Quality and Reliability-Exploitation Modeling of Power Supply Systems
Abstract
:1. Introduction
2. Review of Literature in the Area of Reliability-Exploitation and Quality Analysis of Power Supply Systems
3. Reliability-Exploitation Analysis of Power Supply Systems
- RO(t)—probability function of the system occurring in full ability state SFA,
- QST(t)—probability function of the system occurring in safety threat state SST,
- QU(t)—probability function of the system occurring in unreliability of safety state SU,
- λST1—transitions rate from full ability state SFA to safety threat state SST,
- μFA1—transitions rate from safety threat state SST to full ability state SFA,
- λST2—transitions rate from safety threat state SST to unreliability of safety state SU,
- μFA2—transitions rate from unreliability of safety state SU to safety threat state SST,
- λFA—transitions rate from full ability state SFA to unreliability of safety state SU.
4. Exploitation Process Modeling of PSSs in TTDs
- test duration—1 year:
- reliability of main power supply:
- reliability of the redundant power supply:
- transition rate from safety threat state to full ability state:
- transition rate from unreliability of safety state to safety threat state:
- transition rate from full ability state to unreliability of safety state:
5. Quality Analysis of PSS in TTD
- Power supply reliability (Dpsr)—a dimension that determines that the reliability of the power system is at an appropriate level to perform a particular task.
- Security (Dse)—a dimension that determines adequate protection of the power supply systems against external factors.
- Availability (Dav)—a dimension that defines the possibility of using electricity on demand, at a given time and by an authorized process. This dimension is directly related to power security.
- Appropriate amount (Daa)—a dimension that determines how much energy is adequate to complete the task, at the same time indicating that the amount is sufficient and that power surplus could reduce the quality.
- Power quality (Dpq)—a dimension that defines the supplied power quality.
- Responsiveness (Dres)—a dimension that determines requested energy availability and whether the supply system will meet this demand.
- Assurance (Das)—a dimension that determines energy availability for the task.
- The value of each dimension (dimension coefficient) can range from 0 to 1.
- The dimension not affecting CQoPS will have the value 1.
- The dimension that significantly reduces CQoPS will have the value 0.
- m—number of dimensions, quality components (equals 7 in accordance with the number of the above-mentioned dimensions),
- w—a variable defining the influence of a given dimension (e.g., value in the range ˂0,1>).
- Factors connected with the main source of supply. In this case, the source could be the power installation. This group of factors will include main power supply reliability [57], power availability (whether sufficient power is provided), and service errors. Factors connected with source of supply will influence the value of intermediate hypothesis h1.
- Factors connected with a standby source of supply. In this case, the source could be a local power-generating unit. This group of factors will include standby power supply reliability [4,32], power availability (whether sufficient power is provided), and service errors of the local power-generating unit. Factors connected with standby power supply will influence the value of intermediate hypothesis h2.
- h1—Main source of supply provides electrical power (on the basis of observation e1),
- h2—Standby source of supply provides power (on the basis of observation e2).
- e1.1—main supply system functions correctly,
- e1.2—failure of external supply system,
- e1.3—lack of external power.
- e2.1—standby power supply system functions correctly,
- e2.2—power shortage from standby source (e.g., poorly designed supply network),
- e2.3—power shortage from standby source (e.g., poorly designed supply network).
6. Uncertainty Modeling
- A, B, and C—are the sources of observation which represent the subset of Θ set,
- m1im2—sets of masses,
- m3—a new set of mass.
7. Applying Mathematical Evidence in Evaluating CQoPS Modeling
8. CQoPS Simulation and its Results
9. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Observation | Value |
---|---|
e1.1 | 0.999 |
e1.2 | 0.1 |
e1.3 | 0.02 |
Observation | Value |
---|---|
e2.1 | 0.9999 |
e2.2 | 0.08 |
e2.3 | 0.03 |
m2 ({e1.1}) = 0.999 m2 (Θ) = 0.001 | m2 ({e1.1}) | m2 (Θ) |
---|---|---|
m1 (Θ) | m3 ({e1.1}) | m3 (Θ) |
m4 ({e1.2}) = 0.1 m4 (Θ) = 0.9 | m4 ({e1.2}) | m4 (Θ) |
---|---|---|
m3 ({e1.1}) | m5 ({Ø}) | m5 ({e1.1}) |
m3 (Θ) | m5 ({e1.2}) | m5 (Θ) |
m6 ({e1.3}) = 0.02 m6 (Θ) = 0.98 | m6 ({e1.3}) | m6 (Θ) |
---|---|---|
m5 ({Ø}) | m7 ({Ø}) | m7 ({Ø}) |
m5 ({e1.2}) | m7 ({e1.2}) | m7 ({e1.2}) |
m5 ({e1.1}) | m7 ({Ø}) | m7 ({e1.1}) |
m5 (Θ) | m7 ({e1.3}) | m7 (Θ) |
m2 ({h1`}) = 0.16 m2 (Θh`) = 0.84 | m2 ({h1`}) | m2 (Θh`) |
---|---|---|
m1 (Θh`) | m3 ({h1`}) | m3 (Θh`) |
m4 ({h2`}) = 0.14 m4 (Θh`) = 0.86 | m4 ({h2`}) | m4 (Θh`) |
---|---|---|
m3 ({h1`}) | m5 ({Øh`}) | m5 ({h1`}) |
m3 (Θh`) | m5 ({h2`}) | m5 (Θh`) |
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Stawowy, M.; Rosiński, A.; Siergiejczyk, M.; Perlicki, K. Quality and Reliability-Exploitation Modeling of Power Supply Systems. Energies 2021, 14, 2727. https://doi.org/10.3390/en14092727
Stawowy M, Rosiński A, Siergiejczyk M, Perlicki K. Quality and Reliability-Exploitation Modeling of Power Supply Systems. Energies. 2021; 14(9):2727. https://doi.org/10.3390/en14092727
Chicago/Turabian StyleStawowy, Marek, Adam Rosiński, Mirosław Siergiejczyk, and Krzysztof Perlicki. 2021. "Quality and Reliability-Exploitation Modeling of Power Supply Systems" Energies 14, no. 9: 2727. https://doi.org/10.3390/en14092727
APA StyleStawowy, M., Rosiński, A., Siergiejczyk, M., & Perlicki, K. (2021). Quality and Reliability-Exploitation Modeling of Power Supply Systems. Energies, 14(9), 2727. https://doi.org/10.3390/en14092727