Diagnostics Based on Acoustic Distributed Sensor Data and Machine Learning

Authors

  • Dennis Struver Eindhoven University of Technology
  • Wouter Weekers Eindhoven University of Technology

DOI:

https://doi.org/10.25609/sure.v4.2844

Keywords:

Diagnostics, acoustic emission, vibration sensor data, machine learning, support vector machines, random forest.

Abstract

Accurate real-time diagnostics of high-tech systems are becoming more and more important. Therefore, the potential of distributed acoustic sensors in combination with machine learning for contactless diagnostics of machine performance has been investigated. Hereto, frequency response data of a brass plate has been gathered through experiments and a finite element model. In order to investigate the possibility of identifying the locations and weight of the masses, Support Vector Machines and Random Forest algorithms have been trained with experimental and numerical data. The Random Forest algorithm shows promising performance with short computational time, easy application, 95% accuracy and relatively easy understandability.

Additional Files

Published

2018-11-09

Issue

Section

Natural Sciences & Engineering