The present invention relates to the quick-response voltage control of distribution system, and in particular to a quick-response voltage control method of distribution system considering multiple participants.
In recent years, the permeability of distributed generation (hereinafter referred to as DG) in the distribution networks (DNs) has greatly increased. With the uncertainty and volatility of some renewable energy sources (e.g. wind power and photovoltaic power), the distribution system operators (DSOs) are expecting to face significant challenges to the control and operation of DNs. Among these challenges, voltage variations have been the most significant issues.
The existing voltage control strategy of an active distribution network is designed to mitigate the impacts of massive DG units on the voltage profile by switching capacitors, utilizing the on-load tap changers (hereinafter referred to as OLTCs), controlling interconnection switches, etc. Florin C et al. proposed that DSOs use centralized methods to control the capacitors, OLTC and interconnection switches coordinately, so as to maximize DG's active power access. Georgios C K et al. proposed a weakly centralized distributed voltage control method based on the optimal allocation of reactive power to solve the problem of excessive voltage caused by a large number of photovoltaic access. However, for the future active power DNs with multiple uncertainties and multiple participants, it will not be able to solve the problem of voltage fluctuations and renewable energy consumption in the distribution system if only relying on the traditional centralized voltage control method.
As one of the important forms for distributed energy to be incorporated into the DNs, microgrid (MG) is a small autonomous distribution and utilization system which is composed of DG units, loads, energy storage systems and monitoring systems. MG has advantages of autonomous operation, optimized management and coordinated control, etc. Therefore, it has great potential in the auxiliary operation control of future active power distribution systems. Due to MGs can optimize management and coordinate control, DSOs can motivate the MGs in the distribution system to actively participate in voltage control, so that the waste of wind and solar power can be avoided while ensuring that the voltage of the distribution system is in a safe range. At present, there are few researches on the application of multi-microgrids in distribution system and the existing applications of multi-microgrids are mainly focused on economic operation and energy management. The research of MGs providing ancillary services in DNs is rare. Chengshan Wang et al. proposed a two-layer optimization model of distribution system energy management including multi-microgrids. Zhaoyu Wang et al. proposed that DSOs unifies the day-ahead optimization of multi-microgrids to realize the economic operation of distribution systems. However, the paper does not consider the situation of multi-microgrids belonging to different operators.
To overcome the deficiencies of the prior art, the present invention provides a quick-response voltage control method of distribution systems considering multiple participants which can reduce the communication of control system and improve the reliability and real-time performance of the control system.
For this purpose, the following technical solutions are employed in the present invention. A quick-response voltage control method of distribution systems considering multiple participants, comprising a multiple agent system (MAS), which collects the local information of the distribution system controlled by each agent and interacts with the local information collected by each agent, so that voltage-power sensitivity of the distribution system, used for providing the theoretical basis for voltage regulation, is calculated by distributed calculation; and multiple participants, which establish incentive mechanism by DSOs based on the bidding game with imperfect information, and independently decide their own strategies to obtain the voltage regulation subsidy from the DSOs, according to the calculated voltage-power sensitivities, thus provide voltage support for the distribution system in the process of pursuing benefit maximization.
Specifically, the quick-response voltage control method includes the following steps:
1) collect local information of the distribution system by each agent;
2) calculate the voltage-power sensitivities of the radial DN by MAS;
3) establish the incentive mechanism by the DSO;
4) establish strategies by the participants (MGs) based on bidding games with imperfect information.
Wherein, the “local information” described in Step 1) includes:
Voltage Vn of Node n, injected active power Pn and injected reactive power Qn of Node n, active power Pto.n and reactive power Qto,n of Node n flow from the upstream branch, and the branch resistances Rn and reactance Xn between Node n−1 and Node n.
The voltage-power sensitivities of the radial DN by MAS described in Step 2 is the voltage-power sensitivity between any two Nodes n and m in the radial DN, which is denoted by
wherein Vm denotes the voltage at Node m, Pn denotes the injected active power of Node n. The calculation method of the voltage-power sensitivity
is divided into the following three cases according to the relative topological positions of Nodes n and m:
a) When Node n is on the upstream of Node m, the calculation formula is as follows:
wherein, Vn denotes the voltage of Node n, Vi denotes the voltage of Node i, Vn-1 denotes the voltage of Node n−1,
denotes the influence degree of unit change of Vi-1 caused by the change of the injected power of Node i−1 and its upstream Node on Vi.
b) When Node m is in the upstream of Node n, the calculation formula is as follows:
wherein, Pto.n denotes the active power flowing into Node n from the upstream branch, Pto,m denotes the active power flowing into Node m from the upstream branch, Pto.i denotes the active power flowing into Node i from the upstream branch, Pto.i-1 denotes the active power flowing into Node i−1 from the upstream branch,
denotes the influence degree of unit power change of Pto,i caused by Node nor its downstream Nodes on Pto,i-1.
c) When Node n and Node m are on different branches, Node e is the common node of two branches of Node n and Node m, the calculation formula is as follows.
Wherein, Ve denotes the voltage of Node e, Pe denotes the injected active power of node e,
are obtained by formula (1) and formula (2), respectively.
In the above three calculation cases, for any Node n, the calculation formulas are as follows.
Wherein, V1 denotes the voltage of Node 1, R1 and X1 denote the branch resistance and reactance between Node 0 and Node 1 respectively, and P1 denotes the injected active power of Node 1. Pto.j denotes the active power flowing into Node j from the upstream branch; Pto.j-1 denotes the active power flowing into Node j−1 from the upstream branch; Ri and X1 denote the branch resistance and reactance between Node i−1 and Node i respectively; Rn and Xn denote the branch resistance and reactance between Node n−1 and Node n, respectively;
The derivations of
cannot be obtained directly and the iteration process is required. At the first iteration, the increment of line losses is negligible, i.e.
∀i=1, 2, . . . , n. Under the assumption, the approximation of
can be expressed as follows:
The second iteration using the result of the first iteration, i.e., put formula (7) into formula (6), at this point,
can be expressed as follows:
Then put formula (8) into formula (7) to obtain the voltage-power sensitivity
with approximate accuracy.
Step 3) includes:
The reward given by the DSO is determined by the cost of voltage before and after the voltage control, the reward πDSO is calculated as follows:
Wherein, Vbefore and Vafter denote voltage vectors before and after voltage regulation respectively; V={Vi|i∈[1,n]}. ΔVerr is the maximum allowable voltage deviation; the adjustable variable α is even number. The reward πDSO is only related to the voltage vector before and after voltage regulation, and is irrelevant to the numbers and strategies of MG agents. Therefore, the proposed method applies Shapley value to distribute the reward πDSO. The profit function of MGi can be formulated as:
RMGi(ΔPMGi)=πMGi(ΔPMGi)−CMGi(ΔPMGi) (11)
Wherein, ΔPMGi denotes the strategy of the i-th MG agent (MGi Agent) in the voltage regulation process, i.e., the power regulation of MGi; πMGi (ΔPMGi) and CMGi (ΔPMGi) denote the reward and cost of MGi in the voltage regulation process respectively.
Step 4) includes:
For MGi, when a voltage excursion occurs, the MAS obtains the voltage-power sensitivity required in the current-voltage regulation process, and sends the voltage-power sensitivity, the nodes with voltage violation and their voltage magnitudes to the MG Agents at all MGs participating in the current-voltage regulation. Then, all agents of the MG carry out game bidding: firstly, the i-th MG agent determines the current cost function, and according to the voltage-power sensitivity, the nodes with voltage violation and their voltage magnitudes to maximize its interests, the objective function is:
Max{πMGi(ΔPMGi)−CMGi(ΔPMGi)} (12)
Wherein, πMGi (ΔPMGi) and CMGi (ΔPMGi) denote the reward and cost of MGi in the voltage regulation process, respectively.
The MGi agent makes a decision ΔPMGi, and reports it to all agents of MG; then according to the strategies of other MG agents, the MGi agent updates its own strategy using the relaxation algorithm and makes the decision and reports it to all agents of MG again. All the MG Agents repeat the process of game bidding of the i-th MG agent until all the MG agents no longer change their strategies.=( ) Therefore, the distribution system runs at the Nash equilibrium point ΔPMG*=(ΔPMG1*, ΔPMG2*, . . . , ΔPMGn*) of this game bidding, for MGi, the calculation formulas are as follows.
Wherein, RMGi (ΔPMG1*, ΔPMG2*, . . . , ΔPMGi, . . . , ΔPMGn*) is the final revenue function of MGi.
Compared with the prior art, the present invention has the following beneficial effects.
The present invention provides a quick-response voltage control method of distribution systems considering multiple participants comprising a multiple agent system (MAS) and shows that the MAS can realize the calculation of voltage sensitivity by distributed computing method. Each agent only needs to collect the measurement data of its control area and communicate with neighboring agents to calculate all the voltage sensitivity parameters in the system, thus reducing the communication of the control system and improving the reliability and real-time performance of the control system. Then, each participant of voltage control carries out a bidding game based on economic incentive mechanism and imperfect information game model, and provides auxiliary service of voltage control for DNs while realizing maximum benefit.
The present invention will be described in detail below with reference to the accompanying drawings.
The present invention provides a quick-response voltage control method of distribution system considering multiple participants, and mainly studies the distributed voltage control of distribution system with the participation of multiple MGs. MGs are motivated by incentives from the DSOs to provide voltage supports while maximizing their profits through the bidding, and provides auxiliary service of voltage control for DNs.
The present invention provides a quick-response voltage control method of distribution system comprising a multiple agent system (MAS), which collects the local information of the distribution system controlled by each agent and interacts with the local information collected by each agent, so that voltage-power sensitivity of the distribution system, used for providing the theoretical basis for voltage regulation, is calculated by distributed calculation. and multiple participants, which establish incentive mechanism by DSOs based on the bidding game with imperfect information, and independently decide their own strategies to obtain the voltage regulation subsidy from the DSOs, according to the calculated voltage-power sensitivities, thus provide voltage support for the distribution system in the process of pursuing benefit maximization, and reducing the installation of additional voltage supporting equipment in the distribution system, improving the utilization rate of clean energy and achieving better economic and social benefits.
Specifically, the quick-response voltage control method includes the following steps:
1) collect local information of the distribution system by each agent;
The local information described, as shown in
Voltage Vn of Node n, injected active power Pn and injected reactive power Qn of Node n, active power Pto.n and reactive power Qto,n of Node n flow from the upstream branch, and the branch resistances Rn and reactance Xn between Node n−1 and Node n.
2) Calculate the voltage-power sensitivities of the radial DN by MAS, includes:
The voltage-power sensitivity between any two Nodes n and m in the radial DN is denoted by
wherein Vm denotes the voltage at Node m, Pn denotes the injected active power of Node n. The calculation of
is divided into the following three cases according to the relative topological positions of Nodes n and m.
a) When Node n is on the upstream of Node m, as shown in
Wherein, Vn denotes the voltage of Node n, Vi denotes the voltage of Node i, Vn-1 denotes the voltage of Node n−1,
denotes the influence degree of unit change of Vi-1 caused by the change of the injected power of Node i−1 and its upstream Node on Vi.
b) When Node m is in the upstream of Node n, as shown in
Wherein, Pto.n denotes the active power flowing into Node n from the upstream branch, Pto.m denotes the active power flowing into Node m from the upstream branch, Pto.i denotes the active power flowing into Node i from the upstream branch, Pto.i-1 denotes the active power flowing into Node i−1 from the upstream branch,
denotes the influence degree of unit power change of Pto,i caused by Node n or its downstream Nodes on Pto,i-1.
c) Node m and Node n are on different branches, as shown in
Wherein, Ve denotes the voltage of Node e, Pe denotes the injected active power of node e,
are obtained by formula (1) and formula (2), respectively.
In the above three calculation cases, for any Node n, the calculation formula is as follows.
In the above three calculation cases, for any Node n, the calculation formulas are as follows.
Wherein, V1 denotes the voltage of Node 1, R1 and X1 denote the branch resistance and reactance between Node 0 and Node 1 respectively, and P1 denotes the injected active power of Node 1. Pto,j denotes the active power flowing into Node j from the upstream branch; Pto.j-1 denotes the active power flowing into Node j−1 from the upstream branch; Ri and X1 denote the branch resistance and reactance between Node i−1 and Node i respectively; Rn and Xn denote the branch resistance and reactance between Node n−1 and Node n respectively;
The derivations of
cannot be obtained directly and the iteration process is required. At the first iteration, the increment of line losses is negligible, i.e.
∀i=1, 2, . . . , n. Under the assumption, the approximation of
can be expressed as follows:
The second iteration using the result of the first iteration, i.e., put formula (7) into formula (6), at this point,
can be expressed as follows:
Then put formula (8) into formula (7) to obtain the voltage-power sensitivity
with approximate accuracy.
3) Establish the incentive mechanism by the DSO, includes:
The reward πDSO given by the DSO is determined by the cost of voltage before and after the voltage control, the reward is defined as:
Wherein, Vbefore and Vafter denote voltage vectors before and after voltage regulation respectively; V={Vi|i∈[1, n]}. ΔVerr is the maximum allowable voltage deviation; the adjustable variable α is fixed. The reward πDSO is only related to the voltage vector before and after voltage regulation, and is irrelevant to the numbers and strategies of MG agents. Therefore, the proposed method applies Shapley value to distribute the reward πDSO. The profit function of MGi can be expressed as follows:
RMGi(ΔPMGi)=πMGi(ΔPMGi)−CMGi(ΔPMGi) (11)
Wherein, ΔPMGi denotes the strategy of MGi in the voltage regulation process, i.e., the power regulation of MGi; πMGi (ΔPMGi) and CMGi (ΔPMGi) denote the reward and cost of MGi in the voltage regulation process, respectively.
4) Establish strategies by the participants (MGs) based on bidding games with imperfect information. As shown in
For MGi, the flow chart of bidding game is shown in
Max{πMGi(ΔPMGi)−CMGi(ΔPMGi)} (12)
Wherein, πMGi (ΔPMGi) and CMGi (ΔPMGi) denote the reward and cost of MGi in the voltage regulation process, respectively.
The MGi agent makes a decision ΔPMGi, and reports it to all agents of MG, then, according to the strategies of other MG agents, the MGi agent updates its own strategy using the relaxation algorithm and makes the decision and reports it to all agents of MG again. All the MG Agents repeat the process of game bidding of the i-th MG agent until all the MG agents no longer change their strategies. Therefore, the distribution system runs at the Nash equilibrium point ΔPMG*=(ΔPMG1*, ΔPMG2*, . . . , ΔPMGn*) of this game bidding, for MGi, the calculation formulas are as follows.
Wherein, RMGi (ΔPMG1*, ΔPMG2*, . . . , ΔPMGi, . . . , ΔPMGn*) is the final revenue function of the MGi.
Specific examples will be described below with reference to the accompanying drawings.
The present invention verifies the proposed voltage control method by using the adjusted IEEE33 node DN, the topology of networks is shown in
When the MAS system is not involved in the control, the photovoltaic output power at Node 9 is large due to sufficient sunshine during the period from 11:00 to 14:00, and the voltage is out of the limits; From 19:00 to 21:00, the load 12 increased and the MG at Node 8 absorbed power from the grid, and the voltage exceeded the lower limit. After the MAS system participates in the control, all node voltages can be effectively controlled within a reasonable range. Node 9, Node 12 and Node 18, which have a large voltage violation degree before the MAS participates in control, are selected to reflect the voltage control effect of the MAS. The voltage profiles before and after the MAS participating in control are shown in
Taking the scenario t=19:40 as an example, the overall control process is explained in details. When t=19:40, the MAS monitors voltage levels exceeding the lower limit with the worst case at Node 12V12=0.931, and then each agent in the MAS starts to measure local data and communicate with adjacent agents to calculate necessary sensitivities for voltage control:
Then, the MAS sends the sensitivities and α=14 defined by the DSO as common knowledge to MG agents: MG1 Agent at Node 8, MG2 Agent at Node14, MG3 Agent at Node 29. The MG agents can inject more power into grid to eliminate voltage violation by increasing the generation output, demand shaving and storage discharging. Either way, there will be a certain cost. MG Agents need to determine CMG(ΔPMG) according to their operation conditions to maximize their interests. For convenience, CMG (ΔPMG) in this case is in the form of a linear function. When t=19:40, there are:
CMG1(ΔPMG1)=C1ΔPMG1
CMG2(ΔPMG2)=C2ΔPMG2
CMG3(ΔPMG3)=C3ΔPMG3
Wherein, C1=48 $/MW, C2=38$/MW, C3=40 $/MW. According to formula (18), MG Agents make their benefit maximization of ΔPMGi1, and as a strategy to participate in the first round of the bidding game. Then, MG Agent updates its strategy according to the strategies of other MG agents until all the MG agents cannot change their strategies. In the control process at t=19:40, after 0.98 s, the three MG Agents did not change their strategies after 9 bids, the strategies converge to a Nash equilibrium: ΔPMG1=−0.292 MW, ΔPMG2=−0.268 MW, ΔPMG3=−0.348 MW. The bidding profiles and corresponding V12 of three MG Agents are shown in
The foregoing description is just a preferred embodiment of the present invention and is not intended to limit the present invention. Any modifications, equivalent replacements and improvements made within the spirit and principle of the present invention shall be included within the protection scope of the present invention.
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Number | Date | Country | |
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20220109326 A1 | Apr 2022 | US |