Assessment of Suitability for Long-Term Operation of a Bucket Elevator: A Case Study
Abstract
:1. Introduction
- The time of failure-free operation is shorter than the normative time, and therefore, the technical condition of the device is unacceptable;
- Repairs and overhauls undertaken before the expiration of the normative time are not justified, as the technical condition of the device is still acceptable.
- Vibrations generated by the operation of power transmission assemblies. Components that are the most significant sources of vibrations include drive motors, gears (bearings, shafts, gears) and couplings;
- Vibrations resulting from the kinematics and dynamics of the working assemblies of this type of conveyor. The primary sources of vibrations are the bucket chain, buckets and sprockets.
2. Materials and Methods
3. Methods of Assessment of Vibration Severity
- Analysis in the time domain;
- Analysis in the frequency domain.
3.1. Method of Assessment of Vibration Severity Based on the Analysis of Peak Values of Signals in the Time Domain
- Classic measures, i.e., RMS and peak values of vibration velocity and vibration acceleration;
- Dimensionless factors: the crest factor (the ratio of peak to RMS) and the impulse factor (the ratio of peak to mean) of vibration velocity and vibration acceleration.
3.2. Methods of Assessment of Vibration Severity Based on the Spectral Analysis of Signals
3.3. Method of Assessment of Vibration Severity in the Probabilistic Approach to Signal Analysis
- The measured vibration signals are assumed to be random variables and then their statistical distributions are estimated;
- The vibration severity is determined from the calculated quantiles Qp of the measured signals, with p being the assumed confidence level;
- The limits of the analyzed signals are the basis for determining the technical condition of the equipment under study.
4. Results and Discussion
- Without load (i.e., with the gear idling);
- Under the nominal working velocity of the bucket chain.
4.1. Results of Vibration Severity Analysis Based on the Peak Values of the Signal
- Classical measures of vibration: RMS, peak values of velocity and acceleration;
- Dimensionless indices: crest factor and impulse factor. The impulse factor is particularly useful in diagnostics based on vibration analysis.
- Peak values of velocity at some points exceed the lower limit of zone “C” (minor fault) but do not exceed its upper limit. At the remaining points, the peak values of velocity are in zone “D” (no fault).
- Peak values of acceleration only at point MP1H slightly exceed the lower limit of zone “C” (minor fault). At the remaining points, the peak values of vibration acceleration are in zone “D” (no fault).
4.2. Results of Vibration Severity Analysis in the Frequency Domain
4.3. Results of Vibration Severity Analysis in the Probabilistic Approach
5. Conclusions
- In the time domain, based on the peak values of vibration signals;
- In the frequency domain, based on the spectral analysis of vibration signals;
- Using the probabilistic approach to the analysis of vibration signals.
Funding
Data Availability Statement
Conflicts of Interest
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Upper Limits | Classes of Condition | |
---|---|---|
Effective Velocity Peak, mm/s | Effective Acceleration Peak, m/s2 | |
140.5 | 981.0 | AA—Danger |
59.25 | 174.6 | A—Acute Fault |
25.0 | 31.0 | B—Some Fault |
10.5 | 5.5 | C—Minor Fault |
4.5 | 1.0 | D—No Fault |
Support Conditions | Upper Limits of Velocity RMS, mm/s | Evaluation Zones/Vibration Severity |
---|---|---|
Flexible | 2.3 | Zone “A”—vibration severity for newly commissioned drive units |
4.5 | Zone “B”—vibration severity is considered acceptable for unrestricted long-term operation | |
7.1 | Zone “C”—vibration severity is considered unsatisfactory for unrestricted long-term continuous operation, and remedial action should be taken | |
>7.1 | Zone “D”—vibration severity is sufficiently high to cause damage |
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Sokolski, P. Assessment of Suitability for Long-Term Operation of a Bucket Elevator: A Case Study. Energies 2023, 16, 7852. https://doi.org/10.3390/en16237852
Sokolski P. Assessment of Suitability for Long-Term Operation of a Bucket Elevator: A Case Study. Energies. 2023; 16(23):7852. https://doi.org/10.3390/en16237852
Chicago/Turabian StyleSokolski, Piotr. 2023. "Assessment of Suitability for Long-Term Operation of a Bucket Elevator: A Case Study" Energies 16, no. 23: 7852. https://doi.org/10.3390/en16237852
APA StyleSokolski, P. (2023). Assessment of Suitability for Long-Term Operation of a Bucket Elevator: A Case Study. Energies, 16(23), 7852. https://doi.org/10.3390/en16237852