Smart Distribution Systems
Abstract
:1. Introduction
2. Smart Distribution System Development in the U.S.
2.1. Enhanced System Reliability Utilizing Smart Grid Technologies
2.2. Smart Distribution Systems under Extreme Events
3. Smart Metering Technology
- (1)
- Automatic customer billing: compared with kilo-watt meters, which need tedious on-site meter reading work, smart meters automatically send energy consumption data to the utility. It is reported by Avista Utilities, based in Spokane, WA, that developed customer billing portals using smart meter data reveal significant benefit to utilities as well as customers. The benefit includes recording the billing history, analyzing the bill to identify ways to increase energy efficiency, and acting as online home energy advisor to outline ways to save energy [32].
- (2)
- State estimation of distribution systems: numerous data from smart meters can be used for state estimation of distribution systems [33]. Different methods, such as weighted least square (WLS) [34], Bayesian network [35], graph theory [36], and machine learning [37], are proposed for state estimation.
- (3)
- Volt/VAR management: voltage and reactive power management is essential for utilities to minimize power losses while maintaining an acceptable voltage profile along the distribution feeder under various loading conditions [38,39]. The near real-time voltage measurements from smart meters can be used as inputs for Volt/VAR controls to support decision-making, such as switch-on/off of capacitor banks and adjustment of voltage regulator tap positions.
- (4)
- Remote connect/disconnect: two-way communications of smart meters enable distribution operators to remotely connect and disconnect meters. If a customer defaults on electricity payment, a command to the smart meter can quickly cut the customer’s power supply. Connect/disconnect functions of smart meters provide distribution operators with more remote control capability to reduce dispatching field crews [14].
- (5)
- Demand response: demand response is aimed to reduce the peak load [40], which avoids utilities from purchasing electricity at a high cost and delays the construction of new power substations. According to the U.S. Federal Energy Regulatory Commission (FERC), an estimation of 41,000 MW power is reduced through existing demand response programs in 2008 [41]. Different methods for demand response are proposed based on varying electricity prices [42,43,44] or incentives [45]. These demand response programs can be implemented through smart meters to control appliances so as to change customers’ energy consumption patterns.
- (6)
- Load modeling and forecasting: accurate load modeling and forecasting is crucial for system operations and resource planning [46]. Using data from smart meters, the daily energy consumption pattern of each customer can be identified. The loading profile of each distribution transformer is determined through aggregating energy consumption from customers downstream. The temporal relationship among different load patterns can be used for load forecasting [47].
4. Enhanced Outage Management System
4.1. OMS Based on Trouble Call Handling and Meter Polling
4.2. Enhanced Outage Management Based on TCD
- : number of smart meters downstream the protective device reporting a power outage;
- : total number of smart meters downstream the protective device;
- Cred.: percentage of downstream smart meters reporting an outage, ;
- : time of occurrence of a fault;
- : time window to select the smart meter notifications corresponding to an outage.
5. Distribution System Restoration
5.1. Service Restoration Procedure
5.2. Service Restoration Algorithms
5.3. Test Case
6. Remote Control Capability in Smart Distribution Systems
6.1. Placement of Remote-Controlled Switches
6.2. Improve System Reliability with Remote Control Capability
- (1)
- the mean time to operate a manual switch is 90 min;
- (2)
- the mean time to operate a remote-controlled switch is 1 min;
- (3)
- the permanence failure rate of all zones is 0.02 per year;
- (4)
- the mean time to repair the damaged component is 4 h.
7. Distribution System Resilience with Respect to Extreme Events
7.1. Approaches to Resilient Distribution Systems
7.2. Test Case
8. Smart Distribution System Development around the World
8.1. Smart Distribution System Development in Europe
8.2. Active Management of DGs in Smart Distribution Systems
9. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Index | Fault Location | Switching Operations without Microgrids | Switching Operations with Microgrids |
---|---|---|---|
1 | Z139 | Open: Z46–Z47, Z96–Z89 Close: Z136–Z120, Z53–Z96, Z45–Z90 Partial Restoration, 315.04 kVA load should be shed at F-b | Open: Z50–Z43, Z90–Z92 Close: Z45–Z90, Z73–Microgrid 2, Z136–Z120 |
2 | Z23 | Open: Z49–Z50, Z90–Z92 Close: Z78–Z9, Z53–Z96, Z136–Z120 | Close: Z39–Microgrid 1 |
Tie Switches | T1, T2, T5, T6 and T7 |
---|---|
Microgrid switches | Z39–Microgrid 1, Z73–Microgrid 2, Z93–Microgrid 3, and Z160–Microgrid 4 |
Sectionalizing switches | Z2–Z14, Z10–Z26, Z46–Z47, Z50–Z43, Z90–Z106, Z96–Z89, Z130–Z146 and Z130–Z132 |
Index | Without RCSs | With RCSs | Improvement |
---|---|---|---|
SAIDI (minute/year) | 181.72 | 44.17 | 75.70% |
SAIFI (/year) | 0.7800 | 0.6548 | 16.05% |
Step | Active Power (kW) | Reactive Power (kVar) | Apparent Power (kVA) |
---|---|---|---|
1 | 137.8 | 45.44 | 145.1 |
2 | 429.6 | 142.7 | 452.7 |
3 | 621.1 | 436.6 | 795.1 |
4 | 1325 | 455.5 | 1401 |
Step | 1 | 2 | 3 | 4 | ||||
---|---|---|---|---|---|---|---|---|
Critical Load | Voltage (kV) | Voltage (p.u.) | Voltage (kV) | Voltage (p.u.) | Voltage (kV) | Voltage (p.u.) | Voltage (kV) | Voltage (p.u.) |
City Hall | 0 | 0 | 0 | 0 | 7.914 | 0.993 | 7.889 | 0.99 |
Hospital | 0 | 0 | 0 | 0 | 0 | 0 | 7.873 | 0.988 |
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Jiang, Y.; Liu, C.-C.; Xu, Y. Smart Distribution Systems. Energies 2016, 9, 297. https://doi.org/10.3390/en9040297
Jiang Y, Liu C-C, Xu Y. Smart Distribution Systems. Energies. 2016; 9(4):297. https://doi.org/10.3390/en9040297
Chicago/Turabian StyleJiang, Yazhou, Chen-Ching Liu, and Yin Xu. 2016. "Smart Distribution Systems" Energies 9, no. 4: 297. https://doi.org/10.3390/en9040297
APA StyleJiang, Y., Liu, C. -C., & Xu, Y. (2016). Smart Distribution Systems. Energies, 9(4), 297. https://doi.org/10.3390/en9040297