Download data is not yet available.

Downloads

Published

2023-09-01

How to Cite

Paulo Roberto Tebon, Roberto Outa, Fábio Roberto Chavarette, Aparecido Carlos Gonçalves, Sandro da Silva Pinto, & Samuel Stabile. (2023). Application of Data Association and Perceptron Artificial Neural Networks (AR-ANN) in Fault Detection in Dynamic Systems: Gears. International Journal of Computer Information Systems and Industrial Management Applications, 15, 10. Retrieved from https://cspub-ijcisim.org/index.php/ijcisim/article/view/573

Issue

Section

Original Articles