Decentralized Electric Vehicle Charging Strategies for Reduced Load Variation and Guaranteed Charge Completion in Regional Distribution Grids
Abstract
:1. Introduction
- Centralized control: A common feature of these strategies is a centralized control system that bi-directionally communicates with all EVs and manages charging time and power to optimize certain objective functions, such as minimizing carbon dioxide emissions [11], minimum power loss, minimum cost, or “valley-filling”, by using EV data (the connection time to the grid, charge demand, rated voltage, and charger power) [12,13,14,15]. Such control strategies require extensive real-time bi-directional communications, with increased costs on communications equipment and resources and, consequently, they are not desirable to charging service providers. Commonly used algorithms in centralized control, including linear programming, quadratic programming, dynamic programming, stochastic programing, robust optimization, model predictive control, etc., are summarized and presented in [16,17]. A new stochastic model with several uncertainty sources is proposed in [18] to minimize the expected operational cost of the energy aggregator based on stochastic programming, and this method needs a central control center to communicate with the local controllers of DERs, and is required to allow the broadcast of the electricity market prices for the next 24 h.
- Distributed control: Typically, in these distributed methods, a central control system broadcasts a common electricity price or a reference power signal to all EVs. Then each EV decides individually, and locally, its charging power and time, based on its own parameters and associated optimization criteria [10,19]. To some extent, these strategies can achieve asymptotically the optimization targets with reduced data computations. However, the central control system still communicates with EVs either uni-directionally or bi-directionally. A pricing mechanism based on time and power scales is proposed in [20], where the electricity price is used as a common reference signal with only uni-directional data transmission. The impact of EV charging loads on Swiss distribution substations under different penetration levels and pricing regimes was studied in [21], and states that the introduction of dynamic electricity prices can further increase the risk of substation overloads compared to a flat electricity tariff. However, to achieve good control performance, it must construct real-time curves of electricity pricing that vary with load power during different time intervals, leading to increased control implementation complexity, costs, and potentially decreased charging efficiency [10]. Katarina and Mattia [22] propose a voltage-dependent EV reactive power control for grid support to raise the minimum phase-to-neutral voltage magnitudes and to improve voltage dispersion. However, it needs local voltage measurements. Another local control technique is also proposed in [23] whereby individual electric vehicle charging units attempt to maximize their own charging rate along with the information about the instantaneous voltage of their own point and loading of the service cable.
2. Charging Station Models
2.1. Regional Distribution Grid Models
2.2. Models of EV Returning-Time and Charging Demand
- (1)
- The returning time and charging demand of each EV are mutually independent.
- (2)
- The returning times of all the vehicles are independent and identically distributed (i.i.d.) with density function fs.
- (3)
- The charging demands of all the vehicles are i.i.d. with density function fD.
2.3. Efficiency Analysis of On-Board Chargers
3. Autonomous Stochastic Charging Control Strategy (ASCCS)
3.1. Basic Control Strategy
3.2. Power Variation Analysis
3.3. Charge Completion Analysis
4. Implementation and Improvements of ASCCS
4.1. Individualized Power Management for Reducing Power Variations
4.2. Adaptive Charging Control for Improving Charge Completion
- (a)
- If at any , , namely, the EV is fully charged, then . Hence, overcharging is avoided.
- (b)
- If at any , , namely, the remaining charging demand is equal to the remaining available blocks, then . Hence, incomplete charging is avoided.
- (c)
- Otherwise, this strategy ensures that is the optimal average power for completing the charge over the remaining blocks based on Theorem 3. Indeed, if we view the remaining charge demand at k as and the remaining time as , then , which is consistent with the optimal strategy in Theorem 3.
- (1)
- Assume that . Noticing that is monotonically increasing over k and , it follows that there must exist for some by the assumption . However, we have
- (2)
- Assume . Thus, we have . In the case that , we have
4.3. Simulation on Improved ASCCS
5. Grid-Support Battery Storage for Reducing Power Variations
5.1. Analysis
5.2. A Case Study
6. Application of the ASCCS Method in Valley-Filling Problems with a Conventional Load
- (a)
- Based on the information on the regular loads and daily EV load demand C, the grid scheduler assigns a time interval to be the interval of the valley-filling operation.
- (b)
- is divided into N time blocks, which are then grouped into L phases of K = N / L blocks each (for simplicity, let K be an integer). The new charging duration in each phase is
- (c)
- For the ith EV, its daily charge demand is distributed to each phase as such that .
- (d)
- Within each phase, the adaptive ASCCS algorithm, described in Section 4.2, is applied, which reduces load fluctuations among the time blocks in each phase and guarantees that the charge demand will be completed at the end of each phase.
7. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Symbol | Explanation |
---|---|
M | Number of EVs |
Ci | Average daily charging demand of the ith EV |
pmax | Maximum output power of on-board charger |
pc | EV charging power |
T | EV charging time period |
tstart | EV charging start time |
tend | EV charging end time |
The charging power for the ith vehicle in the kth time block | |
Length of one time block | |
N | Number of time blocks |
The total charging energy of ith EV in the entire time period | |
fi(k) | The ith EV charging probability constant in the kth time block |
Xi | Needed number of time blocks for the ith EV |
Number of time blocks charged for the ith EV after k − 1 time blocks | |
pEV(k) | The EV charging power in the kth time block |
pB(k) | The battery output in the kth time block |
PLoad(k) | The battery-supported load power in the kth time block |
S(k) | SOC (State of Charge) of the battery storage system in the kth time block |
Q | The energy capacity of the battery storage system in the kth time block |
pbase(k) | Regular load of regional distribution gird |
L | Number of the phases that the whole charging period is divided into considering the regular load |
T’ | The new charging duration in each phase |
B | Desired value of sum of regular load and EV charging power in the regional distribution gird |
Ci(l) | The charging demand of the ith EV in lth phase |
Charge Duration T (Hour) | 6 | 7 | 8 | 9 |
---|---|---|---|---|
69.2% | 81.3% | 89.0% | 93.5% | |
Average efficiency | 91.3% | 90.4% | 89.5% | 88.7% |
Number M of EVs | 100 | 300 | 500 | 1000 |
---|---|---|---|---|
Maximum power fluctuation | 29% | 15% | 12% | 6% |
Number N of Time Blocks | 16 | 32 | 96 | 480 |
---|---|---|---|---|
Charge completion | 86.6% | 88.8% | 94.5% | 97.2% |
Case Number | 1 | 2 | 3 | 4 |
---|---|---|---|---|
Energy capacity (kWh) | No battery | 6.5 | 10.4 | 14.3 |
Maximum power (kW) | No battery | 3.25 | 5.2 | 7.15 |
Maximum power fluctuations | 6% | 5% | 3% | 1% |
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Zhang, W.; Zhang, D.; Mu, B.; Wang, L.Y.; Bao, Y.; Jiang, J.; Morais, H. Decentralized Electric Vehicle Charging Strategies for Reduced Load Variation and Guaranteed Charge Completion in Regional Distribution Grids. Energies 2017, 10, 147. https://doi.org/10.3390/en10020147
Zhang W, Zhang D, Mu B, Wang LY, Bao Y, Jiang J, Morais H. Decentralized Electric Vehicle Charging Strategies for Reduced Load Variation and Guaranteed Charge Completion in Regional Distribution Grids. Energies. 2017; 10(2):147. https://doi.org/10.3390/en10020147
Chicago/Turabian StyleZhang, Weige, Di Zhang, Biqiang Mu, Le Yi Wang, Yan Bao, Jiuchun Jiang, and Hugo Morais. 2017. "Decentralized Electric Vehicle Charging Strategies for Reduced Load Variation and Guaranteed Charge Completion in Regional Distribution Grids" Energies 10, no. 2: 147. https://doi.org/10.3390/en10020147
APA StyleZhang, W., Zhang, D., Mu, B., Wang, L. Y., Bao, Y., Jiang, J., & Morais, H. (2017). Decentralized Electric Vehicle Charging Strategies for Reduced Load Variation and Guaranteed Charge Completion in Regional Distribution Grids. Energies, 10(2), 147. https://doi.org/10.3390/en10020147