The invention belongs to the technical field of operation control of power distribution networks, and particularly relates to a long-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, a short-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, and a multi-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network.
The active power distribution network (abbreviated as power distribution network), as a main basic platform serving the nation to realize the purposes of “carbon dioxide peaking” and “carbon neutralizing”, should support large-scale grid-connected utilization of distributed renewable energy sources and plug-and-play access and quit of flexible loads, which leads to a high uncertainty and a “double-high” characteristic of the system, resulting in a large variety of power quality pollution sources, high density and tight pollution disturbance-coupling. Among them, voltage problems are one of most important power quality problems of the active distribution network.
At present, voltage regulation techniques at home and abroad adopt a local distributed control method, which configures regulation devices at a source terminal, a grid terminal, a load terminal and a storage terminal respectively according to their pollution conditions. Such voltage regulation techniques are neither collaborative nor global, and the distributed regulation devices consume a large amount of input cost and cannot fulfill an expected effect, control objectives may contradict and repel each other, and cannot be balanced. So, it is urgency needed to explore a systematic voltage regulation method and technique based on multi-terminal collaboration.
The objective of the invention is to overcome the defects of the prior art by providing a long, short and multi-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, so as to solve the problem of separate regulation of terminals of existing techniques and methods.
To solve the aforementioned technical problems, the invention provides the following technical solutions:
In a first aspect, the invention provides a long-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, comprising:
Acquiring a multi-mode switching control model based on voltage security event trigger of feeders of an active power distribution network; and
Establishing multi-objective optimization taking into account a source-storage-load regulation cost and a network transmission loss in each operating mode according to the multi-mode switching control model based on voltage security event trigger, to obtain optimal power values of a source terminal, a load terminal and a storage terminal over a long timescale.
Optionally, a construction process of the multi-mode switching control model based on voltage security event trigger comprises:
Establishing the multi-mode switching control model, which is composed of a septimal tuple (P, T, A, F−, F+, TM, M 0), of the feeders of the active power distribution network based on a Petri network, where:
In formula (1), P is a set of discrete places, and Pi,i∈{1,2, . . . n} is discrete places and represents operating modes of the active power distribution network; n is a total number of voltage regulator taps; T is a set of all discrete transitions; A is a set of all arcs, the modes are connected to the corresponding transitions through the directed arcs in A, and these directed arcs are associated with predecessor arcs defined in F− or successor arcs defined in F+ respectively, and ⊗ is a Cartesian product; F− is a set of the predecessor arcs; F+ is a set of the successor arcs; TM represents a set of discrete transition switching times; M0 represents a set of all initial mode marks;
The discrete transition Ti,i∈{1,2,2n−2} is triggered by a voltage security event designed as follows:
Formula (2) indicates that the discrete transition Ti,i=1,2,L n−1 is triggered when Vrm(t) falls to a lower threshold
and DT time later, the operating mode is switched from Pi to Pi+1; formula (3) indicates that Tn−2+i,i=2,3,L n is triggered when Vrm(t) rises to an upper threshold
and DT time later, the operating mode is switched from P
to P
; where, ETSC(T
) is a trigger function of the discrete transition T
, Vref a voltage reference value, Vdb is a voltage error dead zone, Vrm(t) is a moving average of a secondary voltage of a voltage regulator, which is specifically expressed as:
In formula (4), N is a length of a sliding time window, V(τ) is the secondary voltage of the voltage regulator at a time τ, and t represents a present time; in formula (2) and formula (3), a step function S(t−t0) is expressed as:
In formula (5), t represents a present time, and t0 represents a certain time.
Optionally, the multi-objective optimization taking into account the source-storage-load regulation cost and the network transmission loss comprises:
An objective function of the regulation cost, which is specifically expressed as:
In formula (6), Fid(t), Fje(t) and Fls(t) represent an operating return of ith distributed new energy, an operating cost of jth energy storage, and an operating cost of an lth SVC at the time t respectively; Nd, Ne and Ns represent a set of distributed new energy, a set of energy storage and a set of SVCs respectively; Fid(t), Fje(t) and Fls(t) are expressed by the following quadratic functions:
¿ (7)
In formula (7), α1d, α2d and α3d are operating return coefficients of the ith distributed new energy, which are all negative values; α1e, α2e and α3e are operating cost coefficients of the jth energy storage, which are all positive values; α1s, α2s and α3s are operating cost coefficients of the lth SVC, which are all positive values; PiDG(t), PjES(t) and QlSVC(t) are an active power output of the ith distributed new energy, an active power output of the jth energy storage and a reactive power output of the lth SVC at the time t respectively;
An objective function of the network transmission loss, which is specifically expressed as:
In formula (8), Pib(t) and Qib(t) are an injected active power and an injected reactive power of an ith node at the time t respectively; Ri and Xi are a resistance and a reactance of a branch circuit connected to the ith node respectively; Vi(t) is a voltage of the ith node at the time t; N is a set of all nodes;
The multi-objective optimization is composed of formula (6) and formula (8), and is specifically expressed as:
In formula (9), λ1 and λ2 are weight factors of f1(t) and f2(t) respectively, and formula (9) meets the following constraints:
Formula (10) and formula (11) represent upper and lower limit constrains of an active power of the distributed new energy and the energy storage respectively, PDG(t) and P
ES(t) are the active power output of ith distributed new energy and the active power output of the ith energy storage at the time t respectively,
DG and P
DG are an upper limit and a lower limit of the active power of the ith distributed new energy respectively,
ES and P
ES and are an upper limit and a lower limit of the active power of the ith energy storage respectively;
Formula (12) and formula (13) represents upper and lower limit constraints of a reactive power of the SVGs and the distributed new energy respectively, QSVC(t) and Q
(t) are the reactive power output of the ith SVG and the reactive power output of the ith distributed new energy at the time t respectively,
and Q
are an upper limit and a lower limit of the reactive power of the ith SVG respectively, and S
DG is a capacity of the ith distributed new energy;
Formula (14) and formula (15) represent active power ramp constraints of the distributed new energy and the energy storage respectively, ΔPDG(t)=P
DG(t)−P
DG(t−1) and ΔP
ES(t)=P
ES(t)−P
ES(t−1) are variations of the active power output of the ith distributed new energy and the active power output of the ith energy storage at the time t respectively, Δ
and ΔP
are an upper limit and a lower limit of an active power ramp of the ith distributed new energy respectively, and Δ
and ΔP
are an upper limit and a lower limit of an active power ramp of the ith energy storage respectively;
Formula (16) and formula (17) are reactive power ramp constraints of the distributed new energy and the SVCs respectively, ΔQDG(t)=Q
Dg(t)−Q
DG(t−1) and ΔQ
SVC(t)=Q
SVC(t)−Q
SVC(t−1) are variations of the reactive power output of the ith distributed new energy and the reactive power output of the ith SVC at the time t respectively, and Δ
DG and ΔQ
DG are an upper limit and a lower limit of a reactive power ramp of the ith distributed new energy respectively, and Δ
SVC and ΔQ
SVC are an upper limit and a lower limit of a reactive power ramp of the ith SVC respectively;
Formula (18) and formula (19) are an active power balance constraint and a reactive power balance constraint of adjacent nodes respectively, P(t) and Q
(t) are the injected active power and the injected reactive power of the ith node at the time t respectively, P
(t) and Q
(t) are an injected active power and an injected reactive power of a (i+1)th node at the time t respectively, P
(t) and Q
(t) are an active power loss and a reactive power loss of the ith node at the time t respectively, P
DG(t) and Q
DG(t) are an active power output of the jth distributed new energy and an active power output the jth energy storage at the time t respectively, N
is a set of distributed new energy located at the ith node, P
ES(t) and Q
SVC(t) are an active power output of an lth energy storage and a reactive power output of an lth energy SVG at the time t respectively, N
and N
are a set of energy storage located at the ith node and a set of SVGs located at the ith node respectively, and P
(t) is an active power consumed by loads at the (i+1)th node at the time t;
Formula (20) is an SOC constraint of the energy storage, is an SOC(t) of the ith energy storage at the time t,
and SOC
are an upper limit and a lower limit of the SOC of the ith energy storage respectively, δ
(t) is a charge-discharge coefficient of the ith energy storage at the time t, δ
(t)=1 is discharge of the energy storage, δ
(t)=0 is charge of the energy storage, and ηid and ηic are charge efficiency and discharge efficiency of the ith energy storage respectively;
Formula (21) is an active power balance constraint of a system.
In a second aspect, the invention provides a short-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, comprising:
Acquiring a source-storage-load multi-terminal collaboration-based power coordinated control model;
Obtaining a source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger according to the source-storage-load multi-terminal collaboration-based power coordinated control model; and
Solving the source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger in a receding horizon to obtain an optimal power control sequence of a source terminal, a load terminal and a storage terminal over a short timescale.
Optionally, the source-storage-load multi-terminal collaboration-based power coordinated control model comprises:
An active power model of a distributed new energy inverter, which is established by the following formula:
¿ (22)
In formula (22), ΔP is a difference between an actual reference active power and a current active power of the distributed new energy inverter, Δ
is a difference between a d-axis current component at a present time and a d-axis current component at a previous time of the distributed new energy inverter, T
is a time constant of an inner current loop of an active power of the distributed new energy inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PI controller respectively, u
is a d-axis component of an output port voltage of the distributed new energy inverter, ΔPDG is a difference between an output active power at the present time and an output active power at the previous time of the distributed new energy inverter, ΔP
is an integral of a difference between ΔP
DG and ΔPDG, and s is a Laplace operator;
A reactive power model of the distributed new energy inverter, which is obtained in a way similar to formula (22):
¿ (23)
In formula (23), ΔQ is a difference between an actual reference reactive power and a current reactive power of the distributed new energy inverter, Δ
is a difference between a d-axis current component at the present time and a d-axis current component at the previous time of the distributed new energy inverter, T
is a time constant of an inner current loop of a reactive power of the distributed new energy inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PI controller respectively, u
is a d-axis component of an output port voltage of the distributed new energy inverter, ΔQDG is a difference between an output reactive power at the present time and an output reactive power at the previous time of the distributed new energy inverter, and ΔQ
is an integral of a difference between ΔQ
DG and ΔQDG;
An active power model of an energy storage inverter, which is established by the following formula:
¿ (24)
In formula (24), ΔPrefES is a difference between an actual reference power and a current power of the energy storage inverter, Δ is a difference between a port output current at a present time and a port output current of a previous time of the energy storage inverter, T
is a time constant of an inner current loop of an active power of the energy storage inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PI controller respectively, UES is an output port voltage of the energy storage inverter, ΔPES is a difference between an output power at the present time and an output power at the previous time of the energy storage inverter, ΔP
and is an integral of a difference between ΔPrefES and ΔPES;
A reactive power model of an SVC inverter, which is established by the following formula:
In formula (25), ΔBSVC is a difference between a current value and a value at a previous time of an equivalent susceptance of the SVC inverter, TSVC is a time constant of a control loop of the SVC inverter, ΔuSVC is a difference between a current value and a value at the previous time of a control variable of the SVC inverter, USVC is an output port voltage of the SVC inverter, and ΔQSVC is a difference between an output power at a present time and an output power at the previous time of the SVC inverter;
The source-storage-load multi-terminal collaboration-based power coordinated control model is established based on formula (22), formula (23), formula (24) and formula (25), and is specifically expressed as:
Where, diag is a matrix diagonalization operation;
Formula (26) is discretized to obtain a mathematical model of the output active power of the inverter in a discrete time:
In formula (27), x(k) and u(k) are discretize values of xc and uc at a time k respectively,
and Tp is a sampling time.
Optionally, the source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger comprises:
The source-storage-load multi-terminal collaboration-based distributed voltage control network being triggered by a voltage security event designed as follows:
In formula (28), ETF indicates that the source-storage-load multi-terminal collaboration-based distributed voltage control will be triggered if a voltage leap or voltage magnitude of an ith node at the time k exceeds a threshold; ΔVi(k)=Vi(k)−Vi(k−1) represents a voltage leap threshold of the ith node at the time k, Vi(k) represents a voltage magnitude threshold of the ith node at the time k, Vref,i represents a voltage reference value of the ith node, and ΔVdb,i represents a voltage off-limit dead zone of the ith node;
Based on formula (27), a control objective function of the source-storage-load multi-terminal collaboration-based distributed voltage control model is designed as:
In formula (29), Ji(k) represents a control objective function of the ith node; N is a predictive step length; ΔVi(k+n/k) is a voltage leap at a time (k+n) of the ith node, predicted at the time k; Vi(k+n/k) is a voltage magnitude at the time (k+n) of the ith node, predicted at the time k; ui¿ is a control variable at a time (k+n−1) of the ith node, of which the specific composition is the same as u(k) in formula (27); S1, S2 and S3 and are corresponding weight coefficients;
The control objective function (29) meets the following constraints:
Formula (30) and formula (31) represent an active power regulation quantity constraint and a reactive power regulation quantity constraint of distributed new energy respectively, ΔP(k+n−1|k) and ΔQ
(k+n−1|k) represent an active power regulation quantity and a reactive power regulation quantity of an ith distributed new energy at the time (k+n−1) respectively, Δ
and ΔP
are an upper limit and a lower limit of the active power regulation quantity of the ith distributed new energy respectively, and Δ
and ΔQ
are an upper limit and a lower limit of the reactive power regulation quantity of the ith distributed new energy respectively;
Formula (32) and formula (33) represent an active power regulation quantity constraint of energy storage and a reactive power regulation quantity constraint of SVCs respectively, ΔP(k+n−1|k) Δu
(k+n−1|k) and are an active power regulation quantity of ith energy storage and a control variation of the ith SVC at the time (k+n−1) respectively, Δ
and ΔP
are an upper limit and a lower limit of the active power regulation quantity of the ith energy storage respectively, and Δū
and Δu
are an upper limit and a lower limit of the control variation of the ith SVC respectively;
Formula (34) indicates a relationship between voltage and injection power of nodes of the active power distribution network, ΔP(k+n|k) and ΔQ
(k+n|k) are an injected active power variation and an injected reactive power variation of the jth node at the time (k+n) respectively, and
are variation coefficients of a voltage of the ith node with respect to an injected active power and an injected reactive power of the jth node respectively; N is a set of the nodes of the active power distribution network;
The source-storage-load multi-terminal collaboration-based distributed voltage control model is established based on the objective function (29) and constraints (30)-(34) of the nodes, and is specifically expressed as:
In formula (35), φ is a weight coefficient of the objective function of the ith node, M represents the number of the nodes of the active power distribution network, u
is a value of the control variable of the ith node during iteration P, and u
,
,
{1,2,L M} represents a value of the control variable of the jth node during iteration (p−1); and similarly, formula (35) meets constraints (30)-(34).
Optionally, solving the source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger in a receding horizon to obtain an optimal power control sequence of a source terminal, a load terminal and a storage terminal, comprising:
Step 1: determining whether ETF in (28) is triggered at the time k; if so, performing Step 2; otherwise, letting k=k+1, and performing Step 1 again;
Step 2: initializing a convergence threshold ε, a maximum number of iterations
Step 3: determining whether a 2-norm ¿∨uip−uip−1∨¿2 of the control variable during two iterations is greater than the convergence threshold ε and whether the number of iterations p is less than
Step 4: solving the objective function (35) of the source-storage-load multi-terminal collaboration-based distributed voltage control model to obtain an optimization control sequence u, in which p=p+1; updating u
by formula (36); performing Step 3;
Where, φ is a weight coefficient of the objective function of the ith node; and
Step 5: issuing a control variable at an initial position of u to the distributed new energy inverter, the energy storage inverter and the SVC inverter, where k=k+1; and performing Step 1.
In a third aspect, the invention further provides a multi-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network, comprising:
Acquiring a multi-mode switching control model based on voltage security event trigger of feeders of an active power distribution network;
Establishing multi-objective optimization taking into account a source-storage-load regulation cost and a network transmission loss in each operating mode according to the multi-mode switching control model based on voltage security event trigger, to obtain optimal power values of a source terminal, a load terminal and a storage terminal over a long timescale;
Acquiring a source-storage-load multi-terminal collaboration-based power coordinated control model;
Obtaining a source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger according to the source-storage-load multi-terminal collaboration-based power coordinated control model; and
Solving the source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger in a receding horizon to obtain an optimal power control sequence of a source terminal, a load terminal and a storage terminal over a short timescale.
According to the multi-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network provided by the invention:
First, the multi-mode switching control model based on voltage security event trigger of the feeders of the active power distribution network is established based on a Petri network over a long-timescale;
Multi-objective optimization taking into account the source-storage-load regulation cost and the network transmission loss in each operating mode is established according to the multi-mode switching control model based on voltage security event trigger, to obtain optimal power values of the source terminal, the load terminal and the storage terminal over the long timescale;
Then, the source-storage-load multi-terminal collaboration-based power coordinated control model is established over a short-timescale according to operating characteristics of the source terminal, the load terminal and the storage terminal; the source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger is established according to the source-storage-load multi-terminal collaboration-based power coordinated control model; and
The distributed voltage control model is solved in the receding horizon to obtain the optimal power control sequence of the source terminal, the load terminal and the storage terminal.
Compared with the prior art, the invention has the following beneficial effects: over a long timescale, multi-mode switching control is designed to switch operating modes of the active power distribution network, and in each operating mode, multi-objective optimization is designed to realize an optimal global network loss and an optimal operating cost, so that the overall economy of a system is guaranteed under the precondition of guaranteeing the security of the active power distribution network; and over a short timescale, completely distributed coordinated regulation control is realized by means of the collaboration of inverters of a source terminal, a load terminal and a storage terminal, so that many voltage problems of the active power distribution network are solved, the response speed is high, the voltage control effect is good, and the privacy of information is guaranteed under the precondition of realizing plug-and-play characteristics.
The invention will be further described below in conjunction with the accompanying drawings. The following embodiments are merely used to more clearly explain the technical solutions of the invention, and should not be construed as limitations of the protection scope of the invention.
One embodiment of the invention provides a multi-timescale voltage regulation method based on source-grid-load-storage multi-terminal collaboration of a power distribution network. A source terminal refers to distributed new energy, a grid terminal refers to a device for coordinating the base voltage of a whole grid, represented by a voltage regulator, a storage terminal refers to energy storage, and a load terminal refers to SVCs. As shown in
Step 1: over a long timescale, a multi-mode switching control model of feeders of an active power distribution network is established based on a Petri network, and a multi-mode switch control model based on voltage security event trigger is designed according to operating characteristics of a voltage regulator at the grid terminal to realize effective regulation of a global voltage;
Each feeder of the active power distribution network comprises source-grid-load-storage devices, and regulation of the grid terminal refers to multi-mode switching of the voltage regulator. As show in
In formula (1), P is a set of discrete places, P,i∈{1,2, . . . n} and is discrete places and represents operating modes of the active power distribution network; n is a total number of voltage regulator taps; T is a set of all discrete transitions; A is a set of all arcs, the modes are connected to the corresponding transitions through the directed arcs in A, and these directed arcs are associated with predecessor arcs defined in F− or successor arcs defined in F+ respectively, and ⊗ is a Cartesian product; F− is a set of the predecessor arcs; F+ is a set of the successor arcs; TM represents a set of discrete transition switching times; M0 represents a set of all initial mode marks.
The discrete transition T,i∈{1,2,2n−2} is triggered by a voltage security event designed as follows:
If and t=t0 and V(t) falls to
ETSC(Ti)=S(t−t0)−S(t−t0−ΔTi),i∈{1,2, . . . n−1} (2)
If t=t0 and V(t) rises to
ETSC(Ti)=S(t−t0)−S(t−t0−ΔTn−2+1),i∈{2,3, . . . n} (3)
Formula (2) indicates that the discrete transition T=1,2,L n−1 is triggered when V
(t) falls to a lower threshold
and DT time later, the operating mode is switched from P
to P
; formula (3) indicates that T
,i=2,3,L n is triggered when Vrm(t) rises to an upper threshold
and DT time later, the operating mode is switched from P
to P
; where, ETSC(T
) is a trigger function of the discrete transition T
, Vref a voltage reference value, Vdb is a voltage error dead zone, and Vrm(t) is a moving average of a secondary voltage of a voltage regulator, which is specifically expressed as:
In formula (4), N is a length of a sliding time window, V(τ) is the secondary voltage of the voltage regulator at a time τ, and t represents a present time; in formula (2) and formula (3), a step function S(t−t0) is expressed as:
In formula (5), t represents a present time, t0 and represents a certain time.
Step 2: multi-objective optimization taking into account a regulation cost of distributed new energy, energy storage and static var compensators (SVCs), and a network transmission loss in each operating mode is established according to the multi-mode switching control model based on voltage security event trigger, to obtain optimal power values of the distributed new energy, the energy storage and the SVCs so as to realize collaborative and dynamic control of controllable resources (source-storage-load) in each operating mode;
The multi-objective optimization in each operating mode comprises objective functions of an objective function of the regulation cost of the distributed new energy, the energy storage and the SVCs, and an objective function of the network transmission loss, wherein the objective function of the regulation cost may be specifically expressed as:
In formula (6), Fid(t), Fje(t) and Fls(t) represent an operating return of ith distributed new energy, an operating cost of jth energy storage, and an operating cost of an lth SVC at the time t respectively; Nd, Ne and Ns represent a set of distributed new energy, a set of energy storage and a set of SVCs respectively; Fid(t), Fje(t) and Fls(t) are expressed by the following quadratic functions:
¿ (7)
In formula (7), α1d, α2d and α3d are operating return coefficients of the ith distributed new energy, which are all negative values; α1e, α2e and α3e are operating cost coefficients of the jth energy storage, which are all positive values; α1s, α2s and α3s are operating cost coefficients of the lth SVC, which are all positive values; PDG(t), P
ES(t) and Q
SVC(t) are an active power output of the ith distributed new energy, an active power output of the jth energy storage and a reactive power output of the lth SVC at the time t respectively;
The objective function of the network transmission loss may be specifically expressed as:
In formula (8), an P(t) and Q
(t) are an injected active power and an injected reactive power of an ith node at the time t respectively; Ri and Xi are a resistance and a reactance of a branch circuit connected to the ith node respectively; V
(t) is a voltage of the ith node at the time t; N is a set of all nodes;
The multi-objective optimization is composed of formula (6) and formula (8), and is specifically expressed as:
In formula (9), λ1 and λ2 are weight factors of f1(t) and f2(t) respectively, and formula (9) meets the following constraints:
Formula (10) and formula (11) represent upper and lower limit constrains of an active power of the distributed new energy and the energy storage respectively, PDG(t) and P
ES(t) are the active power output of ith distributed new energy and the active power output of the ith energy storage at the time t respectively,
DG and P
DG are an upper limit and a lower limit of the active power of the distributed new energy respectively, and
ES and P
ES are an upper limit and a lower limit of the active power of the ith energy storage respectively;
Formula (12) and formula (13) represents upper and lower limit constraints of a reactive power of the SVGs and the distributed new energy respectively, Q(t) and Q
(t) are the reactive power output of the ith SVG and the reactive power output of the ith distributed new energy at the time t respectively,
SVC and Q
SVC are an upper limit and a lower limit of the reactive power of the ith SVG respectively, and S
DG is a capacity of the ith distributed new energy;
Formula (14) and formula (15) represent active power ramp constraints of the distributed new energy and the energy storage respectively, ΔP(t)=P
(t)−P
(t−1) and ΔP
(t)=P
(t)−P
(t−1) are variations of the active power output of the ith distributed new energy and the active power output of the ith energy storage at the time t respectively, Δ
and ΔP
are an upper limit and a lower limit of an active power ramp of the ith distributed new energy respectively, Δ
ES and ΔP
ES and are an upper limit and a lower limit of an active power ramp of the ith energy storage respectively;
Formula (16) and formula (17) are reactive power ramp constraints of the distributed new energy and the SVCs respectively, ΔQDG(t)=Q
DG(t)−Q
DG(t−1) and ΔQ
SVC(t)=Q
SVC(t)−Q
SVC(t−1) are variations of the reactive power output of the ith distributed new energy and the reactive power output of the ith SVC at the time t respectively, and Δ
DG and ΔQ
DG are an upper limit and a lower limit of a reactive power ramp of the ith distributed new energy respectively, and Δ
and ΔQ
are an upper limit and a lower limit of a reactive power ramp of the ith SVC respectively;
Formula(18) and formula (19) are an active power balance constraint and a reactive power balance constraint of adjacent nodes respectively, P(t) and Q
(t) are the injected active power and the injected reactive power of the ith node at the time t respectively, P
(t) and Q
(t) are an injected active power and an injected reactive power of a (i+1)th node at the time t respectively, P
(t) and Q
(t) are an active power loss and a reactive power loss of the ith node at the time t respectively, P
(t) and Q
(t) are an active power output of the jth distributed new energy and an active power output the jth energy storage at the time t respectively, N
is a set of distributed new energy located at the ith node, P
(t) and Q
(t) are an active power output of an lth energy storage and a reactive power output of an lth energy SVG at the time t respectively, N
and N
are a set of energy storage located at the ith node and a set of SVGs located at the ith node respectively, and P
(t) is an active power consumed by loads at the (i+1)th node at the time t;
Formula (20) is an SOC constraint of the energy storage, SOC(t) is an SOC of the ith energy storage at the time t,
and SOC
are an upper limit and a lower limit of the SOC of the ith energy storage respectively, δ
(t) is a charge-discharge coefficient of the ith energy storage at the time t, δ
(t)=1 is discharge of the energy storage, δ
(t)=0 is charge of the energy storage, and ηid and ηic are charge efficiency and discharge efficiency of the ith energy storage respectively;
Formula (21) is an active power balance constraint of a system.
Step 3: output power models of inverters of the distributed new energy, the SVCs and the energy storage are established over a short timescale based on the operating characteristics of source-storage-load (the distributed new energy, SVCs and energy storage) to obtain a source-storage-load multi-terminal collaboration-based power coordinated control model;
As shown in
¿ (22)
In formula (22), ΔP is a difference between an actual reference active power and a current active power of the distributed new energy inverter, Δ
is a difference between a d-axis current component at a present time and a d-axis current component at a previous time of the distributed new energy inverter, T
is a time constant of an inner current loop of an active power of the distributed new energy inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PI controller respectively, u
is a d-axis component of an output port voltage of the distributed new energy inverter, ΔPDG is a difference between an output active power at the present time and an output active power at the previous time of the distributed new energy inverter, ΔP
is an integral of a difference between ΔP
and ΔPDG, and s is a Laplace operator.
A reactive power model of the distributed new energy inverter, which is obtained in a way similar to formula (22):
¿ (23)
In formula (23), ΔQ is a difference between an actual reference reactive power and a current reactive power of the distributed new energy inverter, Δ
is a difference between a d-axis current component at the present time and a d-axis current component at the previous time of the distributed new energy inverter, T
is a time constant of an inner current loop of a reactive power of the distributed new energy inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PT controller respectively, u
is a d-axis component of an output port voltage of the distributed new energy inverter, ΔQDG is a difference between an output reactive power at the present time and an output reactive power at the previous time of the distributed new energy inverter, ΔQ
is an integral of a difference between ΔQ
and ΔQDG, and s a Laplace operator.
As shown in
¿ (24)
In formula (24), ΔP is a difference between an actual reference power and a current power of the energy storage inverter, Δ
is a difference between a port output current at a present time and a port output current of a previous time of the energy storage inverter, T
is a time constant of an inner current loop of an active power of the energy storage inverter, k
and k
are a proportion coefficient and an integral coefficient of an outer current loop PI controller respectively, UES is an output port voltage of the energy storage inverter, ΔPES is a difference between an output power at the present time and an output power at the previous time of the energy storage inverter, and ΔP
is an integral of a difference between ΔP
and ΔPES.
As shown in
In formula (25), ΔBSVC is a difference between a current value and a value at a previous time of an equivalent susceptance of the SVC inverter, TSVC is a time constant of a control loop of the SVC inverter, ΔuSVC is a difference between a current value and a value at the previous time of a control variable of the SVC inverter, USVC is an output port voltage of the SVC inverter, and ΔQSVC is a difference between an output power at a present time and an output power at the previous time of the SVC inverter.
Further, the source-storage-load multi-terminal collaboration-based power coordinated control model is established based on formula (22), formula (23), formula (24) and formula (25), and is specifically expressed as:
Where, diag is a matrix diagonalization operation.
Formula (26) is discretized to obtain a mathematical model of the output active power of the inverter in a discrete time:
x(k+1)=Ax(k)+Bu(k) (27)
In formula (27), x(k) and u(k) are discretize values of x and u
at a time k respectively,
and T is a sampling time.
Step 4: a source-storage-load multi-terminal collaboration-based distributed voltage control model based on voltage security event trigger is established according to the source-storage-load multi-terminal collaboration-based power coordinated control model;
The source-storage-load multi-terminal collaboration-based distributed voltage control network being triggered by a voltage security event designed as follows:
In formula (28), ETF indicates that the source-storage-load multi-terminal collaboration-based distributed voltage control will be triggered if a voltage leap or voltage magnitude of an ith node at the time k exceeds a threshold; ΔVi(k)=Vi(k)−Vi(k−1) represents a voltage leap threshold of the ith node at the time k, Vi(k) represents a voltage magnitude threshold of the ith node at the time k, Vref,i represents a voltage reference value of the ith node, and ΔVdb,i represents a voltage off-limit dead zone of the node.
Further, Based on formula (27), a control objective function of the source-storage-load multi-terminal collaboration-based distributed voltage control model is designed as:
In formula (29), Ji(k) represents a control objective function of the ith node; N is a predictive step length; ΔVi(k+n/k) is a voltage leap at a time (k+n) of the ith node, predicted at the time k; Vi(k+n/k) is a voltage magnitude at the time (k+n) of the ith node, predicted at the time k; ui¿ is a control variable at a time (k+n−1) of the ith node, of which the specific composition is the same as u(k) in formula (27); S1, S2 and S3 are corresponding weight coefficients.
In formula (29), the control variable is ui.
Further, the control objective function (29) meets the following constraints:
Formula (30) and formula (31) represent an active power regulation quantity constraint and a reactive power regulation quantity constraint of distributed new energy respectively, ΔP(k+n−1|k) and ΔQ
(k+n−1|k) represent an active power regulation quantity and a reactive power regulation quantity of an ith distributed new energy at the time (k+n−1) respectively, Δ
DG and ΔP
DG are an upper limit and a lower limit of the active power regulation quantity of the ith distributed new energy respectively, and Δ
DG and ΔQ
DG are an upper limit and a lower limit of the reactive power regulation quantity of the ith distributed new energy respectively;
Formula (32) and formula (33) represent an active power regulation quantity constraint of energy storage and a reactive power regulation quantity constraint of SVCs respectively, ΔP(k+n−1|k) and Δu
(k+n−1|k) are an active power regulation quantity of ith energy storage and a control variation of the ith SVC at the time (k+n−1) respectively, Δ
ES and ΔP
ES are an upper limit and a lower limit of the active power regulation quantity of the ith energy storage respectively, and Δū
and Δu
are an upper limit and a lower limit of the control variation of the ith SVC respectively;
Formula (34) indicates a relationship between voltage and injection power of nodes of the active power distribution network, ΔP(k+n|k) and ΔQ
(k+n|k) are an injected active power variation and an injected reactive power variation of the jth node at the time (k+n) respectively, and
are variation coefficients of a voltage of the ith node with respect to an injected active power and an injected reactive power of the jth node respectively; N is a set of the nodes of the active power distribution network.
Further, the source-storage-load multi-terminal collaboration-based distributed voltage control model is established based on the objective function (29) and constraints (30)-(34) of the nodes, and is specifically expressed as:
In formula (35), φi is a weight coefficient of the objective function of the ith node, M represents the number of the nodes of the active power distribution network, u is a value of the control variable of the ith node during iteration p, and u
,
,
{1,2,L M} represents a value of the control variable of the jth node during iteration (p−1); and similarly, formula (35) meets constraints (30)-(34).
Step 5: the source-storage-load multi-terminal collaboration-based distributed voltage control takes into account the problems of voltage magnitude being out of limit and voltage leap, an optimal control sequence of the source terminal, the load terminal and the storage terminal is solved online in a receding horizon, and power regulation quantities of the source terminal, the load terminal and the storage terminal are allocated according to the optimal control sequence.
The optimal control sequence of the source terminal, the load terminal and the storage terminal is solved online through the following steps:
Step 1: whether ETF in (28) is triggered at the time k is determined; if so, Step 2 is performed; otherwise, k=k+1, and Step 1 is performed again;
Step 2: a convergence threshold ε, a maximum number of iterations
Step 3: whether a 2-norm ¿∨uip−uip−1∨¿2 of the control variable during two iterations is greater than the convergence threshold ε and whether the number of iterations p is less than
Step 4: the objective function (35) of the source-storage-load multi-terminal collaboration-based distributed voltage control model is solved to obtain an optimization control sequence u, in which p=p+1; u
is updated by formula (36); Step 3 is performed;
Step 5: a control variable at an initial position of u is issued to the distributed new energy inverter, the energy storage inverter and the SVC inverter, where k=k+1; and Step 1 is performed.
It should be noted that a long-timescale control method and a short-timescale control method provided by the invention may be used separately or together. When the long-timescale control method and the short-timescale control method are used together for regulation, the voltage regulation capacity is higher.
In the invention, a corresponding simulation experiment is carried out based on an IEEE 33 Bus simulation system shown in
As can be known with reference to
As can be known with reference to
As can be known with reference to
Therefore, the method provided by the invention guarantees the overall economy of the system under the precondition of ensuring the security of the active power distribution network, solves many voltage problems of the active power distribution network, and has a high response speed, a good voltage control effect and certain practical engineering significance.
The above embodiments are merely preferred ones of the invention. It should be noted that various improvements and transformations may be made by those ordinarily skilled in the art without departing from the technical principle of the invention, and all these improvements and transformations should fall within the protection scope of the invention.
Number | Date | Country | Kind |
---|---|---|---|
202110833753.0 | Jul 2021 | CN | national |
Filing Document | Filing Date | Country | Kind |
---|---|---|---|
PCT/CN2022/070193 | 1/5/2022 | WO |