The present disclosure claims priority to Chinese Patent Application No. 201910958436.4, filed Oct. 10, 2019, the entire disclosure of which is incorporated herein by reference.
The present disclosure relates to a scheduling method for a power system based on flexible HVDC, which belongs to a field of power system control technologies.
A schedule of a power system aims to guide running of the power system, which is responsible for designing an output plan of an electric generating set to ensure that the power system can realize the optimal running in the premise of satisfying requirements of electricity-use loads and guaranteeing a safety of the power system. In recent years, more and more wind power generation devices are participated in the power system. For a system fed with a large scale of renewable energy sources, an existing active power adjusting method does not consider a flexible modulation of flexible direct current, and an existing determination method cannot well adapt to a strong random fluctuation of the large scale of renewable energy sources and cannot ensure a reliable consumption.
An objective of the present disclosure is to overcome a disadvantage in prior art, such that a scheduling method for a power system based on flexible HVDC (high-voltage direct current) and a pumped storage power station is provided. In the present disclosure, the pumped storage power station is used to stabilize a fluctuant of a wind power generation device, to enable a load center to receive a high quality and stable power, which may improve consumption of renewable energy and decrease an electricity cost.
A scheduling method for a power system based on flexible HVDC is provided. The method includes the following steps.
(1) Establishing a scheduling model for the power system based on flexible HVDC and a pumped storage power station, the scheduling model including an objective function and a plurality of constraints. The step has following sub steps (1-1) to (1-2).
(1-1) determining the objective function of the scheduling model for minimizing a total cost SSUM of the power system:
the total cost contains a transmission cost, an electricity cost and a penalty term, the transmission cost is represented by
where Ai represents a transmission cost function on an i-th transmission line in the power system, Pi represents an active power on the i-th transmission line, and I represents a set of flexible direct current transmission branches;
Ai=RiPi2; where Ri represents line loss on the i-th transmission line;
the electricity cost is represented by
where G represents a set of nodes connected to electric generators in the power system, and Gi represents an electricity cost function of an electric generator at an i-th node, PGi represents an active power of the electric generator at the i-th node;
Gi=aiPGi2+biPGi+ci; where ai,bi,ci represent electricity cost parameters of the electric generator at the i-th node, respectively;
the penalty term is a sum of an electricity abandoning penalty and a load tracking offset penalty, and is represented by Spun=S1+S2;
the electricity abandoning penalty is represented by
where Pj represents an actual output of a j-th renewable energy power station, pj represents a predictive output of the j-th renewable energy power station; J represents of a set of renewable energy power stations; α represents a coefficient for the electricity abandoning penalty of the renewable energy power station;
the load tracking offset penalty is represented by S2=γ(Pb.t−Pb.t−1)2, t∈T, where γ represents a coefficient for the load tracking offset penalty, T represents a controlled time period, Pb.t represents a load tracking value at the time point t, Pb.t−1 represents a load tracking value at a time point t−1;
(1-2) determining the plurality of constraints, including:
(1-2-1) an electric generator's power constraint:
PGi,min≤PGi−αi(umax−u0)
PGi−αi(umin−u0)≤PGi,max
where i is one element from a set G representing a set of nodes connected to electric generators, PGi,min, PGi,max represent a minimum output and a maximum output of the electric generator at an i-th node, respectively, PGi represents an active power of the electric generator at the i-th node, αi represents an adjustment coefficient for an automatic generation control of the electric generator at the i-th node, umax represents a maximum output of a renewable energy power station, umin represents a minimum output of the renewable energy power station, u0 represents an actual output of the renewable energy power station;
(1-2-2) a renewable energy power station's power constraint:
where Nw represents a set of nodes connected to renewable energy power stations, wi,0 represents a power set value of a renewable energy power station at an i-th node, wi,min represents a minimum output of the renewable energy power station at the i-th node, wi,max represents a maximum output of the renewable energy power station at the i-th node, w represents an lower limit of fluctuant of a renewable energy,
(1-2-3) a whole system power balance constraint:
where ND represents a set of nodes connected to toads, NG represents a set of nodes connected to traditional energy power stations, Nw represents a set of nodes connected to renewable energy power stations, PGi represents an active power of the electric generator at an i-th node connected to a traditional energy power, PDi represents a load power of an i-th node connected to a load, wi,0 represents a power set value of a renewable energy power station at an i-th node connected to a renewable energy power station;
(1-2-4) a transmission power capacity constraint:
where NG represents a set of nodes connected to traditional energy power stations, Nw represents a set of nodes connected to renewable energy power stations, ND represents a set of nodes connected to loads, GiL, GjL represent power transfer distribution factors of an L-th transmission branch relative to an i-th node and a j-th node, respectively, AGil represents a sensitivity of the L-th transmission branch to the active power of an i-th node connected to a renewable energy power station, PGi represents an actual output of an electric generator at an i-th node connected to a traditional energy power station, αi represents an adjustment coefficient for an automatic generation control of the electric generator at the i-th connected to traditional energy power station, wi,min represents a minimum output of the renewable energy power station at the i-th node connected to a renewable energy power station, wi,max represents a maximum output of the renewable energy power station at the i-th node connected to a renewable energy power station, u0 represents an actual output of the renewable energy power station, PDi represents a load power of the i-th node connected to a load;
where
(1-2-5) a pumped storage power station constraint:
wu,t+1−wu,t=wh,t−wg,t
wu,min≤wu,t≤wu,max
wl,t+1−wl,t=wg,t−wh,t
wl,min≤wl,t≤wl,max
wh,t=ηhph,t
pg,t=ηgwg,t
pch.t=B(t)pg,t
pdis.t=B(t)pg,t
pch.t≥0
pdis.t≥0
where pg,t represents a generating power of the pumped storage power station at the time point t, wg,t represents a water-use power of the pumped storage power station at the time point t, ηg represents a generating efficiency of the pumped storage power station, ph,t represents an electricity-use power of the pumped storage power station at the time point t, wh,t represents a water-store power of the pumped storage power station at the time point t, ηh represents a pumping efficiency of the pumped storage power station, wu,t represents a water storage of an upstream water reservoir at the time point t, wu,t+1 represents a water storage of an upstream water reservoir at a time point t+1, wu,max represents a maximum water storage of the upstream water reservoir, wu,min represents a minimum water storage of the upstream water reservoir, wl,t represents a water storage of a downstream water reservoir at the time point t, wl,t+1 represents a water storage of a downstream water reservoir at the time point t+1, wl,max represents a maximum water storage of the downstream water reservoir, wl,min represents a minimum water storage of the downstream water reservoir, pch.t represents an incoming power of the pumped storage power station at the time point t, pdis.t represents an outgoing power of the pumped storage power station at the time point t, B represents a Boolean function;
(1-2-6) a flexible direct current constraint:
pz=pz.i+pz.o
pz+lz=0
pz≤Sz
r≥|lz/Szl|
r≤1
where pz.i, pz.o represent an incoming power and an outgoing power of a flexible direct current bus Z, respectively, pz represents a direct current power of the flexible direct current bus Z, lz represents a transmission power of a flexible direct current transmission line connected to the flexible direct current bus Z, r represents a maximum load rate of the flexible direct current line, Sz represents a capacity of a convertor station at the flexible direct current bus Z, Szl represents a capacity of the flexible direct current line connected to the flexible direct current bus Z;
(2) Solving the scheduling model to obtain respective optimal solutions of PGi, wi,0, pg,t, lz, so as to acquire an optimal scheduling scheme of the power system.
The present disclosure has following features and advantages.
With the scheduling method for a power system based on flexible HVDC and a pumped storage power station, the constraint conditions utilize a robust model, the pumped storage power station is used to stabilize the fluctuant of the wind power generation device to reduce the regulating loads of the wind power generation set. Further, a flexible modulation of the flexible direct current is considered to adapt to a strong random fluctuant of a large scale of high-density renewable energy sources, so as to ensure a realizable consumption of the renewable energy. Since the fluctuant of the renewable energy sources in the power system is taken into account, a cost of correcting and controlling is reduced, a flexibility of adjusting the power system is improved, and a safety of the power system is ensured, which is applicable in rolling scheduling of the power system and other scenarios.
The present disclosure provides a scheduling method for a power system based on flexible HVDC and a pumped storage power station, which will be described in detail below in combination with specific embodiments.
A scheduling method for a power system based on flexible HVDC and a pumped storage power station is provided. As illustrated in
(1) Establishing a scheduling model for the power system based on flexible HVDC and the pumped storage power station, the scheduling model including an objective function and a plurality of constraints. The step has following sub steps (1-1) to (1-2).
In the present disclosure, the power system includes several renewable energy power stations (typically, wind power generation stations and PV power stations), a large pumped storage power station, several traditional energy power stations, and a load center.
(1-1) determining the objective function of the scheduling model for minimizing a total cost SSUM of the power system:
The total cost contains a transmission cost, an electricity cost and a penalty term, the transmission cost is represented by
where Ai represents a transmission cost function on an i-th transmission line in the power system, Pi represents an active power on the i-th transmission line, which is a quantity to be solved, and I represents a set of flexible direct current transmission branches, which is a known quantity.
The transmission cost function on the i-th transmission line can be expressed by:
Ai=RiPi2;
where Ri represents line loss on the i-th transmission line, which is a known quantity.
The electricity cost is represented by
where Gi represents an electricity cost function of an electric generator at an i-th node of the power system, PGi represents an active power of the electric generator at the i-th node, which is a quantity to be solved, and G represents a set of nodes connected to electric generators in the power system, which can be obtained from connected positions of all the electric generators in the power system, and is a known quantity.
The electricity cost function of the electric generator at the i-th node can be expressed by:
Gi=aiPGi2+biPGi+ci
where ai,bi,ci represent electricity cost parameters of the electric generator at the i-th node, respectively, which are known quantities.
The penalty term is a sum of an electricity abandoning penalty and a load tracking offset penalty, and is represented by Spun=S1+S2.
The electricity abandoning penalty is represented by
where Pi represents an actual output of a renewable energy power station j, which is a quantity to be solved, pj represents a predictive output of the renewable energy power station j; J represents of a set of renewable energy power stations; a represents a coefficient for the electricity abandoning penalty of the renewable energy power station
The load tracking offset penalty is represented by S2=γ(Pb.t−Pb.t−1)2, t∈T , where γ represents a coefficient for the load tracking offset penalty, which is a known quantity. T represents a controlled time period, which is a known quantity. Pb.t represents a load tracking value at a time point t.
(1-2) determining the plurality of constraints, including:
(1-2-1) an electric generator's power constraint:
PGi,min≤PGi−αi(umax−u0)
PGi−αi(umin−u0)≤PGi,max
where i is one element from a set G representing a set of nodes connected to electric generators, PGi,min, PGi,max represent a minimum output and a maximum output of the electric generator at the i-th node, respectively, which are known quantities. PGi represents an actual output of the electric generator at the i-th node, which is a quantity to be solved. αi represents an adjustment coefficient for an automatic generation control of the electric generator at the i-th node, which is a known quantity. umax represents a maximum output of the renewable energy power station, umin represents a minimum output of the renewable energy power station, u0 represents an actual output of the renewable energy power station.
(1-2-2) a renewable energy power station's power constraint:
where Nw represents a set of nodes connected to renewable energy power stations, wi,0 represents a power set value of the renewable energy power station at the i-th node, which is a quantity to be solve. wi,min represents a minimum output of the renewable energy power station at the i-th node, which is a known quantity. wi,max represents a maximum output of the renewable energy power station at the i-th node, which is a known quantity. w represents an lower limit of fluctuant of a renewable energy,
(1-2-3) a whole system power balance constraint:
where ND represents a set of nodes connected to loads, NG represents a set of nodes connected to traditional energy power stations, Nw represents a set of nodes connected to renewable energy power stations, PDi represents a load power of an i-th node connected to the load, which is a known quantity.
(1-2-4) a transmission power capacity constraint:
where GiL, GjL represent power transfer distribution factors of an L-th transmission branch relative to the i-th node and the j-th node, respectively, AGil represents a sensitivity of the L-th transmission branch to the active power of the i-th node.
where
(1-2-5) a pumped storage power station constraint:
wu,t+1−wu,t=wh,t−wg,t
wu,min≤wu,t≤wu,max
wl,t+1−wl,t=wg,t−wh,t
wl,min≤wl,t≤wl,max
wh,t=ηhph,t
pg,t=ηgwg,t
pch.t=B(t)pg,t
pdis.t=B(t)pg,t
pch.t≥0
pdis.t≥0
where pg,t represents a generating power of the pumped storage power station at the time point t, wg,t represents a water-use power of the pumped storage power station at the time point t, ηg represents a generating efficiency of the pumped storage power station, ph,t represents an electricity-use power of the pumped storage power station at the time point t, wh,t represents a water-store power of the pumped storage power station at the time point t, ηh represents a pumping efficiency of the pumped storage power station, wu,t represents a water storage of an upstream water reservoir at the time point t, wu,t+represents a water storage of the upstream water reservoir at a time point t+1, wu,max represents a maximum water storage of the upstream water reservoir, wu,min represents a minimum water storage of the upstream water reservoir, wl,t represents a water storage of a downstream water reservoir at the time point t, wl,t+1 represents a water storage of the downstream water reservoir at the time point t+1, wl,max represents a maximum water storage of the downstream water reservoir, wl,min represents a minimum water storage of the downstream water reservoir, pch.t represents an incoming power of the pumped storage power station at the time point t, pdis.t represents an outgoing power of the pumped storage power station at the time point t, B represents a Boolean function.
(1-2-6) a flexible direct current constraint:
pz=pz.i+pz.o
pz+lz=0
pz≤Sz
r≥|lz/Szl|
r≤1
where pz.i, pz.o represent an incoming power and an outgoing power of a flexible direct current bus Z, respectively, pz represents a direct current power of the flexible direct current bus Z, lz represents a transmission power of a flexible direct current line connected to the flexible direct current bus Z, r represents a maximum load rate of the flexible direct current line, Sz represents a capacity of a convertor station at the flexible direct current bus Z, Szl represents a capacity of the flexible direct current line connected to the flexible direct current bus Z.
(2) Solving the scheduling model using CPLEX to obtain respective optimal solutions of PGi, wi,0, pg,t, lz, and using the respective optimal solutions in a generating control of the traditional energy power generation set, a generating control of the renewable energy power generation set, a control of the pumped storage power station and a control of the flexible direction current, so as to acquire an optimal scheduling scheme of the power system.
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