Two-Stage Coordinate Optimal Scheduling of Seawater Pumped Storage in Active Distribution Networks
Abstract
:1. Introduction
- Variable speed seawater pumped storage is first utilized for dispatch in offshore local active distribution networks in China;
- A two-stage scheduling method considering variable speed seawater pumped storage, flexible loads, and REG in active distribution networks is presented. Both advantages of day-ahead and real-time scheduling are fully utilized and exploited.
2. Variable Speed Seawater Pumped Storage Model
2.1. Generating and Pumping Modes
2.2. Operation and Maintenance Cost of Seawater Pumped Storage
2.3. Operation Constraints of Variable Speed Seawater Pumped Storage Station
2.3.1. Day-Ahead Operation Constraints
2.3.2. Real-Time Operation Constraints
2.3.3. Problem Formulation
3. Optimal Scheduling Model
3.1. Day-Ahead Scheduling
3.1.1. Objective Function
3.1.2. Constraints
3.2. Real-Time Scheduling
3.2.1. Objective Function
3.2.2. Operation Constraints
3.3. Approach to Solve This Model
4. Case Study
4.1. System Description
4.2. Day-Ahead Scheduling Results and Analysis
4.3. Real-Time Scheduling Results and Analysis
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Abbreviations | |
REG | renewable energy generation |
WT | wind turbine |
PV | photo voltaic |
MMS | market management systems |
EMS | energy management systems |
IPSO | improved particle swarm optimizer |
GA | genetic algorithms |
Sets, parameters and constants | |
T, T′, t | set of indexes of the dispatch time periods |
kg | efficiency of the turbine generator |
ρ | density of seawater (1050 kg/m3) |
g | gravity acceleration (9.8 m/s2) |
h | water head height |
qg(τ) | flow rate of water volumetric input into the turbine at the time of τ |
qp(τ) | flow rate of water volumetric pumped from the sea at the time of τ |
kp | efficiency of the pump-motor unit |
Cg, Cp | start-up cost coefficient of turbine generator and pump-motor unit |
average annual installation fee of the seawater pumped storage | |
rsea | depreciation rate of the seawater pumped storage |
nsea | life time of the seawater pumped storage |
coefficient of pipelines corrosiveness cost | |
, | piping maintenance cost coefficient of turbine generator and pump-motor unit |
l | leakage loss and evaporation |
, | maximum output in generating and pumping modes |
minimum power of seawater pumped storage in pumping modes | |
, | bottom and top limit of water amount in upper reservoir |
, | maximum output in generating and pumping modes |
minimum output in pumping modes | |
Ω(t) | price of purchase electricity |
M, N | number of interruptible loads and incentive loads |
α, β | coefficients of interruptible loads and incentive loads |
kc(t), ke(t) | willingness factors of interruptible loads and incentive loads |
NWT, NPV, NL | number of WT, PV and nodes |
PWT(m,t) | output of m th WT |
PPV(n,t) | output of n th PV |
PL(i,t) | rigid loads at node i |
minimum reserve constraints in generating modes | |
minimum reserve constraints in pumping modes | |
, | base reserve capacities in generating and pumping modes |
η, λ | proportional coefficient, values of both were taken as 0.2 |
maximum purchase power from main grid in day-ahead | |
∆PWT(t) | prediction errors of WT |
∆PPV(t) | prediction errors of PV |
PWT’(m,t) | output of m th WT |
PPV’(n,t) | output of n th PV |
maximum power purchase from the main grid | |
Variables | |
, | start-up cost of turbine generator and pump-motor unit |
maintenance cost of the seawater pumped storage | |
piping maintenance cost of the seawater pumped storage | |
μg(t), μp(t) | binary variables of turbine generator and pump-motor unit |
Pg(t), Pp(t) | output in generating and pumping modes |
μg′(t), μp′(t) | binary variables of turbine generator and pump-motor unit |
Pg′(t), Pp′(t) | output in generating and input in pumping modes |
Csea(t), Cload(t) | seawater pumped storage and the response of flexible loads cost |
Qup(t), Qup′(t) | seawater quantity of upper reservoir in day-ahead and real-time |
fc(t), fe(t) | interruptible loads and incentive loads cost |
uc(i,t), ue(i,t) | status of i th interruptible loads and i th incentive loads |
Pf(t) | flexible loads |
PGrid(t) | purchase power from main grid |
Pc(t), Pe(t) | input of interruptible loads and incentive loads |
PL(i,t), Pf(t) | rigid loads at node i and flexible loads |
∆Pg(t), ∆Pp(t) | power adjustment in generating and pumping modes |
Pg′(t), Pgrid’(t) | power from seawater pumped storage and main grid |
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Maximum Power (kW) | Life Time (y) | kg/kp | |
---|---|---|---|
Generating mode | 3000 | 40 | 0.91 |
Pumping mode | 3000 | 40 | 0.82 |
Variation Range | α1 ¥/h | α2 ¥/kW·h | β1 ¥/(kW·h) | β2 ¥/(kW·h) |
---|---|---|---|---|
[0.6Pf, 1.4Pf] | 0.0002 | 0.25 | 0.00025 | 0.1 |
Period (h) | Price ¥/kW∙h | |
---|---|---|
Peak | [11:00, 16:00); [19:00, 22:00) | 1.2 |
Off-peak | [08:00, 11:00); [16:00, 19:00); [22:00, 24:00) | 0.7 |
Valley | [24:00, 08:00) | 0.3 |
Method | Total Operation Cost (¥) | Running Time (min) |
---|---|---|
IPSO | 136,247 | 6.4 |
GA | 135,774 | 8.8 |
Cplex | 131,886 | 3.6 |
The Cost of Purchase Power from Main Grid (¥) | Network Loss (kW·h) | |
---|---|---|
Case 1 | 146,915 | 4481 |
Case 2 | 131,886 | 3862 |
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Liang, N.; Deng, C.; Chen, Y.; Yao, W.; Li, D.; Chen, M.; Peng, P. Two-Stage Coordinate Optimal Scheduling of Seawater Pumped Storage in Active Distribution Networks. Sustainability 2018, 10, 2014. https://doi.org/10.3390/su10062014
Liang N, Deng C, Chen Y, Yao W, Li D, Chen M, Peng P. Two-Stage Coordinate Optimal Scheduling of Seawater Pumped Storage in Active Distribution Networks. Sustainability. 2018; 10(6):2014. https://doi.org/10.3390/su10062014
Chicago/Turabian StyleLiang, Ning, Changhong Deng, Yahong Chen, Weiwei Yao, Dinglin Li, Man Chen, and Peng Peng. 2018. "Two-Stage Coordinate Optimal Scheduling of Seawater Pumped Storage in Active Distribution Networks" Sustainability 10, no. 6: 2014. https://doi.org/10.3390/su10062014
APA StyleLiang, N., Deng, C., Chen, Y., Yao, W., Li, D., Chen, M., & Peng, P. (2018). Two-Stage Coordinate Optimal Scheduling of Seawater Pumped Storage in Active Distribution Networks. Sustainability, 10(6), 2014. https://doi.org/10.3390/su10062014