Evaluation of a Condition Monitoring Algorithm for Early Bearing Fault Detection
Abstract
:1. Introduction
2. Methodology
2.1. Bearing Failure Detection in Vibration Data
2.2. Algorithm Architecture
- Pre-processing of raw acceleration signals (filtering);
- Calculation of advanced failure indicators (AFI) in different frequency bands;
- Dynamic thresholding;
- Definition of outlier strategy;
- Tuning of hyper-parameters depending on specific bearing configuration;
- First time of failure detection (FTFD) or first time of prediction (FTP) calculation and plotting.
- The raw acceleration signal is split up into 50 ms blocks;
- Low and high pass filtering (10 and 1000 Hz);
- Integration of the filtered signal;
- RMS calculation;
- Limit violation detection;
- Limit delay to increase robustness against dynamic operating conditions.
2.2.1. Signal Conditioning and Feature Extraction
2.2.2. Trend Monitoring (Zoning) Relative Indicator Evaluation and Adaptive Thresholding
2.2.3. Outlier Detection and Confirmation of Failure State
2.2.4. Validation and Benchmarking
2.3. Benchmarking Data—The NASA Bearing Dataset
- Metadata of the used sets:
- Bearing Type: ZA-2115 double row bearings, Rexnord;
- Accelerometer: PCB 353B33 High Sensitivity ICP mounted onto bearing housing;
- Datasets for this analysis: Datasets 2 and 3, with a single sensor mounted per bearing;
- Recording strategy: One measurement file every 10 min;
- Sampling rate: 20 kHz;
- Description of Dataset 2: Outer race failure after 164 h of runtime in Bearing No. 1;
- Description of Dataset 3: Outer race failure after 30 days and 21 h in Bearing No. 3;
3. Results
3.1. Descriptive Statistics
3.2. VRMS and AFI Data
- -
- High-pass filter:
- ○
- Filter frequency: 10 Hz;
- ○
- Order: 6;
- ○
- Characteristic: Butterworth.
- -
- Anti-aliasing filter:
- ○
- Order: 10;
- ○
- Characteristic: Butterworth.
- -
- FFT:
- ○
- Lines: 8192;
- ○
- Window function: Hamming;
- ○
- Amplitude evaluation.
- -
- Limit band:
- ○
- Bandwidth: 3 σ;
- ○
- Standard deviation calc. length: Last 1440 AFI values;
- ○
- Simple moving average length: Last 1440 AFI values.
- -
- False positive filtering:
- ○
- Simultaneously creating limit violations in at least three zones with three consecutive identical outcomes.
3.3. Benchmarking Analysis—Validation and Robustness Comparison
- -
- Did the method detect the failure?
- -
- Did the method detect the failure earlier than the VRMS?
- -
- Did the method detect the failure between 60% and 80% of the absolute lifetime?
- -
- Did the method predict the correct bearing?
- -
- Did the method predict a failure too early (more than 40% remaining lifetime)?
- -
- Did the method predict a non-defect bearing (false positive)?
4. Summary, Limitations, and Challenges
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement:
Data Availability Statement
Conflicts of Interest
Abbreviations
VRMS | Velocity root mean squared acceleration data |
MAVE | Mean Absolute Value of Extremums |
EFB | Envelope Frequency Band |
CM | Condition monitoring |
CI | Condition indicator |
BPFO | Ball passing frequency outer race |
BPFI | Ball passing frequency inner race |
BSF | Ball spin frequency |
FTF | Fundamental train frequency |
FTFD | First time failure detection |
FTP | First time of prediction—used synonymously with FTFD |
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Gruber, H.; Fuchs, A.; Bader, M. Evaluation of a Condition Monitoring Algorithm for Early Bearing Fault Detection. Sensors 2024, 24, 2138. https://doi.org/10.3390/s24072138
Gruber H, Fuchs A, Bader M. Evaluation of a Condition Monitoring Algorithm for Early Bearing Fault Detection. Sensors. 2024; 24(7):2138. https://doi.org/10.3390/s24072138
Chicago/Turabian StyleGruber, Hannes, Anna Fuchs, and Michael Bader. 2024. "Evaluation of a Condition Monitoring Algorithm for Early Bearing Fault Detection" Sensors 24, no. 7: 2138. https://doi.org/10.3390/s24072138
APA StyleGruber, H., Fuchs, A., & Bader, M. (2024). Evaluation of a Condition Monitoring Algorithm for Early Bearing Fault Detection. Sensors, 24(7), 2138. https://doi.org/10.3390/s24072138