An EV cluster aggregator can adjust the economic satisfaction degree on the basis of the price sensitivity of different users, so as to guide EV users to change their charging behaviors by price signals, and meet the unbalanced demand of the micro-grid in each time period of the next day. The flow chart of dynamic time-of-use pricing strategy for EV charging is shown in
Figure 4. This strategy consists of two parts: (1) in the first part, the EV cluster aggregator arranges the charging plans with the target of minimum charging cost of EV users guided by the peak-valley price; (2) on the basis of the electrical load obtained by the former part, the second part takes the balance of supply and demand of the micro-grid as the goal, to determine the dispatching requirements of the EV cluster for each time period, and continuously update the charging price. During the process, the price is restricted to the peak-valley price, generation, and transmission costs of renewable energy, and the comprehensive satisfaction degree of EV users, until the number of EVs participating in the dispatching can meet the demand as much as possible. The dynamic time-of-use charging price is calculated by following steps.
4.2.2. Calculation of the Dynamic Time-Of-Use Charging Price
The peak-valley price is commonly formulated according to the electrical load of the grid. Since the output of distributed generators is unstable and the electrical load is fluctuating, the unbalanced power in the micro-grid is taken as the basis of formulating dynamic time-of-use price. Based on the load curve
and the output of renewable energy, the balance of supply and demand of the grid is taken as the goal, to decide the dispatching demand for EV cluster in the time period
, which is shown in Equation (16):
where
is the output of wind turbines in the time period
,
is the output of photovoltaic in the time period
, and
is the electrical load in the time period
under peak-valley price of the micro-grid.
Considering the generation and transmission costs of renewable energy and the peak-valley price in the micro-grid, the dynamic time-of-use price of EVs can only be adjusted within a certain range. On the one hand, the adjusted charging price in the time period cannot be higher than the corresponding peak-valley price, otherwise the EV users will not be stimulated to participate in the load adjustment. On the other hand, the adjusted charging price should not be lower than the generation and transmission costs of renewable energy, in order not to reduce the operational economic efficiency of the entire micro-grid. Therefore, the peak-valley price and the generation and transmission costs of renewable energy are taken as the upper/lower limits of the charging price adjustment, respectively, and the dynamic time-of-use price in the time period is updated within this range. This paper treats the peak-valley price as the initial charging price, to maximize the economic benefits of the micro-grid. When the number of EVs that can be dispatched under the updated time-of-use price could meet the dispatching demand, the relevant number of EVs and the charging price can be obtained. If the updated time-of-use price is lower than the lower limit , even when the number of EVs responding to the grid still cannot reach the dispatching demand, the previous charging price and EV number will be the output. In addition, the EV users who do not respond to dispatching signals in the above process are charged according to the peak-valley price.
The strategy proposed in this paper takes the balance of supply and demand of the micro-grid as the goal and fully considers the choice of EV users. The difference between the actual capacity of EVs responding to the grid and dispatching demand is set as the objective function as shown in Equation (17).
where
is the number of EVs responding to the grid in the time period
. It can be seen from the formula that this paper solves the convex quadratic programming problem, i.e., the solution is the global optimal solution.
The number of EVs responding to the dispatching periods is related to the users’ driving demands, battery parameters, charging price, and user satisfaction degree. The constraint conditions are as follows:
1. The battery constraint of EV charging
In order to avoid overcharging resulting in the damage of battery lifetime, the battery of EV is assumed that can be charged within the maximum and minimum SOC. At the same time, the charging power is limited to the maximum and minimum values.
where
is the state of charge of EV
at time
,
and
are the higher/lower limits of SOC of the EVs participating in the dispatching respectively.
and
are the higher/lower limits of charging power.
2. The charging requirements constraint for EVs
The SOC at the leaving time from the grid should meet the minimum electricity required by the user for the next trip.
3. The number constraint of EV charging
The number of EVs that participate in the dispatching should not be more than the number of controllable EVs in each time period.
where
is the number of controllable EVs in the time period
.
4. The higher/lower constraints of charging price for EVs
The adjusted time-of-use charging price cannot be higher than the peak-valley price, or lower than the generation and transmission costs of renewable energy accordingly in each time period.
where
is the generation and transmission costs of renewable energy of the micro-grid, and
is the peak-valley price in the time period
.
5. The constraint of user comprehensive satisfaction degree
The user comprehensive satisfaction degree obtained by weighting sub-item satisfaction degrees should meet the minimum value that the user will be willing to participate in the power system dispatching.
where
is the user comprehensive satisfaction degree of EV
, and
is the minimum comprehensive satisfaction degree of participating in the power system dispatching for EV
i, whose value in this paper is 0.8, and the minimum value of comprehensive satisfaction degree can be set according to the actual situation.