Optimal Design and Mathematical Modeling of Hybrid Solar PV–Biogas Generator with Energy Storage Power Generation System in Multi-Objective Function Cases
Abstract
:1. Introduction
1.1. Background Justification and Motivations
1.2. Related Works
1.3. Contribution and Organization of the Paper
- To examine the impact of various inputs of financial, reliability, CO2 emissions parameters, and sensitivity analysis is performed on the optimized hybrid system components;
- Uncertainties in providing load demand in grid-connected systems are correctly addressed by a hybrid solar PV–biogas system with a SMES-PHES energy storage system based on an energy management strategy;
- Optimal sizing of grid-connected hybrid solar PV–biogas with SMES-PHES energy storage systems are depending on three objective functions such as NPC, LPSP, and CO2 emissions by utilizing metaheuristic optimization techniques;
- Comparing the optimization outcomes of the three solutions mentioned in each Pareto front. These are the points of economical, compromised, reliable, or environmental proportionality;
- Establishing a mathematical model for each system component in order to discover the best compromise option in terms of cost, reliability, and environmental impact;
- In terms of global solution capture and convergence time, these optimization findings verified the NSWOA algorithm is superior to the other metaheuristic optimization techniques.
2. Over View of Study Area and Existing System
3. Methodology
4. Hybrid System Configuration and Descriptions
4.1. Mathematical Modeling of Hybrid System
4.1.1. Solar Energy Conversion System Modeling
4.1.2. Biogas Generator System Modeling
4.1.3. Pumped Hydro Energy Storage System Modeling
- a.
- Generating Mode (): It suggests that the demand exceeds the PV system’s electricity generation. In this situation, the energy needed must be available from the storage system. How much power the PHES can generate depends on the volume of water in the upper reservoir and the turbines’ output power. The upper reservoir’s ability to hold enough water will allow it to meet the loads’ energy needs. In any other case, the storage system will attempt to function. In generation mode, the equation of the PHES system is represented as [47,48,49,50]:
- b.
- Pumping Mode: The proposed system then has excess power. The PHES process will pump until the upper reservoir is filled if the upper water tank is not yet full. The level of water in the reservoir, the amount of excess energy, and the maximum power of the PHES in pumping mode all affect how much water is pumped.
4.1.4. SMES Energy Storage System Modeling
- a.
- Charging mode: When the hybrid system power exceeds the load demand (i.e., ), this mode of operation happens.
- b.
- Discharging mode: When the load demand is higher than the hybrid system power (i.e., ), this mode of operation happens.
4.1.5. Inverter Energy Conversion System Modeling
4.2. Proposed System Operational Procedure and Power Management Strategy
- Mode I ( > ): In this mode, the available solar PV output exceeds the load demand, and energy storage systems (i.e., SMES and PHES) can absorb the extra power. The PV runs at MPP, while the SMES keeps the common DC bus voltage at its nominal value;
- Mode II ( < and ): The load demand cannot be satisfied in this mode by solar PV power. Therefore, energy storage system (i.e., SMES and PHES) discharges to meet the extra load. SMES energy storage system provides for transition periods;
- Mode III ( > ): If the amount of solar PV power available is more than the amount of power needed and the energy storage systems (SMES and PHES) are full, the extra power is sent to the national grid through feed-in-tariff agreements;
- Mode IV ( = 0): Solar PV power is not available on cloudy days or at night. In this mode, the PV is not connected, and the connected load demand is met by the energy storage systems (i.e., SMES and PHES). Whenever < and energy storage s ystem (i.e., SMES and PHES) is not able to meet the connected loads, then the biogas generator is on and provides power to unmeet connected loads;
- Mode V (): If the hybrid system is not capable to supply the connected load, then the deficit power is taken from the interconnected national grid through purchasing agreement.
5. Evaluation Parameter Modeling
5.1. Economic Modelling
5.2. Reliability Indicators
5.3. Environmental Indicators
6. Formulation of Optimization Problem
6.1. Objective Functions
6.2. Constraints
6.3. Optimization Techniques
7. Result and Discussion
7.1. Optimization Applications on Optimal Sizing of HRES Components
7.2. Result Evaluation of Economical, Reliability, and Carbon Emission Parameters
7.3. Analysis and Applications of HRES Optimal Solutions
8. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviation and Symbols
Exchange Power | |
Charging Efficiency | |
Discharging Efficiency | |
Consumed Power for Pumping | |
Consumed Energy for Pumping | |
Inverter Output Power | |
Number of PV Panels | |
Inverter Efficiency | |
Derating Factor of PV panel | |
Maximum Reservoir Capacity | |
Discharging Water Flow Rate | |
Charging Water Flow Rate | |
Pump Efficiency | |
Exchange Rating Power | |
Solar Panel Rated Power | |
Exchange Energy | |
Minimum Exchange Energy | |
Maximum Exchange Energy | |
Annualized Cost of PV Panel | |
Annualized Cost of Biogas | |
Annualized Cost of Inverter | |
Annualized Cost of SMES | |
Power Difference between Source and Demand | |
Volume of Water at time t | |
Turbine Efficiency | |
Water Pipe Efficiency | |
Generated Energy by Turbine | |
Energy Balance | |
Power Balance | |
Solar PV Output Power | |
Connected Load | |
Biogas Generator Output Power | |
Volume of Produced Biogas | |
Biogas Calorific Value | |
Biogas Generator Efficiency | |
Working Hours of Biogas | |
Interval Time | |
Solar Irradiation | |
Ambient Temperatures | |
Panel Temperatures | |
Temperature Coefficient | |
PHES | Pumped Hydro Energy Storage |
Annualized Cost of PHES | |
Annual Cost of Grid Energy Purchases | |
Annual Cost of Grid Energy Sales | |
SMES | Superconducting Magnetic Energy Storage |
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Solar panel [80] | |
Max power | 380 Wp |
Length width | 1.976 × 0.991 m |
Efficiency | 19.41% |
Temperature coefficient | 0.41% |
Initial cost | 145.845 EUR/kW |
O M cost | 1% of initial cost |
Life span | 25 years |
SMES [81] | |
Energy, ESMES | 1 MJ |
Inductance, LSMES | 0.5 H |
Current, ISMES | 1 KA |
Initial cost | 5000 EUR/kW |
Voltage, Vdc-link | 2 KV |
Capacitance, Cdc-link | 0.01 F |
PHES [82,83] | |
Overall efficiency | 77% |
Cost of power conversion | 165–740 EUR/kW |
Fixe OM cost | 8.5 EUR/kW |
Variable OM | 0.8 EUR/MWh |
Life Span | 30 years |
Biogas generator [84] | |
Initial cost | 1342.5 EUR/kW |
Fixed OM cost | 71.65 EUR/kW |
Variable OM | 20.7 EUR/MWh |
Inverter [85,86] | |
Model | UnderstandSolar |
Initial cost | 172 EUR/kW |
OM cost | 1% of initial cost |
Efficiency | 95% |
Techniques | Type of Renewable Energy Resources | ||||
---|---|---|---|---|---|
No of PV Panel | PHES Capacity (KW) | Reservoir Capacity (m3) | Capacity of Biogas (KW) | SMES Capacity (KWh) | |
NSWOA | 5495.44 | 400.67 | 26,798.14 | 860.29 | 142.28 |
MOGWO | 5228.58 | 378.97 | 25,296.88 | 936.94 | 142.28 |
MOPSO | 5464.31 | 362.86 | 24,995.71 | 941.63 | 142.28 |
Optimization Techniques | NSWOA | MOGWO | MOPSO | |
---|---|---|---|---|
Evaluation Parameters | ||||
NPC (EUR) | 6.997 × 106 | 7.008 × 106 | 7.011 × 106 | |
Financial | COE (EUR/kWh) | 0.053102 | 0.053625 | 0.053743 |
LCOE (EUR/kWh) | 0.046218 | 0.046897 | 0.046985 | |
EENS | 1.124 × 105 | 1.174 × 105 | 1.186 × 105 | |
LPSP | 0.0085 | 0.0089 | 0.0092 | |
Reliability | IR | 0.9915 | 0.9911 | 0.9908 |
LOLP | 2.925 | 3.204 | 3.902 | |
LOLE | 10.605 | 11.502 | 14.201 | |
) | 1.6122 × 107 | 1.6122 × 107 | 1.6122 × 107 | |
GHG | ) | 8.7536 × 106 | 8.7895 × 106 | 8.7945 × 106 |
) | −7.3679 × 106 | −7.3325 × 106 | −7.3275 × 106 |
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Agajie, T.F.; Fopah-Lele, A.; Amoussou, I.; Ali, A.; Khan, B.; Tanyi, E. Optimal Design and Mathematical Modeling of Hybrid Solar PV–Biogas Generator with Energy Storage Power Generation System in Multi-Objective Function Cases. Sustainability 2023, 15, 8264. https://doi.org/10.3390/su15108264
Agajie TF, Fopah-Lele A, Amoussou I, Ali A, Khan B, Tanyi E. Optimal Design and Mathematical Modeling of Hybrid Solar PV–Biogas Generator with Energy Storage Power Generation System in Multi-Objective Function Cases. Sustainability. 2023; 15(10):8264. https://doi.org/10.3390/su15108264
Chicago/Turabian StyleAgajie, Takele Ferede, Armand Fopah-Lele, Isaac Amoussou, Ahmed Ali, Baseem Khan, and Emmanuel Tanyi. 2023. "Optimal Design and Mathematical Modeling of Hybrid Solar PV–Biogas Generator with Energy Storage Power Generation System in Multi-Objective Function Cases" Sustainability 15, no. 10: 8264. https://doi.org/10.3390/su15108264
APA StyleAgajie, T. F., Fopah-Lele, A., Amoussou, I., Ali, A., Khan, B., & Tanyi, E. (2023). Optimal Design and Mathematical Modeling of Hybrid Solar PV–Biogas Generator with Energy Storage Power Generation System in Multi-Objective Function Cases. Sustainability, 15(10), 8264. https://doi.org/10.3390/su15108264