Reliability-Based Preventive Maintenance Strategy for Subsea Control System
Abstract
:1. Introduction
2. Methodology
2.1. Definition and Properties of Wiener Process
- ;
- For any , random variables, and the increments , …, are mutually independent random variables;
- For any , , , where is the drift coefficient and is the diffusion coefficient.
2.2. Parameter Estimation of the Wiener Process
2.3. Reliability Modeling Method Based on Wiener Process
2.4. Reliability Modeling Method Considering the Impact of Random Shocks
3. Modeling
- The Wiener process, preferred over the Weibull and Gamma distributions for its accuracy in representing the natural degradation of electronic components, is adopted due to its compatibility with the redundancy and complex coupling in subsea control systems. It aligns more closely with observed reliability trends.
- It is presumed that all components are new at commissioning and receive timely maintenance to avert potential operational failures, where “timely” implies immediate action upon detecting degradation or reaching a maintenance interval.
- The model accounts for external shocks such as natural disasters or sudden operational changes, considering their discrete, sudden nature and independence. It aims to quantify their impact in terms of frequency and intensity.
- Replacement is anticipated during the Nth PM cycle, triggered when reliability dips below a pre-determined threshold, which is informed by historical data analysis and equipment performance criteria, to ensure maintenance precedes significant deterioration.
3.1. Redundant System Reliability Modeling
- Clayton Copula;
- Gumbel Copula.
3.2. Imperfect PM Modeling
4. SCM Maintenance Case Simulation
4.1. SCM Performance Degradation Data Simulation
4.2. SCM Reliability Modeling Simulation
4.3. Imperfect PM strategies of SCM
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Notation | Description | Notation | Description |
---|---|---|---|
Degradation process | Standard Brownian motion | ||
Drift parameter of Wiener process | Diffusion parameter of Wiener process | ||
Failure threshold | Lifetime | ||
Reliability of equipment | Standard normal distribution | ||
Number of shocks | Incidence rate of random shock | ||
Degradation of each random shock | Degradation of all random shock | ||
Degradation over lifecycle | Reliability considering random shock | ||
Expectation of normal distribution | Standard deviation of normal distribution | ||
Copula function | Critical parameter | ||
Number of parameters in the model | Maximum likelihood estimate | ||
Joint reliability | Number of imperfect maintenance rounds | ||
Initial degradation after repair | Residual degradation factor | ||
Relative failure threshold | Degradation rate influence factor | ||
Interval between PM | Time required for PM | ||
Reliability threshold | Number of PM times | ||
Average daily maintenance cost | Cost of repairing the fault | ||
Cost of the preparatory work | Cost of PM | ||
Loss of shutdown | Cost of equipment replacement |
Parameter | Estimated Value | Lower Limit | Upper Limit |
---|---|---|---|
0.0824 | 0.0809 | 0.0837 | |
0.1569 | 0.1558 | 0.1581 |
Functional Model | AIC Value |
---|---|
Gumbel Copula | −4970.2815 |
Clayton Copula | −4191.3035 |
Parameter | Value |
---|---|
USD 1 million | |
USD 12.5 million | |
USD 3 million | |
USD 0.5 million | |
USD 3.5 million | |
1 day |
Parameter | Value |
---|---|
0.1 | |
0.001 | |
0.1 |
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Wen, Y.; Yue, Y.; Zuo, X.; Li, X. Reliability-Based Preventive Maintenance Strategy for Subsea Control System. Processes 2024, 12, 761. https://doi.org/10.3390/pr12040761
Wen Y, Yue Y, Zuo X, Li X. Reliability-Based Preventive Maintenance Strategy for Subsea Control System. Processes. 2024; 12(4):761. https://doi.org/10.3390/pr12040761
Chicago/Turabian StyleWen, Yuxin, Yuanlong Yue, Xin Zuo, and Xiaoguang Li. 2024. "Reliability-Based Preventive Maintenance Strategy for Subsea Control System" Processes 12, no. 4: 761. https://doi.org/10.3390/pr12040761
APA StyleWen, Y., Yue, Y., Zuo, X., & Li, X. (2024). Reliability-Based Preventive Maintenance Strategy for Subsea Control System. Processes, 12(4), 761. https://doi.org/10.3390/pr12040761