Reliability Measures and Profit Exploration of Windmill Water-Pumping Systems Incorporating Warranty and Two Types of Repair
Abstract
:1. Introduction
2. Materials and Methods
2.1. Notation
2.2. System Description
- Initially, the system is in good working condition.
- The system has a fixed warranty period.
- The gearbox is repaired by two types of repair policy via the Gumbel–Hougaard family of Copula and the other components are repaired generally.
- The system is partially working when k blades are in a failed state, but two of them should not be adjacent.
S0 | The initial state in which the system is in good condition as per the assumptions. |
S1 | The good working state of the system when the warranty period is over. |
S2 | The degraded state of the system when k-out-of-n blades have been failed but in which two blades should not be adjacent. |
S3 | The degraded state of the system due to minor failure in the pumping system. |
S4 | Partially failed state of the combined system due to failure in the gearbox. |
S5 | Failed state of the system due to k+1 faulty blades. |
S6 | Failed state of the system due to break or error in the shaft. |
S7 | Failed state of the system caused by battery discharge. |
S8 | Failed state of the system when the system can fail due to any failure under the warranty period and in this system is repaired by the company free of charge. |
S9 | Failed state of the system because of any major failure in the pumping system. |
3. Mathematical Model
3.1. Formulation of the Model
3.2. Solution of the Model
3.3. Working State and Failed State Probability of the System
4. Numerical Example
4.1. Availability Analysis
4.2. Reliability Analysis
4.3. Mean Time to Failure (MTTF)
4.4. Expected Profit
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Symbol | Description |
---|---|
t/s | Time scale/Laplace transform variable. |
Laplace transformation of . | |
Failure rates of battery/shaft/gearbox/pumping cylinder/minor error in pumping system. | |
Failure rate for k blades not to two adjacent/k + 1 blades. | |
g | Average failure rate after warranty. |
w | Warranty period. |
l | Total expected life of the system. |
Rate of completion of warranty. | |
Failure rate during the warranty period. | |
Repair rates for the degraded states S2 and S3. | |
, | Repair rate for the degraded state S4 and y is the elapse repair time for this state. |
q | The joint probability (failed state S4, to normal state S0) according to the Gumbel–Hougaard family is given as: . |
Repair rate for completely failed state Si+4; i = 1 … 5. | |
The probability that the system is in state Si, where i = 0 … 4. | |
The probability that the system is the state Sj+4, and xi is the elapse repair time where i = 1, 2, …5. | |
Probability of working state of the system. | |
Probability of failed state of the system. | |
Ep(t) | Expected profit during the interval [0, t). |
K1, K2 | Revenue and service cost per unit time. |
Time (t in Months) | Availability Pup(t) |
---|---|
0 | 1.00000 |
5 | 0.97452 |
10 | 0.93721 |
15 | 0.88624 |
20 | 0.82708 |
25 | 0.76383 |
30 | 0.69943 |
35 | 0.63596 |
40 | 0.57483 |
45 | 0.51697 |
50 | 0.46293 |
Time (t in Months) | Reliability Rl |
---|---|
0 | 1.00000 |
5 | 0.93502 |
10 | 0.85651 |
15 | 0.77743 |
20 | 0.70283 |
25 | 0.63452 |
30 | 0.57290 |
35 | 0.51776 |
40 | 0.46862 |
45 | 0.42492 |
50 | 0.38608 |
Failure Rates | MTTF | ||||||||
---|---|---|---|---|---|---|---|---|---|
α | β | λGB | λB | λK | λK+1 | λS | λPS | λmi | |
0.01 | 72.50000 | 58.75000 | 57.81250 | 71.32353 | 50.69445 | 58.75000 | 58.75000 | 70.39474 | 57.81250 |
0.02 | 63.33333 | 47.00000 | 58.08823 | 65.97222 | 55.16917 | 49.60937 | 56.15079 | 58.75000 | 58.08823 |
0.03 | 58.75000 | 39.16667 | 58.33334 | 61.93609 | 58.75000 | 46.56250 | 53.97727 | 54.16667 | 58.33334 |
0.04 | 56.00000 | 33.57143 | 58.55263 | 58.75000 | 61.70635 | 45.03906 | 52.12450 | 51.42045 | 58.55263 |
0.05 | 54.16667 | 29.37500 | 58.75000 | 56.15079 | 64.20454 | 44.12500 | 50.52083 | 49.45652 | 58.75000 |
0.06 | 52.85714 | 26.11111 | 58.92857 | 53.97727 | 66.35375 | 43.51562 | 49.11538 | 47.91667 | 58.92857 |
0.07 | 51.87500 | 23.50000 | 59.09091 | 52.12450 | 68.22917 | 43.08036 | 47.87088 | 46.64286 | 59.09091 |
0.08 | 51.11111 | 21.36364 | 59.23913 | 50.52083 | 69.88461 | 42.75391 | 46.75926 | 45.55288 | 59.23913 |
0.09 | 50.50000 | 19.58333 | 59.37500 | 49.11538 | 71.35989 | 42.50000 | 45.75893 | 44.59876 | 59.37500 |
Time (t) (In Months) | Expected Profit | |||||||
---|---|---|---|---|---|---|---|---|
K2 = 0.01 | K2 = 0.05 | K2 = 0.1 | K2 = 0.5 | |||||
w = 12 | w = 24 | w = 12 | w = 24 | w = 12 | w = 24 | w = 12 | w = 24 | |
0 | −0.01440 | −0.0108 | −0.07200 | −0.05400 | −0.14400 | −0.108 | −0.72000 | −0.540 |
5 | 4.91808 | 4.92168 | 4.86048 | 4.87847 | 4.78848 | 4.82448 | 4.21248 | 4.39247 |
10 | 9.70443 | 9.70803 | 9.64683 | 9.66483 | 9.57483 | 9.61083 | 8.99883 | 9.17883 |
15 | 14.26750 | 14.27110 | 14.20990 | 14.22790 | 14.13790 | 14.17390 | 13.56190 | 13.74190 |
20 | 18.55286 | 18.55646 | 18.49526 | 18.51326 | 18.42326 | 18.45926 | 17.84726 | 18.02726 |
25 | 22.55368 | 22.55728 | 22.49608 | 22.51408 | 22.42408 | 22.46008 | 21.84808 | 22.02808 |
30 | 26.60545 | 26.60905 | 26.54785 | 26.56585 | 26.47585 | 26.51185 | 25.89985 | 26.07985 |
35 | 197.55858 | 197.56218 | 197.50098 | 197.51898 | 197.42898 | 197.46498 | 196.85298 | 197.03298 |
40 | 221.91050 | 221.91410 | 221.85290 | 221.87090 | 221.78090 | 221.81690 | 221.20490 | 221.38490 |
45 | 250.14638 | 250.14998 | 250.08878 | 250.10678 | 250.01678 | 250.05278 | 249.44078 | 249.62078 |
50 | 282.84736 | 282.85096 | 282.78976 | 282.80775 | 282.71776 | 282.75376 | 282.14176 | 282.32176 |
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Goyal, N.; Ram, M.; Kumar, A.; Bisht, S.; Klochkov, Y. Reliability Measures and Profit Exploration of Windmill Water-Pumping Systems Incorporating Warranty and Two Types of Repair. Mathematics 2021, 9, 822. https://doi.org/10.3390/math9080822
Goyal N, Ram M, Kumar A, Bisht S, Klochkov Y. Reliability Measures and Profit Exploration of Windmill Water-Pumping Systems Incorporating Warranty and Two Types of Repair. Mathematics. 2021; 9(8):822. https://doi.org/10.3390/math9080822
Chicago/Turabian StyleGoyal, Nupur, Mangey Ram, Akshay Kumar, Soni Bisht, and Yury Klochkov. 2021. "Reliability Measures and Profit Exploration of Windmill Water-Pumping Systems Incorporating Warranty and Two Types of Repair" Mathematics 9, no. 8: 822. https://doi.org/10.3390/math9080822
APA StyleGoyal, N., Ram, M., Kumar, A., Bisht, S., & Klochkov, Y. (2021). Reliability Measures and Profit Exploration of Windmill Water-Pumping Systems Incorporating Warranty and Two Types of Repair. Mathematics, 9(8), 822. https://doi.org/10.3390/math9080822