Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures
Abstract
:1. Introduction
2. Reliability of a Technical Object after Its Regeneration in a Maintenance System
3. Three-State Operational Process Model of Wind Farm Devices
- S0—using the technical tool,
- S1—preventative maintenance,
- S01—unplanned upkeep: S0 with intensity μ in the fit condition.
- λ—Interpretation of the system’s intensity of transition from state S0 to state S1,
- μ—Only interpretations of the system’s intensity of transition from state S1 to state S0 and from state S01 to state S0,
- λ1—The intensity of the system’s transition from state S0 to state S01,
- μ1—A calculation of how much the system has changed from S01 to S0.
4. Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures
4.1. Reliability Testing of Wind Farm Devices
- One year was allotted for the testing of the railroad video monitoring system:t = 8760 (h)
- There is a probability that the evaluated video surveillance system will continue to function properly in S1 condition for a year:
4.2. Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures
- Pi—the likelihood that the system is functioning properly.
- λi,j—is the speed at which a system changes from being fit to being unfit.
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
F(t) | The cumulative distribution function of the time to failure |
f(t) | The probability density function of the time to failure |
λ(t) | Instantaneous failure rate function |
R(t) | Reliability function |
MTBF | Mean time between failure |
MTTF | Mean time to failure |
MTTR | Mean time to repair |
M(τ) | Maintainability function |
Kg(t) or Kg | The average value of availability function or factor Kg |
Fc | The quality function of the object’s operation process |
Fch | Function of the object operation process |
λ | Damage intensity |
t | The time of operation process |
μ | Repair intensity |
λ1 | Intensity of type I inspections |
μ1 | Type I operational maintenance intensity |
λ2 | Intensity of type II inspections |
μ2 | Type II operational maintenance intensity |
P0 | Probability of the system being in state S0 |
P1 | Probability of the system being in state S1 |
P01 | Probability of the system being in state S01 |
P10 | Probability of the system being in state S10 |
WPPES | Wind power plant expert system |
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Parameter | Value [1/h] |
---|---|
λ | 0.00001 |
λ1 | 0.00002 |
μ | 0.0208 |
μ1 | 0.0416 |
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Duer, S.; Woźniak, M.; Paś, J.; Zajkowski, K.; Ostrowski, A.; Stawowy, M.; Budniak, Z. Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures. Energies 2023, 16, 2827. https://doi.org/10.3390/en16062827
Duer S, Woźniak M, Paś J, Zajkowski K, Ostrowski A, Stawowy M, Budniak Z. Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures. Energies. 2023; 16(6):2827. https://doi.org/10.3390/en16062827
Chicago/Turabian StyleDuer, Stanisław, Marek Woźniak, Jacek Paś, Konrad Zajkowski, Arkadiusz Ostrowski, Marek Stawowy, and Zbigniew Budniak. 2023. "Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures" Energies 16, no. 6: 2827. https://doi.org/10.3390/en16062827
APA StyleDuer, S., Woźniak, M., Paś, J., Zajkowski, K., Ostrowski, A., Stawowy, M., & Budniak, Z. (2023). Reliability Testing of Wind Farm Devices Based on the Mean Time to Failures. Energies, 16(6), 2827. https://doi.org/10.3390/en16062827