Preliminary Investigation on the Acoustic Characteristics of Turning Processes

This research aims to characterize the turning process using acoustic signals (AS) for the purpose of remote condition monitoring. This will allow for non-invasive machine monitoring, reducing costs and interference in the machining operation. Various combinations of process parameters were investigated, including spindle speed, depth of cut, and feed rate. The machining parameters used herein were closely matched with those of a milling operation utilized in previous research. The intent is to investigate the use of AS to monitor and differentiate multiple machines around the shop floor, running simultaneously. The feed rates for the turning process were mapped to mimic those for the milling process.

A spherical 32-microphone array was utilized for data collection with a sampling rate of 48 kHz. Frequency and time-domain characteristics were utilized to find distinguishing features of the AS. It was found that turning speeds produced noticeable differences in the observed peaks in the frequency content of the signal, providing a means of determining spindle speed from AS. Additionally, time-domain characteristics yielded discernible differences for both feed rate and depth of cut. An increase in the rms value was observed as the material removal rate (MRR) of the machining process increased. The results suggest that a combination of both frequency and time domain characteristics may be used to distinguish the process parameters. Feature extractions linked to MRR and the time/frequency domain can be used to expand AS monitoring to other process parameters and machines. Finally, a time-domain machine learning classifier was utilized for predicting the depth of cut. The Fine K-nearest neighbor (KNN) classifier was determined to provide the best results, with a prediction accuracy of approximately 62%.

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Work Title Preliminary Investigation on the Acoustic Characteristics of Turning Processes
Access
Open Access
Creators
  1. Scott Kerner
  2. Zachery Deabenderfer
  3. Katherine Korn
  4. Ihab Ragai
  5. Yabin Liao
  6. David Loker
Keyword
  1. Machine monitoring
  2. Condition monitoring
  3. Acoustic signal
  4. Turning process
  5. Microphone array
License In Copyright (Rights Reserved)
Work Type Article
Publisher
  1. Proceedings of the ASME 2021 International Mechanical Engineering Congress and Exposition. Volume 2B: Advanced Manufacturing
Publication Date January 25, 2022
Publisher Identifier (DOI)
  1. https://doi.org/10.1115/IMECE2021-72923
Deposited February 17, 2025

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Version 1
published

  • Created
  • Added 2021_Kerner_et_al_2021.pdf
  • Added Creator Scott Kerner
  • Added Creator Zachery Deabenderfer
  • Added Creator Katherine Korn
  • Added Creator Ihab Ragai
  • Added Creator Y Liao
  • Added Creator D Loker
  • Published
  • Updated
  • Updated Keyword, Publisher, Description, and 1 more Show Changes
    Keyword
    • Machine monitoring, Condition monitoring, Acoustic signal, Turning process, Microphone array
    Publisher
    • Proceedings of the ASME International Mechanical Engineering Congress & Exposition
    • Proceedings of the ASME 2021 International Mechanical Engineering Congress and Exposition. Volume 2B: Advanced Manufacturing
    Description
    • No
    • This research aims to characterize the turning process using acoustic signals (AS) for the purpose of remote condition monitoring. This will allow for non-invasive machine monitoring, reducing costs and interference in the machining operation. Various combinations of process parameters were investigated, including spindle speed, depth of cut, and feed rate. The machining parameters used herein were closely matched with those of a milling operation utilized in previous research. The intent is to investigate the use of AS to monitor and differentiate multiple machines around the shop floor, running simultaneously. The feed rates for the turning process were mapped to mimic those for the milling process.
    • A spherical 32-microphone array was utilized for data collection with a sampling rate of 48 kHz. Frequency and time-domain characteristics were utilized to find distinguishing features of the AS. It was found that turning speeds produced noticeable differences in the observed peaks in the frequency content of the signal, providing a means of determining spindle speed from AS. Additionally, time-domain characteristics yielded discernible differences for both feed rate and depth of cut. An increase in the rms value was observed as the material removal rate (MRR) of the machining process increased. The results suggest that a combination of both frequency and time domain characteristics may be used to distinguish the process parameters. Feature extractions linked to MRR and the time/frequency domain can be used to expand AS monitoring to other process parameters and machines. Finally, a time-domain machine learning classifier was utilized for predicting the depth of cut. The Fine K-nearest neighbor (KNN) classifier was determined to provide the best results, with a prediction accuracy of approximately 62%.
    Publication Date
    • 2022-01-01
    • 2022-01-25
  • Renamed Creator Yabin Liao Show Changes
    • Y Liao
    • Yabin Liao
  • Renamed Creator David Loker Show Changes
    • D Loker
    • David Loker