This application claims priority to Chinese Patent Application No. 202210887009.3, filed on Jul. 26, 2022, the contents of which are hereby incorporated by reference.
The application relates to the technical field of power system risk assessment, and in particular to a method and a device for analyzing virtual power plant operation risks.
With the “carbon emission peak and carbon neutrality” goal put forward, distributed energy resources on a demand side of power, such as distributed wind power and industrial loads, can be aggregated into virtual power plant to improve the flexibility of power system. However, on the one hand, an output of the virtual power plant aggregated by distributed wind power is affected by uncertain factors such as wind speeds; on the other hand, different wind speeds have an impact on a failure rate of wind turbines, further affects the output of the virtual power plant composed of distributed power generators, and brings risks to the safe and reliable operation of the internal industrial loads of virtual power plants.
A conventional failure rate analysis model adopts fixed failure rate analysis, which is difficult to reflect influence of wind speeds and other factors on distributed generator equipment. In addition, the conventional reliability analysis model is generally a two-state model, and a multi-state model can be used to analyze a system reliability more accurately. Therefore, it is necessary to propose a method and a device for analyzing virtual power plant operation risk considering time-varying failure rates of distributed wind power.
The application aims to overcome the shortcomings of the prior art and provide a method and a device for analyzing virtual power plant operation risks. Compared with a conventional two-state reliability analysis method, a method for analyzing virtual power plant operation risk considering time-varying failure rate of distributed wind power is provided to analyze virtual power plant operation risks more accurately.
To achieve the above objective, the present application provides the following solutions.
A method for analyzing virtual power plant operation risk includes:
S1, establishing a multi-state model of wind turbine output,
S2, analyzing influence of wind speed on wind turbine failure rate based on the multi-state model of wind turbine output, and establishing a wind turbine failure model considering wind turbine time-varying failure rates;
S3, establishing a multi-state model of the wind turbine output considering the wind speed and the wind turbine time-varying failure rate by an improved general generating function method based on the multi-state model of wind turbine output and the wind turbine failure model considering wind turbine time-varying failure rate;
S4, establishing a multi-state output model of virtual power plant based on the multi-state model of the wind turbine output considering the wind speed and the wind turbine time-varying failure rate; and
S5, calculating operation risk indicators of the virtual power plant through the multi-state output model of virtual power plant, and completing an analysis of the virtual power plant operation risk.
Optionally, establishing the multi-state model of wind turbine output includes:
Optionally the relationship between wind speed and wind turbine output is:
The time-varying probability value qi,k(t) of the wind turbine output wpi,k1 of the ks-th state is:
The multi-state model of the wind turbine output is:
Optionally, establishing the wind turbine failure model considering wind turbine time-varying failure rate includes:
λI(t)=λi,0+λi,s(t),
A relationship model between the variable failure rate of wind turbine i caused by wind speed at time t and wind speed s(t) is as follows:
λi,s(t)=(λi,maxs(t)2−λi,mins(t)2)/(sico2−sici2)+cs,
Optionally, the basic failure rate of the wind turbine at different wind speeds is described by the multi-state model, and the variable failure rate of the wind turbine at different wind speeds is considered, so that failure probability of the wind turbine is:
q
i,k
wt(t)=1−e-λ
In above formula, t is time, qi,kwt represents the failure probability of wind turbine i at ks-th wind speed at time t , and the failure rate of wind turbine i at the ks-th wind speed at time t.
Based on the failure probability of the wind turbine, the failure model of the wind turbine i in the ks-th wind speed state is established by using the improved general generating function method:
u
i
2(z,t)=(1−qi,kwt(t)·z1+qi,kwt(t)·z0=e-λ
Optionally, the multi-state model of the wind turbine output considering the wind speed and the wind turbine time-varying failure rate is:
Optionally, the multi-state model of the virtual power plant composed of a plurality of distributed wind power is established through the multi-state model of wind turbine output considering wind speed and the wind turbine time-varying failure rate:
Optionally, operation risk indicators of the virtual power plant are calculated:
In order to achieve the above objectives, the present application also provides a device for analyzing virtual power plant operation risks, and the device includes:
The application has following beneficial effects.
The method and the device for analyzing virtual power plant operation risks provided by the application calculate the power supply shortage probability, expected power supply shortage, power supply shortage loss of industrial users in the virtual power plant, etc. for quantitatively evaluating the operation risk indicators of virtual power plant by analyzing the influence of wind speed on wind turbine failure rate, considering the influence of wind turbine time-varying failure rate on distributed wind power output, and considering multi-state characteristics of virtual power plant output in an actual operation process, so as to improve the operation risk assessment accuracy and reliability of the virtual power plant composed of distributed wind powers.
In order to more clearly explain the embodiments of the present application or the technical solutions in the prior art, the following will briefly introduce the drawings that need to be used in the embodiments. Obviously, the drawings in the following description are only some embodiments of the present application. For those of ordinary skill in the art, other drawings may be obtained according to these drawings without any creative labor.
The technical solutions in embodiments of the present application will be clearly and completely described below with reference to the drawings in embodiments of the present application. Obviously, the described embodiments are only part of the embodiments of the present application, but not all of them. Based on the embodiment of the present application, all other embodiments obtained by ordinary technicians in the field without creative labor are within the scope of the present application.
In order to make the above objects, features and advantages of the present application more obvious and understandable, the present application will be explained in further detail below with reference to the drawings and detailed description.
A flow chart of a virtual power plant operation risk analysis method shown in
S1, A multi-state model of wind turbine output without considering wind turbine failure is established.
The S1 specifically includes:
When the wind turbine is running well, relationship between output of wind turbine i and the wind speed is expressed by the following formula:
The wind speed S(t) is divided into Ks states, and a multi-state wind speed model is established. The wind speed of ks(ks=1, . . . ,Ks)-th state is sk, and sk<sk+1. Transition rate between different wind speed states ks, ls is γk,ls where ks and ls represent serial numbers of different wind speed states, respectively.
The multi-state model of wind turbine output is established according to the relationship between wind turbine output and wind speed in normal operation of wind turbine. Markov process is used to model the wind turbine output, wpi1(t) is divided into Ks states, and the wind turbine output in the ks(ks=1, . . . , Ks)-th state is wpi,k1, and wpi,k1<wpi,k+11. Time-varying probability value qi,k(t) of the wind turbine output wpi,k1 in the ks-th state is obtained according to differential equations of multi-state Markov process as follows:
A multi-state model of the output of the wind turbine i is established by using an improved general generating function method and is expressed by following formula.
S2, Influence of wind speed on wind turbine failure rate is analyzed, and a wind turbine failure model is established considering the wind turbine time-varying failure rate.
The S2 specifically includes:
As the wind turbine failure in the virtual power plant is closely related to the wind speed, the application considers the influence of the wind speed change on the wind turbine failure rate, and the wind turbine time-varying failure rate consists of basic failure rate of the wind turbine and variable failure rate of the wind turbine caused by the wind speed, as shown in the following formula:
λI(t)=λi,0+λi,s(t),
A relationship model between the variable failure rate of wind turbine i caused by wind speed at time t and wind speed s(t) is as follows:
λi,s(t)=(λi,maxs(t)2−λi,mins(t)2)/(sico2−sici2)+cs,
According to the application, the influence of the change of wind speed on the failure rate of the wind turbine is considered, and a multi-state model is adopted to describe the failure rate of the wind turbine at different wind speeds. Accordingly, the failure rate λi (t) of the wind turbine i is divided into Ks states according to divided s(t) states of wind speed s(t), and the failure rate of the ks(ks=1, . . . , Ks)-th state is λi,k and λi,k<λi,k+1. The failure model of the wind turbine usually adopts two-state model. The two-state refers to normal operation state and complete failure state. Considering the wind turbine time-varying failure rate λi,k under different wind speeds, the failure probability of the wind turbine under the ks(ks=1, . . . , Ks)-th wind speed state is obtained as follows:
q
i,k
wt(t)=1−e-λ
Based on the failure probability of the wind turbine, the failure model of the wind turbine i in the ks-th wind speed state is established by using the improved general generating function method:
u
i
2(z,t)=(1−qi,kwt(t)·z1+qi,kwt(t)·z0=e-λ
S3, On the basis of S1 and S2, a multi-state output model of distributed wind power considering wind speed and wind turbine time-varying failure rate is established.
The S3 specifically includes:
S4, on the basis of S3, a multi-state output model of a virtual power plant composed of a plurality of distributed wind power is established.
The S4 specifically include:
For Nw independent wind turbines in the virtual power plant, the output of Nw wind turbines is shown in the following formula:
S5, operation risk indicators of the virtual power plant are calculated according to the multi-state output model of the virtual power plant established in S4.
The S5 specifically includes:
Embodiments of the present application are as follows.
The virtual power plant in the embodiment is composed of 10 distributed wind turbines of 2 Million Watt (MW) and 2 industrial users with electricity demand of 5 MW. The schematic diagram of the virtual power plant structure model shown in
From the above steps, it can be calculated that the power supply shortage probability in a virtual power plant operation risk indicator system whether to consider the time-varying failure rate of distributed wind power is shown in
In this embodiment of the application, a virtual power plant operation risk analysis device considering time-varying failure rate of distributed wind power is also constructed, as shown in
The wind speed and wind turbine output module is used to construct the relationship model between wind turbine output and wind speed when the wind turbine is running well, to divide the wind speed into a plurality of states, and establish a multi-state wind speed model, and to calculate the wind turbine output value and the corresponding probability value without considering the wind turbine failure according to the relationship model between wind turbine output and wind speed and the multi-state output model of the wind turbine.
The wind turbine time-varying failure rate acquisition module is used for acquiring the variable failure rate of the wind turbine according to the relationship model between the variable failure rate of the wind turbine caused by wind speed and wind speed, and obtaining the wind turbine time-varying failure rate by adding the basic failure rate of the wind turbine and the variable failure rate of the wind turbine caused by the wind speed.
The wind turbine output module considering wind speed and wind turbine time-varying failure rate is used to build a wind turbine failure model considering wind turbine time-varying failure rate based on the wind turbine time-varying failure rate acquisition module, and to obtain the wind turbine output value and the corresponding probability value considering the wind speed and the wind turbine time-varying failure rate based on the wind turbine output obtained by the wind speed and wind turbine output module.
The virtual power plant operation risk assessment module is used to construct a output model of virtual power plant output model including a plurality of distributed wind power, to establish a virtual power plant operation risk indicator system including power supply shortage probability, expected power supply shortage and power supply shortage loss of industrial users in virtual power plant, and to calculate the power supply shortage probability, expected power supply shortage and power supply shortage loss of industrial users in virtual power plant.
It should be understood by those skilled in the art that the embodiments of the present application can provide methods, systems, or computer program products. Therefore, this application can take the form of an entirely hardware embodiment, an entirely software embodiment, or an embodiment combining software and hardware aspects. Furthermore, the present application may take the form of a computer program product implemented on one or more computer usable storage media (including but not limited to disk storage, Compact Disc Read-Only Memory (CD-ROM), optical storage, etc.). The computer usable storage media contain computer usable program codes.
The application is described with reference to flowcharts and/or block diagrams of methods, devices (systems), and computer program products according to embodiments of the application. It should be understood that each flow and/or block in flowchart and/or block diagram, and combinations of flows and/or blocks in flowchart and/or block diagram can be realized by computer program instructions. These computer program instructions may be provided to the processor of a general-purpose computer, a special-purpose computer, an embedded processor or other programmable data processing equipment to produce a machine, so that the instructions executed by the processor of the computer or other programmable data processing equipment produce a device for implementing the functions specified in one or more flow charts and/or one or more blocks of the block diagram.
These computer program instructions can also be stored in a computer-readable memory that can direct a computer or other programmable data processing equipment to work in a specific way, so that the instructions stored in the computer-readable memory produce an article of manufacture including instruction devices that implement the functions specified in one or more flow charts and/or one or more blocks of the block diagrams.
These computer program instructions may also be loaded on a computer or other programmable data processing equipment, so that a series of operation steps are executed on the computer or other programmable equipment to produce a computer-implemented process, so that the instructions executed on the computer or other programmable equipment provide steps for realizing the functions specified in one or more flows of the flowchart and/or one or more blocks of the block diagram.
The above-mentioned embodiments only describe the preferred mode of the application, but do not limit the scope of the application. On the premise of not departing from the design spirit of the application, all kinds of modifications and improvements made by ordinary technicians in the field to the technical scheme of the application shall fall within the scope of protection determined by the claims of the application.
Number | Date | Country | Kind |
---|---|---|---|
2022108870093 | Jul 2022 | CN | national |