Optimization of Sizing and Operation Strategy of Distributed Generation System Based on a Gas Turbine and Renewable Energy
Abstract
:1. Introduction
- An artificial intelligence technique that combines an ANN and GA is applied for the complete and robust optimization of the sizing and operation strategy of a DG system.
- The ANN is introduced to simulate the physics-based model that can describe the real operating characteristics of every component and improve the computational efficiency.
- Optimization of the sizing and operation strategy of the DG system was performed in consideration of the cost-effectiveness and eco-friendliness.
2. System and Modeling
2.1. System Description
2.2. Gas Turbine Combined Cycle
2.2.1. Gas Turbine
2.2.2. Bottoming Cycle
2.3. Renewable Energy
2.3.1. Photovoltaics
2.3.2. Wind Turbine
2.4. Battery Energy Storage System
3. Analysis and Optimization
3.1. Overview
- Case 1: 15-MW GT, full load operation
- Case 2: 15-MW GT, partial load operation (down to 50% power)
- Case 3: 5.7-MW GT, full load operation
3.2. Artificial Neural Network Model
3.3. Battery Charge/Discharge Scheduling
3.4. Objective Functions for Optimization
3.5. Genetic Algorithm
- Maximize the weighted objective function (Equation (31)) subject to
- Design variables:
4. Results and Discussion
4.1. Performance of the ANN Model
4.2. Optimization Results
5. Conclusions
- To simplify the calculation process of the complex DG system, an ANN model was constructed. The current ANN model based on the physics-based model, unlike the conventional ANN model based on measured data, did not require a test dataset for overfitting. Therefore, a large proportion of the dataset was used for training the ANN model, so the ANN model mimicked the physics-based model very well: The MSE had a maximum of 2.7 × 10−4 and a minimum of 1.8 × 10−5. As a result, the ANN model showed an improvement of at least 5200 times and at most 22,300 times for calculation time and reduced the memory required for calculation by up to 62.3%. Therefore, the ANN model is suitable for use in the optimization calculation of the DG system.
- The sizing and operation strategy of the DG system was optimized using the GA. In addition, to determine only one global optimum solution among many local solutions from GA, a weighted objective function considering eco-friendliness and cost-effectiveness was used. The optimization results were summarized for three cases according to the operation mode of the GT. In case 1, only the batteries acted as flexible resources. Hence, it had the smallest sharing rate of RE and the largest battery capacity, but had the longest life of the battery. In case 2, not only the batteries but also the GT were used as flexible resources, so the capacity of the batteries was the smallest. In case 3, the capacity of the GT is lower compared to cases 1 and 2, and it had to operate at full load. It was found to be more economical to purchase the electricity from a grid than to install the large capacity batteries, so case 3 had the smaller battery capacity than case 1. However, in case 3, the installed capacity of RE was larger, which makes the battery capacity larger than that of case 2. In cases 2 and 3, the life of the battery was shorter due to rapid charging and discharging.
- Excessive power generation compared to demand leads to an increase in required battery capacity, resulting in an increase in LCOE. In case 2, where the GT operated flexibly, the LCOE was 14.4% lower than case 1 and 42.3% lower than case 3. In other words, minimizing the role of the battery through flexible operation of a conventional generator like the GTCC is the best choice for feasible and economic performance in isolated regional DG.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
Nomenclature
A | Area (m2) |
ANN | Artificial neural network |
a | Ideality factor (-) |
BC | Bottoming cycle |
C | Capacity (Ah) |
Cheat | Heat capacity (kJ/K) |
Cp | Power coefficient (-) |
Cr | Heat capacity ratio (-) |
CF | Capacity factor (-) |
Cap | Capital cost ($) |
Cycle | Cycles of battery (-) |
cf | Correction factor (-) |
DG | Distributed generation |
DoD | Depth of discharge (-) |
d | Degradation rate (-) |
E | Electricity generation (MW) |
ECON | Economizer |
ESS | Energy storage system |
EVAP | Evaporator |
Eg | Band gap energy (eV) |
FFN | Feed forward neural network |
FC | Fuel cost ($) |
G | Solar Irradiation (W/m2) |
GA | Genetic algorithms |
GT | Gas turbine |
GTCC | Gas turbine combined cycle |
I | Current (A) |
i | Discount rate (-) |
H | Height (m) |
h | Specific enthalpy (kJ/kg) |
K | short-circuit current temperature coefficient (A/K) |
k | Boltzman constant (1.38 × 10−23 J/K) |
L | Power demand (MW) |
LCOE | Levelized cost of electricity ($/kWh) |
LHV | Lower heating value (kJ/kg) |
M | Semi-dimensionless mass flow rate (ms K0.5) |
MPP | Maximum power point |
MPPT | Maximum power point tracking |
MSE | Mean squared error |
Mass flow rate (kg/s) | |
N | Speed (rpm) |
NG | Natural gas |
NTU | Number of transfer unit |
n | Number |
OM | O&M cost ($) |
Obj | Objective function |
PR | Pressure ratio (-) |
PV | Photovoltaics |
Purel | Electricity purchase price ($) |
P&O | Perturb and observe |
p | Pressure (kPa) |
Q | Charged/discharged energy (MWh) |
q | Electron charge (1.6 × 10−19 C) |
R | Resistance (ohm) |
RE | Renewable energy |
REC | Renewable energy certificate |
RPS | Renewable portfolio standard |
r | Blade radius (m) |
S | Stored energy (MWh) |
SMP | System marginal price |
SPHT | Superheater |
Salesel | Electricity sale price ($) |
SoC | State of charge (-) |
T | Temperature (°C) |
t | Time (h) |
U | Overall heat transfer coefficient (W/m2 K) |
V | Voltage (V) |
VIGV | Variable inlet guide vane |
v | Wind speed (m/s) |
Power (MW) | |
WT | Wind turbine |
w | Weights (-) |
X | Electricity transaction volume (MWh) |
Greek | |
α | Exponent (-) |
β | Blade pitch angle (o) |
ε | Effectiveness (-) |
η | Efficiency (-) |
λ | Tip-power ratio (-) |
λi | Constants |
ρ | Density (m3/s) |
Ω | Semi-dimensionless speed (rpm/K0.5) |
ω | Rotor speed (rad/s) |
Subscripts | |
air | Air |
Bat | Battery |
c | Cold |
ch | Charge |
co | Corrected map |
comp | Compressor |
conv | Conversion |
d | Design |
dem | Demand |
dis | Discharge |
f | Fuel |
GT | Gas turbine |
g | Generator |
gear | Gear box |
h | Hot |
in | Inlet |
inv | Inverter |
max | Maximum |
me | Mechanical |
min | Minimum |
o | Saturation |
opt | Optimal |
or | Original map |
out | Outlet |
p | Shunt |
ph | Light generation |
r | Rate |
ref | Reference |
rem | Remain |
rotor | Rotor |
S | Shaft |
ST | Steam turbine |
STC | Standard test condition |
s | Isentropic |
sc | Short-circuit |
se | Series |
T | Thermal |
t | Turbine |
tot | Total |
VIGV | Variable inlet guide vane |
0 | Near-surface |
10 | Rated charge time of battery is 10 h |
Appendix A
Iteration | Design Variables | Objective Functions | Weighted Objective Function | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Number of PV | Number of WT | Charging Rate of Battery [MWh] | LCOE [$/kWh] | Load Sharing Rate | Self-Consumption Rate | |||||||||
1 h | 2 h | 3 h | 4 h | … | 22 h | 23 h | 24 h | |||||||
1 | 207,946 | 9 | −14.58 | 3.63 | 6.89 | 8.07 | −17.40 | −17.91 | −15.57 | 676.06 | 0.28 | 0.94 | 0.63 | |
2 | 569,001 | 8 | −19.33 | 2.18 | 4.58 | 5.46 | −15.13 | −15.02 | −18.76 | 881.06 | 0.32 | 0.91 | 0.54 | |
3 | 649,810 | 5 | −10.14 | 0.66 | 3.54 | 4.68 | −9.41 | −8.65 | −8.51 | 596.26 | 0.26 | 0.93 | 0.61 | |
4 | 715,253 | 1 | −9.77 | −11.65 | 0.67 | 2.57 | −8.44 | −8.91 | −9.66 | 494.31 | 0.17 | 0.97 | 0.64 | |
5 | 709,664 | 9 | −14.63 | 2.18 | 4.13 | 4.84 | −11.69 | −11.90 | −11.53 | 876.09 | 0.38 | 0.87 | 0.49 | |
6 | 303 | 1 | −0.65 | −1.41 | 16.04 | 61.08 | −0.69 | −0.43 | −0.51 | 220.03 | 0.03 | 1.00 | 0.66 | |
7 | 687,130 | 1 | −9.29 | −12.29 | 0.72 | 2.73 | −10.89 | −9.55 | −10.93 | 476.96 | 0.16 | 0.97 | 0.64 | |
8 | 749,938 | 9 | −16.87 | 2.11 | 4.00 | 4.68 | −10.20 | −16.48 | −14.78 | 798.22 | 0.39 | 0.86 | 0.50 | |
9 | 659,032 | 9 | −19.47 | 2.15 | 4.31 | 5.05 | −13.87 | −20.55 | −18.91 | 913.85 | 0.37 | 0.88 | 0.50 | |
10 | 207,946 | 9 | −19.63 | 1.97 | 4.28 | 5.11 | −14.35 | −15.56 | −21.58 | 906.11 | 0.34 | 0.90 | 0.52 | |
11 | 427,860 | 1 | −9.07 | −9.13 | 1.54 | 5.85 | −7.79 | −7.88 | −7.77 | 318.68 | 0.11 | 0.98 | 0.68 | |
12 | 279,406 | 1 | −6.72 | −7.78 | 3.70 | 14.11 | −7.83 | −5.44 | −6.34 | 236.50 | 0.08 | 0.99 | 0.70 | |
13 | 718,296 | 9 | −17.39 | 2.11 | 4.10 | 4.80 | −15.34 | −15.06 | −14.22 | 1380.90 | 0.38 | 0.88 | 0.37 | |
14 | 658,993 | 9 | −19.41 | 2.15 | 4.31 | 5.05 | −13.97 | −20.45 | −18.89 | 917.29 | 0.37 | 0.88 | 0.50 | |
15 | 602,976 | 8 | −17.75 | 2.09 | 4.42 | 5.28 | −14.35 | −14.73 | −18.63 | 995.00 | 0.33 | 0.91 | 0.50 | |
16 | 716,119 | 9 | −17.46 | 2.11 | 4.11 | 4.81 | −15.33 | −14.96 | −14.51 | 1352.51 | 0.38 | 0.88 | 0.38 | |
… | … | |||||||||||||
345 | 706,953 | 8 | −13.76 | 1.91 | 4.01 | 4.79 | −11.69 | −11.72 | −11.70 | 841.60 | 0.35 | 0.89 | 0.52 | |
346 | 751,660 | 9 | −16.24 | 2.11 | 3.99 | 4.68 | −11.55 | −16.64 | −14.59 | 804.39 | 0.39 | 0.86 | 0.50 | |
347 | 614,281 | 8 | −17.94 | 2.05 | 4.37 | 5.22 | −14.44 | −14.86 | −17.99 | 937.97 | 0.33 | 0.91 | 0.52 | |
348 | 710,349 | 4 | −10.25 | −10.73 | 2.90 | 4.10 | −9.66 | −8.06 | −8.30 | 593.94 | 0.24 | 0.94 | 0.61 | |
349 | 751,450 | 1 | −8.62 | −11.83 | 0.63 | 2.39 | −12.12 | −9.67 | −12.56 | 515.67 | 0.17 | 0.96 | 0.63 | |
350 | 359,758 | 1 | −7.78 | −7.23 | 2.10 | 8.02 | −8.16 | −7.33 | −6.91 | 279.42 | 0.10 | 0.99 | 0.69 |
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Parameter | 15-MW | 5.7-MW | ||
---|---|---|---|---|
Value | Ref. | Value | Ref. | |
Compressor inlet mass flow rate | 49.1 kg/s | [35] | 21.5 kg/s | [36] |
Compressor pressure ratio | 17.1 | [35] | 12.2 | [36] |
Turbine rotor inlet temperature | 1180 °C | [37] | 1080 °C | [38] |
Turbine exhaust gas temperature | 495 °C | [35] | 510 °C | [36] |
Gas turbine power | 15 MW | [35] | 5.7 MW | [36] |
Gas turbine efficiency | 0.352 | [35] | 0.315 | [36] |
Parameter | Value | Ref. | |
---|---|---|---|
15-MW GT | 5.7-MW GT | ||
Steam turbine inlet pressure | 1687 kPa | [39] | |
Steam turbine inlet temperature | 225.6 °C | [39] | |
Steam turbine efficiency | 0.75 | [39] | |
Steam turbine outlet pressure | 100 kPa | Assumed | |
Pinch point temperature difference | 10 °C | Assumed | |
Exhaust gas temperature | 170.3 °C | 167.8 °C | Result |
Steam turbine power | 2.6 MW | 1.2 MW | Result |
Parameter | Value | Ref. |
---|---|---|
Open circuit voltage | 21.6 V | [51] |
Short circuit current | 3.27 A | |
Voltage at the maximum power point | 17.4 V | |
Current at the maximum power point | 3.05 A | |
Short circuit current temperature coefficient | 0.0017 A/K | |
Maximum power output | 53 W | |
Series resistance | 0.2 ohm | Result |
Shunt resistance | 305.3 ohm | Result |
Parameter | Value | Ref. |
---|---|---|
Cut-in wind speed | 3 m/s | [56] |
Rated wind speed | 10 m/s | |
Cut-out wind speed | 20 m/s | |
Rotor diameter | 134 m | |
Blade length | 65.5 m | |
Hub height | 90 m | |
Rated power | 3 MW | Result |
Blade pitch angle | 2.3° | Result |
Parameter | Value | Ref. |
---|---|---|
Nominal voltage | 2 V | [60] |
End-of-charge voltage | 2.4 V | [59] |
End-of-discharge voltage | 1.75 V | [60] |
Minimum SoC | 20% | [58] |
Maximum SoC | 90% | [58] |
Charging efficiency | 89.5% | [61] |
Discharging efficiency | 89.5% | [61] |
Component | Input Data | Output Data | |
---|---|---|---|
Parameter | Range | ||
Common | 0–40 °C | - | |
Gas turbine combined cycle | 7.5–16 MW (15-MW GT)/ 2.8–6 MW (5.7-MW GT) | ||
Photovoltaic module | 0–1000 W/m2 | ||
Wind turbine | 0–50 m/s |
Parameter | Value | Ref. | |
---|---|---|---|
Installation cost | GTCC | $ | [67] |
PV | Module: 400 $/kW BoS: 400 $/kW | [68,70] | |
WT | Turbine: 980 $/kW BoS: 980 $/kW | [69,71] | |
Battery | 300 $/kWh | [67] | |
Inverter | 194 $/kW | [61] | |
O&M cost | GTCC | 3 $/MWh (variable) 0.6 M$/year (fixed) | [50] |
Inverter | 1% of the module cost | [61] | |
PV | 1% of the turbine cost | [69] | |
WT | 1% of the battery cost | [69] | |
Fuel cost | 14.7 won/MJ | [72] | |
Electricity purchase | - | ||
Electricity sales | - | ||
Degradation rate | GTCC | 10% | [69] |
PV | 0.5% | [69] | |
WT | 0.5% | [69] | |
Discount rate | 8% | [69] | |
Interest rate | 5% | [69] | |
Exchange rate | 1180 won/$ | [73] | |
Project period | 25 years | [66] |
Base Price | Electricity Price | |
---|---|---|
Off-peak time | 7220 won/kW | 61.6 won/kWh |
Mid-peak time | 84.1 won/kWh | |
On-peak time | 114.8 won/kWh |
Case | Calculation Time | Required Memory | |||
---|---|---|---|---|---|
Physics-Based Model | Neural Network Model | Physics-Based Model | Neural Network Model | ||
Case 1 | Simple | 28.06 s | 0.004716 s | 423.3 MB | 175.9 MB |
Total | 2,806,000 s | 538.7 s | |||
Case 2 | Simple | 58.07 s | 0.002860 s | 426 MB | 160.2 MB |
Total | 5,807,000 s | 259.8 s | |||
Case 3 | Simple | 31.74 s | 0.003612 s | 387.8 MB | 168.8 MB |
Total | 3,174,000 s | 362.5 s |
Parameter | Case 1 | Case 2 | Case 3 | |
---|---|---|---|---|
PV | Number | 138,117 | 613,062 | 693,810 |
Power | 0.5 MW | 2.8 MW | 3.2 MW | |
WT | Number | 2 | 2 | 3 |
Power | 1.3 MW | 1.3 MW | 1.9 MW | |
Battery | Capacity | 7.6 MWh | 0.2 MWh | 0.6 MWh |
Charged energy | 6.1 MWh | 0.15 MWh | 0.5 MWh | |
Discharged energy | 4.9 MWh | 0.11 MWh | 0.36 MWh | |
Electricity sales | 0 MWh | 0.09 MWh | 0.26 MWh | |
DoD | 57.9% | 66.6% | 66.7% | |
Cycles | 1005.9 | 795.8 | 795.0 | |
Objective functions | LCOE | 0.1947 $/kWh | 0.1667 $/kWh | 0.2891 $/kWh |
Load sharing rate | 8.0% | 17.2% | 21.5% | |
Self-consumption rate | 99.5% | 99.9% | 99.9% |
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Kim, H.-R.; Kim, T.-S. Optimization of Sizing and Operation Strategy of Distributed Generation System Based on a Gas Turbine and Renewable Energy. Energies 2021, 14, 8448. https://doi.org/10.3390/en14248448
Kim H-R, Kim T-S. Optimization of Sizing and Operation Strategy of Distributed Generation System Based on a Gas Turbine and Renewable Energy. Energies. 2021; 14(24):8448. https://doi.org/10.3390/en14248448
Chicago/Turabian StyleKim, Hye-Rim, and Tong-Seop Kim. 2021. "Optimization of Sizing and Operation Strategy of Distributed Generation System Based on a Gas Turbine and Renewable Energy" Energies 14, no. 24: 8448. https://doi.org/10.3390/en14248448
APA StyleKim, H. -R., & Kim, T. -S. (2021). Optimization of Sizing and Operation Strategy of Distributed Generation System Based on a Gas Turbine and Renewable Energy. Energies, 14(24), 8448. https://doi.org/10.3390/en14248448