Reliability and Availability Optimization of Smart Microgrid Using Specific Configuration of Renewable Resources and Considering Subcomponent Faults
Abstract
:1. Introduction
2. Research Method
3. Model Development of Each Component
3.1. Bridge-Linked PV Panels
3.2. Converters
3.3. Transformer
4. Markov Modeling
5. Availability
6. Results and Discussion
6.1. Genetic Algorithms
6.2. Artificial Neural Networks
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
Average failure rate | |
Repair rate | |
MTTF | Mean time to failure |
MTTR | Mean time to repair |
ANN | Artificial neural networks |
GA | Genetic algorithm |
PV | Photovoltaic panels |
Iot | Internet of things |
PV panel’s reliability | |
Temperature at device junction | |
Temperature at hot-spot for inductor | |
Function of and | |
Factors that change the failure rate of submodels | |
Fabrication factor | |
Environmental factor | |
Stress factor | |
Contact due to construction factor | |
Failure rate of MOSFET | |
Failure rate of diode | |
Failure rate of inductor | |
Probability of correct functioning of fault detection system | |
C | coverage factor |
Failure rate of core | |
Failure rate of winding | |
Failure rate of tank | |
Failure rate of oil coating | |
Failure rate of solid insulation or solid coating | |
Failure rate of bushing | |
Failure rate of tab changer | |
Failure rate of cooling pump | |
Failure rate of cooling fan | |
System-state transition probability from state i to state j | |
Failure rate of kth element | |
Recovery rate | |
Maintenance rate |
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S. No. | Component Name | Failure Modes | Reliability Functions for Submodels |
---|---|---|---|
1 | Core | The core lamination, core joints, and lamination gaps were found to be the most common causes of core failure [24]. | |
2 | Winding | A normal winding non-success occurs when the coating on the winding fails owing to widespread or local overheating [24]. | |
3 | Tank | The high pressure in a transformer’s tank caused by gases, as well as corrosion caused by moisture and aging, are the main causes of the tank’s failure [25]. | |
4 | Oil Coating | The main causes are partial discharge and moisture infiltration; other causes include suspended particles in oil and arcing [24]. | |
5 | Solid Coating | Insulation failure is primarily caused by short circuiting or cellulose aging, according to the electrical survey [24]. | |
6 | Bushing | Overheating and insulation failure cause failure due to dust, water infiltration, and effects on the bushing. | |
7 | Tap-changer | Its operation is mechanical, which means it could break down. Other problems could be caused by motor drives or contact cooking [24]. | |
8 | Cooling Pump | ||
9 | Cooling Fan |
Failure Rate or Repair Rate | Minimum | Maximum Value |
---|---|---|
0.1 | 0.9 | |
0.1 | 1 | |
0.1 | 0.9 | |
0.1 | 0.5 | |
0.1 | 0.9 | |
0.1 | 0.7 |
Methods | MTTF (in Years) |
---|---|
Markov modelling | 26 |
Genetic algorithm | 51 |
Artificial networks | 51.4 |
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Yadav, G.; Joshi, D.; Gopinath, L.; Soni, M.K. Reliability and Availability Optimization of Smart Microgrid Using Specific Configuration of Renewable Resources and Considering Subcomponent Faults. Energies 2022, 15, 5994. https://doi.org/10.3390/en15165994
Yadav G, Joshi D, Gopinath L, Soni MK. Reliability and Availability Optimization of Smart Microgrid Using Specific Configuration of Renewable Resources and Considering Subcomponent Faults. Energies. 2022; 15(16):5994. https://doi.org/10.3390/en15165994
Chicago/Turabian StyleYadav, Geeta, Dheeraj Joshi, Leena Gopinath, and Mahendra Kumar Soni. 2022. "Reliability and Availability Optimization of Smart Microgrid Using Specific Configuration of Renewable Resources and Considering Subcomponent Faults" Energies 15, no. 16: 5994. https://doi.org/10.3390/en15165994