An obstacle in diagnosis of multicomponent machinery using multiple sensors to acquire vibration data is firstly found in the data acquisition itself. This is due to the fact that vibration signals collected by each sensor are a mixture of vibration produced by different components and noise; it is not evident what signals are produced by each component. A number of research studies have been carried out in which this problem was considered a blind source separation (BSS) problem and different mathematical methods were used to separate the signals. One complexity with applying such mathematical methods to separate vibration sources is that no metric or standard measure exists to evaluate the quality of the separation. In this study, a method based on statistical energy analysis (SEA) is proposed using Fourier transforms and the spatial distance between sensors and components. The principle of this method is based on the fact that each sensor, with respect to its location in the system, collects a different version of the vibration produced in the system. By applying a short time Fourier transform to the signals collected by multiple sensors and making use of a priori knowledge of the spatial distribution of sensor locations with respect to the components, the source of the peaks on the frequency spectra of the signals can be identified and attributed to the components. The performance of the method was verified using a series of experimental tests on synthetic signals and real laboratory signals collected from different bearings and the results confirmed the efficacy of the method.
Skip Nav Destination
Article navigation
November 2011
Research Papers
A Novel Approach to Evaluation of Vibration Source Separation Based on Spatial Distribution of Sensors and Fourier Transforms
Ali Mahvash,
Ali Mahvash
Section of Applied Mechanics, Department of Mechanical Engineering, École Polytechnique de Montréal, Montréal, H3T 1J4,
Canada
Search for other works by this author on:
Aouni A. Lakis
Aouni A. Lakis
Section of Applied Mechanics, Department of Mechanical Engineering, École Polytechnique de Montréal, Montréal, H3T 1J4,
Canada
Search for other works by this author on:
Ali Mahvash
Section of Applied Mechanics, Department of Mechanical Engineering, École Polytechnique de Montréal, Montréal, H3T 1J4,
Canada
Aouni A. Lakis
Section of Applied Mechanics, Department of Mechanical Engineering, École Polytechnique de Montréal, Montréal, H3T 1J4,
Canada
J. Dyn. Sys., Meas., Control. Nov 2011, 133(6): 061022 (9 pages)
Published Online: November 23, 2011
Article history
Received:
April 9, 2011
Revised:
July 30, 2011
Online:
November 23, 2011
Published:
November 23, 2011
Citation
Mahvash, A., and Lakis, A. A. (November 23, 2011). "A Novel Approach to Evaluation of Vibration Source Separation Based on Spatial Distribution of Sensors and Fourier Transforms." ASME. J. Dyn. Sys., Meas., Control. November 2011; 133(6): 061022. https://doi.org/10.1115/1.4005277
Download citation file:
Get Email Alerts
Cited By
Regret Analysis of Shrinking Horizon Model Predictive Control
J. Dyn. Sys., Meas., Control (March 2025)
Control-Oriented Modeling of a Solid Oxide Fuel Cell Affected by Redox Cycling Using a Novel Deep Learning Approach
J. Dyn. Sys., Meas., Control (March 2025)
Robust Control of Exo-Abs, a Wearable Platform for Ubiquitous Respiratory Assistance
J. Dyn. Sys., Meas., Control (March 2025)
Resilient Self-Triggered Model Predictive Control of Cyber-Physical Systems Under Two-Channel False Data Injection Attacks
J. Dyn. Sys., Meas., Control (March 2025)
Related Articles
Defect Diagnosis for Rolling Element Bearings Using Acoustic Emission
J. Vib. Acoust (December,2009)
A New Low-Frequency Resonance Sensor for Low Speed Roller Bearing Monitoring
J. Vib. Acoust (February,2010)
Spindle Condition Monitoring With a Smart Vibration Sensor and an Optimized Deep Neural Network
ASME J Nondestructive Evaluation (May,2023)
Vibration Response-Based Intelligent Non-Contact Fault Diagnosis of Bearings
ASME J Nondestructive Evaluation (May,2021)
Related Proceedings Papers
Related Chapters
Trend and XY Plots
Fundamentals of Rotating Machinery Diagnostics
On-Line Cutting Tool Condition Monitoring in Turning Processes Using Artificial Intelligence and Vibration Signals
International Conference on Advanced Computer Theory and Engineering, 4th (ICACTE 2011)
Unbalance
Fundamentals of Rotating Machinery Diagnostics