making model based on the characteristics of demand
response behaviour, such as demand price elasticity.
The user side demand response mechanism, power
consumption characteristic behaviour analysis and
power big data application research in the United
States are in a leading position in the world. The
famous power big data application is "Los Angeles
power map", which gathers the information of each
block, users’ personal information, power
consumption information, geographic information,
meteorological information and local economic
information to obtain the law of user's power
consumption behaviour, and the analysis aims to
assist energy decision-making and investment. In
2012, the U.S. government announced the launch of
the "big data research and development plan". In
2013, the Electric Power Research Institute (EPRI)
launched two big data research projects: transmission
and distribution network modernization
demonstration projects (Catterson, 2016, Mcarthur,
2016). In the E-Energy plan of the German Federal
Economic Department, two demonstration projects
have applied power big data analysis to provide
preliminary solutions for energy Internet technology
(Wang, 2011, Wang, 2011).
For the participation of VPP in market bidding,
plenty of studies have established demand response
scheduling models based on price incentive
information (Nguyen, 2018, Le, 2018, Wang, 2018).
On the basis of considering the uncertainty of new
energy output and market electricity price, literature
(Chen, et al, 2018) establishes three-stage market
transactions including day-ahead, day-in and real-
time demand response. Literature (Xu, et al, 2019)
and (Niu, 2014, Li, 2014, Wang, 2014) only consider
the transactions in the power market when
participating in electric market. Literature (Song, et
al, 2017) and (Anvarimoghaddam, et al, 2017)
established the bidding strategy of multiple VPP
based on game theory. In the market bidding strategy,
the VPP can not only act as the seller of energy, but
also act as the buyer of energy, which fully explores
the flexibility of its market traders and is conducive
to the stable economic operation of the energy
market. The coordinated operation of demand
response in VPP can bid in different types of markets
to maximize benefits. The participation of VPP in
energy market bidding can give full play to the
commercial value of VPP and greatly enhance the
value of renewable energy resources.
To sum up, the existing research on VPP bidding
strategy mainly focuses on considering the
uncertainty of power demand response and renewable
energy output. In terms of market bidding strategy,
the impact of comprehensive demand response on
market bidding is relatively small. Therefore, it is of
great theoretical value and practical significance to
carry out the analysis of multi-user energy and power
consumption behaviour and bidding strategy
modelling and analysis considering the demand
response ability of users and demand response
resources including VPP. Based on the above
research background, it can be seen that there is an
urgent need to carry out research on multi-user power
consumption behaviour analysis and modelling
technology, extract user power consumption
behaviour characteristics based on big data
technology, and formulate demand response bidding
strategy model considering VPP.
Based on the above-mentioned literatures and
current situation analyses, the bidding strategy of
VPP has become an important problem we need to
consider in electric power market. However, the
theoretical model mentioned above has not been
established. Therefore, it is of great significance to
consider the impact of VPP and other demand side
power response in the determined power grid, and
then put forward the corresponding bidding
strategies. The specific research contents of this paper
are as follows:
1) Combined with the comprehensive demand
response and VPP technology, this paper puts
forward a two-stage bidding strategy to optimize the
system operation. The proposed model can reduce the
limitations of scattered individual load user demand
response potential based on big data technology.
2) The proposed model can condense the load
demand response resources of multiple users in
power system, and provide important technical
support for creating a flexible multi cluster user
demand response system.
3) This paper considers the demand response
resources including VPP to participate in the power
market bidding model, which can give full play to the
energy utilization potential and complementary
advantages of multiple end users, and then improve
the coupling degree between various user loads.
The rest part of this paper is structed as follows:
Section II describes the VPP modeling. We then
discuss the energy market structure in Section III. The
numerical results were shown in Section IV. Section
V draws the conclusion of paper.