Research on Optimal Configuration of Landscape Storage in Public Buildings Based on Improved NSGA-II
Abstract
:1. Introduction
- Taking an existing public building as an example, a renewable energy microgrid structure based on wind power and photovoltaic power generation combined with an energy storage system is constructed;
- Establishing a multi-objective renewable energy capacity allocation and optimization model for public buildings considering cost objectives, carbon emission reduction objectives and grid-connected security objectives;
- Proposing a spatial transformation constraint processing method to transform the unsatisfied solution into a feasible solution in a feasible domain. The spatial transformation method combined with the NSGA-II is applied to the problem that the number of feasible solutions is reduced due to multi-variable mutual constraints and the problem that the strong constraints are difficult to meet.
- Using the STNSGA-II proposed in this paper to simulate and solve the multi-objective renewable energy optimization model of public buildings to verify its effectiveness.
2. Power Supply Model
2.1. Microgrid Structure of Public Buildings
2.2. Wind Power Generation System Model
2.2.1. Fan Generation Model
2.2.2. Calibration of Wind Speed at Fan Hub Height
2.3. Photovoltaic Power Generation Model
2.4. Battery Energy Storage Model
2.5. Grid-Connected Inverter Power Model
3. Optimal Allocation Model of Public Building
3.1. Average Daily Processing Model
3.2. Economic Objectives of Microgrid Systems
3.2.1. Equipment Acquisition Cost
3.2.2. Equipment Operation and Maintenance Costs
3.2.3. Electricity Transaction Cost of Microgrid System
3.3. Microgrid System Grid-Connected Security Objective
3.4. Environmental Protection Objective of Public Building Microgrid System
4. Constraint Condition
4.1. Power Balance Constraint
4.2. Constraint of Active Power Shortage of New Energy Power Generation System
4.3. Restriction on the Number of Installed PV Arrays
4.4. Fan Installation Quantity Constraint
4.5. Wind and Photovoltaic Complementary Power Generation Constraints
4.6. Battery Constraints
5. Methods
5.1. Outline of NSGA-II
- The fast non-dominated sorting method reduces the computational complexity of non-dominated sorting;
- Elite strategy is introduced to expand the sampling space and improve the accuracy of the optimization results;
- The introduction of crowding comparison operators overcome the defect that shared parameters need to be specified in the NSGA, and the crowding comparison operators are used as the comparison criteria between individuals of the population.
- The individuals of the population are evenly distributed in the whole Pareto frontier to ensure the diversity of the population. The NSGA-II is described in detail in reference [41].
5.2. Application and Defect of NSGA-II
5.3. The Improvement of NSGA-II
- The transformation logic of the equality constraint :
- The transformation logic of inequality constraints
5.4. STNSGA-II Algorithm Flow
6. Case Studies and Simulation Results
6.1. Simulation Case and Initial Data Processing
6.1.1. Simulation Case
6.1.2. Fan Data Processing
6.1.3. Photovoltaic Arrays Data Processing
6.1.4. Building Electricity Load
6.1.5. Datas Averaging Processing
6.2. Simulation Results of Multi-Objective Optimization and Analysis
6.2.1. Simulation Results
6.2.2. Economic Analysis
6.2.3. Analysis of Grid-Connected Security
6.2.4. Carbon Reduction Analysis
6.2.5. Comparative Analysis of Algorithms
6.2.6. The Future Research
7. Conclusions
- The application of a renewable power generation system in public buildings has a practical significance. The use of clean and renewable energy can not only increase the diversity of energy and reduce the use of fossil energy, but it can also produce certain economic benefits and reduce the cost of daily energy use;
- The energy storage system absorbs the energy produced by the renewable power generation system, and, at the same time, participates in the peak cutting and valley filling of the whole operation cycle. It converts the fluctuation of the wind power and photovoltaic grid-connected energy into the charging and discharging process of the battery, which plays an important role in the protection of the power grid;
- In this study, aiming at the drawbacks of the traditional NSGA-II, with which it is difficult to solve multi-objective strong constraint problems, a spatial transformation constraint processing concept is proposed to deal with strong constraints. Results show that the STNSGA-II has more advantages than the NSGA-II in solving constrained nonlinear multi-objective optimization problems.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Symbol | Meaning |
afan | The wind speed correction coefficient |
C | The total cost of the microgrid system of public buildings |
Cbat(t) | The energy storage capacity of the battery at time t |
Cbat(t − 1) | The energy storage capacity of the battery at time t − 1 |
Cbat,max | The maximum capacity of the battery |
Cbat,min | The minimum capacity of the battery |
Cc | The cost of equipment acquisition in the microgrid |
CE(t) | The electricity price at time t |
Cgird | Transaction profit and loss cost generated by energy exchange between the microgrid and power grid |
Ci | The purchase cost of each piece of equipment |
Co&m | The operation and maintenance cost of the equipment |
Co&m-wind | The operation and maintenance cost of the fans in a working cycle |
Co&m-pv | The operation and maintenance cost of the photovoltaic array in a working cycle |
Co&m-bat | The operation and maintenance cost of the battery in a working cycle |
Co&m-grid | The operation and maintenance cost of the inverter in a working period |
Cp | The wind energy utilization coefficient |
Capgrid | The capacity of the grid-connected inverter |
Dfan | The diameter of the fan blade |
Dpv-pv | The distance between adjacent PV arrays |
Droof | The width of the roof |
dpv | The width of the photovoltaic panels |
f | The PV array power derating factor |
Gen | The number of iterations |
Gp | The actual solar irradiance on the surface of the PV array |
Gstc | The solar radiation of the PV array under standard test conditions |
h0 | The unified observation height of the wind speed |
hfan | The vertical height of the fan from the horizontal plane |
his | The overall height of the fan |
j | The service life of the equipment |
k | The number of days of equipment life |
Kmax | The maximum value of the ratio between wind power and photoelectric power |
Kmin | The minimum value of the ratio between wind power and photoelectric power |
Lpv | The length of the photovoltaic array |
Lroof | The length of the roof |
Mco2 | The carbon dioxide emission reduction index |
mgrid-co2 | The carbon emission of coal power generation |
mpv-co2 | The carbon emission of photovoltaic power generation |
mwind-co2 | The carbon emission of fan power generation |
Nfan | The actual installed number of fans |
Nfan,max | The maximum installed number of fans |
Ni | The installed number of pieces of equipment, respectively, the number of fans, photovoltaic panels |
Npv | The actual number of photovoltaic arrays installed |
Npv,max | The maximum number of photovoltaic panels installed |
NSGA-II | Non-dominated Sorting Genetic Algorithm-II |
Pbat(t) | The electric energy actually released by the energy storage system at time t |
Pbat,max | The maximum allowable charging and discharging power of the battery |
pc | The crossover probability |
Pfm | The maximum output power of the fan |
Pfr | The rated output power of the fan |
Pgrid(t) | The electric energy exchanged between the microgrid and the power grid at time t |
The average electric energy exchange value between the inverter and the external grid within an optimization cycle | |
pm | The mutation probability |
PV | Photovoltaic |
Ppv | The output power of the PV |
Ppv,stc | The rated capacity of the PV array |
Pwind | The output power of the fan |
r | The inflation rate |
S | The actual scavenging area of the fan blade |
Sfan | The floor area of the fan installation |
sizepop | The population number |
SOC | The state of charge |
SOCbat,max | The maximum charge state of the battery |
SOCbat,min | The minimum charge state of the battery |
Spv | The area occupied by a single photovoltaic array considering the distance between photovoltaic arrays |
STNSGA-II | Spatial Transformation Non-dominated Sorting Genetic Algorithm-II |
Tpv,p | The actual temperature of the PV array surface |
Tpv,stc | The temperature under standard test conditions |
v | The actual wind speed |
Vci | The cut-in wind speed |
Vco | The cut-off wind speed |
Vh0 | The measured wind speed at h0 |
Vm | The maximum wind speed |
Vr | The rated wind speed |
α | The angle between the photovoltaic array and the horizontal plane |
αpv | The power temperature coefficient |
δ | The self-discharge rate of the battery |
δgrid | The grid-connected inverter fluctuation index |
δloss | The active power deficiency rate |
δloss,max | The maximum active power deficiency rate of the new energy power generation system |
ηc | The charging efficiencies of the battery |
ηd | The discharging efficiencies of the battery |
ρ | The air density at the height of the fan hub |
φ | The latitude of photovoltaic placement area |
The downward integral function |
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Fan Model | Vci | Vr | Vmax | Vco | Pfr | Pfm | hfan | Dfan | Cp | T |
---|---|---|---|---|---|---|---|---|---|---|
FD-300 W (400 W) | 2 m/s | 10 m/s | 13 m/s | 15 m/s | 300 w | 400 w | 2 m | 1.22 m | 0.4215 | 20–40 °C |
PV Array Model | HP-S100-12S |
---|---|
Pv size | 850 × 680 × 30 mm |
NOCT | 45 °C ± 2 °C |
Pstc | 100 W |
αpv | −0.5% (±0.05%)/°C |
Upv | 18.00 V |
Ipv | 5.60 A |
Gstc | 1000 W/m2 |
Tpv,stc | 25 °C |
Device Type | Cc | Co&m |
---|---|---|
Fan | 4500 ¥/KW | 800 ¥/KW |
Photovoltaic | 9000 ¥/KW | 100 ¥/KW |
Storage battery | 1800 × 4 ¥/KW | 60 ¥/KW |
Grid-connected inverter | 250 ¥/KW | 50 ¥/KW |
Algorithm | Case | Fan | Photovoltaic | Battery (kwh) | Inverter Capacity (kwh) | Average Daily Cost (yuan) | Inverte Fluctuation | Carbon Emission Reductions (kg) |
---|---|---|---|---|---|---|---|---|
STNSGA-II | 1 | 310 | 6486 | 3670.6 | 659.9 | 14,190 | 3.84 | 3014.3 |
2 | 471 | 9125 | 2472.8 | 793.5 | 12,058 | 101.8 | 4298 | |
3 | 518 | 9004 | 1630.5 | 731.5 | 10,993 | 150.77 | 4328.8 | |
NSGA-II | 4 | 518 | 9004 | 1401.6 | 761.5 | 36,030 | 55.69 | 4328.4 |
5 | 359 | 6620 | 1404.1 | 369.2 | 32,062 | 9.7 | 3146.5 | |
6 | 465 | 9141 | 2323.6 | 993.7 | 13,976 | 334.33 | 4294.4 |
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Li, S.; Zhou, H.; Xu, G. Research on Optimal Configuration of Landscape Storage in Public Buildings Based on Improved NSGA-II. Sustainability 2023, 15, 1460. https://doi.org/10.3390/su15021460
Li S, Zhou H, Xu G. Research on Optimal Configuration of Landscape Storage in Public Buildings Based on Improved NSGA-II. Sustainability. 2023; 15(2):1460. https://doi.org/10.3390/su15021460
Chicago/Turabian StyleLi, Shibo, Hu Zhou, and Genzhu Xu. 2023. "Research on Optimal Configuration of Landscape Storage in Public Buildings Based on Improved NSGA-II" Sustainability 15, no. 2: 1460. https://doi.org/10.3390/su15021460
APA StyleLi, S., Zhou, H., & Xu, G. (2023). Research on Optimal Configuration of Landscape Storage in Public Buildings Based on Improved NSGA-II. Sustainability, 15(2), 1460. https://doi.org/10.3390/su15021460