High Proportion of Distributed PV Reliability Planning Method Based on Big Data
Abstract
:1. Introduction
2. Planning Method Based on Big Data
2.1. Planning Architecture Based on Big Data
2.2. Source–Network–Load Big Data Correlation
- (1)
- Accuracy: Various massive data from the Internet across regions, borders, and industries are fully used, the characteristics of photovoltaics and user are explored, and these promote source–load complementarity.
- (2)
- Interactivity: The big data model realizes deep interaction between sources and loads during planning and source–load simulation operation, which can avoid the blindness of energy planning due to information asymmetry.
- (3)
- Orderliness: The power generation and consumption behavior is intuitively evaluated by the source and load interaction. In a certain area, the source is determined by the load, and the load is determined by the source. These achieve orderliness in distributed photovoltaic planning.
- (4)
- Economical: Through source–load interaction, the operation distribution information of source–load can be obtained in time, and the precise correspondence relation between source–load capacity can be determined with less waste and more high-power-supply reliability.
3. Analytical Models for Big Data Planning
- (1)
- Probabilistic analysis of photovoltaic output
- (2)
- Probabilistic analysis of controllable loads
4. Multi-Scenario Algorithm Based on Big Data
4.1. Scenario Generation
- (1)
- Using historical data and calling the ecdf function in MATLAB statistical toolbox, the empirical probability distribution of the 100 prediction boxes was estimated.
- (2)
- (3)
- Through calculating the 48th-order covariance matrix of the multivariate standard normal random variable Z and calling the mvnmd function of the MATLAB statistical toolbox, 100 random vector samples obeying Z~N(μ0,Σ) were generated.
- (4)
- For each lead time t (t =1, 2, … 48), the prediction box the power point prediction pt of the lead time belonged to was determined. In this way, 100 multivariate normal random vectors were transformed into 100 dynamic scenes.
4.2. Scenario Reduction
4.3. Scene Matching of Source–Load
- (1)
- KD > 1: In this period between point A and point B, the photovoltaic power capacity is greater than the load capacity. If there is excess photovoltaic power, the photovoltaic power may be abandoned. The power supply planning can be appropriately reduced, or the load can be controlled to shift the subsequent electricity load to the present.
- (2)
- KD < 1: In this period during OA and BC, the photovoltaic capacity is less than the load capacity, and the photovoltaic capacity planning can be increased, or the current electricity load can be shifted, or other power sources and energy storage can support it.
- (3)
- KD = 1: In this period of point A and point B, the photovoltaic supply capacity is equal to the load capacity, which is the most ideal situation, but it rarely occurs in practice.
5. Reliability and Capacity-to-Load Ratio Calculation
6. Case Analysis
6.1. Case
6.2. Simulation Results
- (1)
- Source load scene generation and reduction
- (2)
- The weighted average scenario
- (3)
- Border scenes
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Correction Statement
Nomenclature
PSO,i | capacity value of ith photovoltaic |
PL,,j | capacity value of jth photovoltaic |
n | number of photovoltaic access points |
m | number of load |
X | variable in the existing distribution network |
Y = (P,V) | power and voltage variables of photovoltaic and controllable load |
total available photovoltaic capacity | |
total capacity of m controllable loads | |
the upper and lower bound of PSO,i | |
the upper and lower bound of PL,i | |
instantaneous power value of the ith photovoltaic at time t | |
instantaneous power value of the j-th load at time t | |
average capacity–load ratio | |
Gamma function | |
E, Emax | actual light intensity and maximum value |
α,β | shape parameters of the Beta distribution |
actual PV power and maximum value | |
PEV | electric vehicle’s power |
Phome | home load’s power |
PL0 | other load’s power |
kev | proportional coefficient of PEV |
khome | proportional coefficient of Phome |
kL0 | proportional coefficient of PL0 |
S0 | initial scenario set |
Sr | reduced scenario set |
ω | dynamic scenario in S0 |
ωr | scenario in Sr |
p(ω) | probability of ω occurring |
║ω − ωr║2 | Euclidean norm distance between scene ω and ωr |
LOLP | Loss of Load Probability |
LOLE | Loss of Load Expectation |
PSCE | Power Supply Capacity Expectation |
length of the period | |
T | the total time length |
probability of ith scenario of source | |
probability jth scenario of load | |
average power corresponding to jth load scenario | |
average power corresponding to ith source scenario | |
ith scenario of PV power | |
power value of ith PV scenario at time t | |
jth scenario of load power | |
power value of jth load scenario at time t | |
average power of ith PV scenario | |
average power of jth load scenario |
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Node | 2 | 5 | 11 | 14 | 20 | 28 | 32 |
---|---|---|---|---|---|---|---|
Capacity | 500 | 500 | 600 | 600 | 500 | 1000 | 1000 |
LOLP | LOLE | PCSE | ||
---|---|---|---|---|
1 | 0.327 | 289.23 | 573.86 | 1.436 |
2 | 0.296 | 127.15 | 589.26 | 1.467 |
3 | 0.238 | 58.34 | 482.43 | 1.276 |
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Fang, H.; Shang, L.; Dong, X.; Tian, Y. High Proportion of Distributed PV Reliability Planning Method Based on Big Data. Energies 2023, 16, 7692. https://doi.org/10.3390/en16237692
Fang H, Shang L, Dong X, Tian Y. High Proportion of Distributed PV Reliability Planning Method Based on Big Data. Energies. 2023; 16(23):7692. https://doi.org/10.3390/en16237692
Chicago/Turabian StyleFang, Hualiang, Lei Shang, Xuzhu Dong, and Ye Tian. 2023. "High Proportion of Distributed PV Reliability Planning Method Based on Big Data" Energies 16, no. 23: 7692. https://doi.org/10.3390/en16237692