1. Introduction
Facing the severe challenges of increasing power demands, energy shortages, and environmental pollution, it is imperative to realize the sustainable transformation of an energy system [
1,
2]. It is difficult to ensure the safe and reliable operation of the system only by the power supply side of the traditional power system. Distributed energy resources (DER) and diversified demand-side resources can flexibly and friendly respond to adjustment requirements of the power system, with high energy efficiency for clean utilization. Moreover, they have good economic and social benefits [
3,
4,
5]. However, they also have disadvantages of small capacity, scattered location, difficulty for participating in the electricity market alone, and difficult scheduling management [
6]. As a new type of electricity market participant, the VPP can integrate ‘source-load-storage’ through a distributed power management system to achieve geographically dispersed small-capacity resource aggregation and coordinated optimization [
7,
8,
9,
10]. The VPP provides an effective solution for its large-scale grid-connected consumption and participation in market competition, which has gradually become one of the important platforms for DER and demand-side resources to participate in power system scheduling and market transactions [
11,
12,
13].
In recent years, VPP pilot rules involved in the peak shaving market have been issued in North China [
14], East China [
15], Central China [
16], and other places. In China, experiments and pilot projects have been gradually carried out in Jiangsu, northern Hebei, Shanghai, etc. [
17]. In order to improve the overall economy and competitiveness of the VPP, the optimal scheduling of the VPP mainly uses advanced communication technology and control strategy to aggregate and coordinate the internal resources of the VPP in order to participate in the operation of the electricity market [
18,
19]. Therefore, the VPP has the characteristics of participating in electricity market transactions and power system scheduling externally, coordinating and optimizing each member internally [
20,
21]. Regarding the internal optimal scheduling of the VPP, the existing research focuses on the aggregation and coordinated scheduling of wind power, photovoltaic, energy storage, flexible load, and other resources in the VPP to stabilize the system fluctuation caused by the uncertainty of internal renewable energy output and to fully tap the potential of renewable energy power generation [
22,
23,
24]. With regard to the bidding of the VPP in the electricity market, the VPP can participate as a whole in various electricity markets such as the spot market and the ancillary service market [
25,
26,
27,
28]. When the capacity of the VPP is small and the scale is limited, its quotation will not affect the market clearing plan. At this time, the VPP participates in the electricity market as a price receiver [
19].
With the diversification of the main resources involved in the electricity market, when the aggregated members of the VPP belong to different stakeholders, there is a conflict of interest or correlation between the subjects. When the VPP realizes internal and external interaction, its interests should also be taken into account. At this time, the optimal scheduling of each subject within the VPP can be studied through game theory [
20]. The Stackelberg leader–follower game is widely used in multi-agent VPP-bidding decision problems [
29,
30]. Yu et al. [
26] proposed a master–slave game-based VPP internal electricity purchase and sale price formulation method in the spot market environment, which improved the economic benefits of each member. Sun et al. [
20] proposed a three-tier interactive internal and external coordination bidding strategy for the VPPO. It participates in the energy market and the peak shaving market externally, and coordinates with each member internally. However, when the VPP is limited by capacity and characteristics of internal flexible resources, there will be a problem that it cannot participate in the bidding of the peak shaving market due to small differences in some periods. In order to solve the problem when facing the demand of the electricity market, the VPP tends to interact with other subjects that have flexible resources in the distribution network to participate in the market bidding.
At the same time, in order to alleviate the problem of energy shortage and environmental pollution, the number of electric vehicles in China has rapidly increased recently, which has brought about a significant increase in disorderly charging load and increased the difficulty of power grid regulation [
31]. Regarding the charging behavior of electric vehicle clusters, most of the existing research focuses on the modeling of electric vehicles [
32], the behavior habits of car owners [
33], and the interaction with the power grid [
34]. The modeling of electric vehicles includes the modeling of batteries, motors, and inverters [
35,
36]. In order to reduce operating costs, it is necessary to determine the optimal path of the fleet considering mileage, charging demand, and vehicle energy consumption [
37,
38]. Regarding the interaction between electric vehicles and the power grid, including the prediction of charging and discharging of electric vehicle power stations, analysis of the charging behavior of electric vehicles under the guidance of time-of-use electricity prices is necessary [
39,
40]. Under the guidance of time-of-use electricity price, the orderly charging of electric vehicle clusters will have a new peak load problem [
31]. At the same time, this part of the peak load is a flexible resource, but the car owners who respond flexibly to the electricity price cannot use this part of the resource to participate in the peak shaving market to obtain greater benefits. And with the increasing number of electric vehicles, the large-scale flexibility resources in the electric vehicle cluster will not be effectively utilized.
Table 1 shows the existing research contents of VPP and EV clusters, the differences, the existing problems, and the main contributions and innovations of this paper.
The existing research is based on the background that VPP and EV clusters coexist in the distribution network. The VPP will face market bidding problems due to limited internal resources, and EV clusters will have new peak load problems due to orderly charging. In order to solve the above problems, this paper considers the strategy of power interaction between the VPP and EV clusters. However, the limitations of the existing research are reflected in the fact that in the aspect of day-ahead optimal scheduling, the existing research focuses on the bidding strategy of participating in the electricity market, that is, the VPPO leads multi-agents to participate in various electricity markets and the orderly charging strategy of EV clusters in the energy market. It does not consider whether the flexible adjustable resources in EV clusters can play a greater role with the help of the VPP and does not involve the power interaction mode between the VPP and the EV cluster. It includes the formulation of transaction price, the definition of electric energy interaction range, the establishment and solution of transaction model, etc. In summary, the goal of this paper is to solve the above-mentioned problems. The innovation of this article is to propose a VPP day-ahead bidding strategy for multi-level power interactions, achieve full utilization of flexible resources, reduce the burden of power grid regulations, and improve the enthusiasm of market participants.
In this paper, the EV cluster is taken as the interactive object. In order to solve the market bidding problem faced by the limited resources of the VPP, through fully excavating flexible resources of the VPP and the EV cluster, a multi-level power interaction VPP day-ahead bidding strategy is proposed. The result shows that the strategy proposed in this paper realizes the mutual use of the ‘shoulder’ to participate in the bidding of the electricity market, fully taps the potential of flexible resources, mobilizes the enthusiasm of market participants, and achieves mutual benefits and win–win results.
7. Conclusions
The existing distribution network system has a large number of distributed energy and demand-side resources, and the capacity is small, the location is scattered, difficult to manage, and cannot participate in the bidding of the power market alone. As an aggregation platform for various types of small capacity resources, virtual power plants can achieve coordinated and optimized management and can participate in the bidding of the power market as a whole, considering the interests of each participant. In order to fully tap the potential of flexible resources, improve their enthusiasm to participate in the market, and solve the problem of market bidding due to limited resources, the VPPO can be considered to bargain with other operators. Therefore, this paper proposes a multi-level power interaction strategy for the VPP. However, the interaction objects are not limited to EV operators but also include load aggregators, integrated energy system operators, etc. It is the future trend to bargain between the owners of various small capacity resources for energy interaction, which can achieve multiple win–win situations, and diversified energy interaction methods can promote the enthusiasm of the owners of small capacity resources, improve their economic benefits, and reduce the regulation and control pressure of the power grid in a low-cost and efficient way to promote the peak and valley load transfer process of the power grid, promote balanced electricity consumption, and achieve green economic development.
In this paper, a multi-level energy interaction VPP day-ahead bidding strategy is proposed and verified by an example. The following conclusions are drawn: For the VPP, the problem of market bidding with limited resources in the VPP is solved, and the economic benefits of the VPPO and internal subjects are improved. For the EV cluster, the flexible resources of the original translation part in the cluster have the opportunities to participate in the bidding of the peak shaving market, which not only reduces the cost of purchasing electricity but also the corresponding users can obtain compensation for participating in the peak shaving market, effectively solving the peak load problem of the EV cluster from disorderly charging to orderly charging. With the help of each other’s ‘shoulder’, they jointly achieve market bidding and make massive flexible resources actively participate in power grid regulation, reduce the burden of power grid regulation, and ensure the economic and stable operation of the power system. In the current multi-agent market environment, the strategy proposed in this paper has obvious advantages.
The limitations of this paper include the generalization of EV types and specific models, and the charging energy consumption of EVs is not considered. In future research, multi-type EVs can be considered, corresponding models can be established, charging and discharging processes can be taken into account, and energy loss can be considered, which will be closer to practical engineering applications. At the same time, the interaction object is not limited to the EV cluster but also can interact with the integrated energy system operators to achieve multi-level utilization of integrated energy. The strategy proposed in this paper has obvious advantages in the current multi-agent market environment.