Optimal Sizing and Techno-Economic Analysis of Grid-Independent Hybrid Energy System for Sustained Rural Electrification in Developing Countries: A Case Study in Bangladesh
Abstract
:1. Introduction
- The power system is played through in all possible configurations, taking into account renewable energy sources and determining the best possible optimal system.
- Five feasible cases are discussed to determine which is the most cost-effective and environmentally friendly.
- The hybrid optimization of multiple energy resources (HOMER) software tool and the NSGA (Non-dominated Sorting Genetic Algorithm)-optimization method are used to conduct a comparative study of the proposed PV/Wind/Battery/DG based system.
- The proposed optimal system is compared with the current energy situation in selected area. For the optimal system, sensitivity analysis and payback are also considered. In sensitivity analysis, the effectiveness of wind speed and diesel price variation is discussed.
2. Literature Review
3. Proposed Power System Description
3.1. HOMER
- Pre-HOMER analysis: The pre-HOMER evaluation ensures the infrastructure’s long-term capability by performing an early examination of the design configuration and framework. Without meticulous documentation of the specified family, community, and energy requirements, it is difficult to design and implement a successful hybrid system to handle the necessary load requirements. As a result, the first stage is to assess the socioeconomic factors, energy resources, and load needs of the specified off-grid region. This procedure will aid in determining the precise load demand for that location and the available energy sources that may be used to satisfy that demand. The cost of a hardware system, such as the initial price, installation and maintenance costs, and replacement costs, is evaluated in the pre-HOMER section.
- Optimization Using HOMER: The techno-economic analysis is carried out in this part using load demand and weather data. This analysis is based on the renewable energy sources accessible in the area, the components necessary for hybrid energy systems, and a complete analysis of the HOMER simulation. Other tools may be used for the optimum and sizing analysis of the hybrid configuration of systems for renewable energy. Still, HOMER has grown in popularity due to its capacity to construct grid systems with trustworthy renewable energy systems.
- Post-HOMER analysis: The sensitivity study of the intended off-grid region is necessary for this part to corroborate the substance’s findings. A sensitivity analysis was conducted on the PV, battery, fuel, and other variables. These characteristics can give you a decent idea of how energy systems for the off-grid community are determined. The outcome of the simulation is replicated and adjusted using the necessary sensitivity variables for sensitivity analysis. This section also considers the impact on the environment. Investors will be able to determine how long they will be able to benefit from the initiatives.
3.2. Load Assumption
3.3. Hardware Components for Power Generation and Storage
3.3.1. PV Modeling
3.3.2. Wind Turbine Modeling
3.3.3. Modeling of DG
3.3.4. Battery Modeling
3.3.5. Bi-Directional Converter
Components | Description | Capital Cost | Replacement Cost | Operation & Maintenance Cost | Lifetime |
---|---|---|---|---|---|
PV | 1 kW | 1100 USD/kW | 750 USD/kW | 50 USD/kW/y | 25 y |
DG | 40/80 kW | 370 USD/kW | 290 USD/kW | 0.05 USD/h | 15,000 h |
Wind turbine | 10 kW | 3200 USD/kW | 2000 USD/kW | 20 USD/kW/y | 20 y |
Li-ion Battery | 1 kWh | 550 USD | 550 USD | 10 USD | 15 y |
Bi-directional converter | 1 kW | 300 USD | 300 USD | 0 | 15 y |
4. Problem Formulation
4.1. Objective Function
4.1.1. NPC
4.1.2. COE
4.1.3. Life Cycle Emission
4.2. Constraints
4.2.1. Bounds Constraint
4.2.2. Battery Storage Constraint
4.2.3. Maximum Output Power of Battery
4.2.4. Power Balance Limit
4.3. Non-Dominated Sorting Genetic Algorithm (NSGA)-II
- Create the population using the problem range and constraints as a starting point.
- Sorting based on the population’s non-dominance requirements.
- The crowding distance value is assigned front-wise when the sorting is completed. Each population is chosen depending on their rank and the distance between them and the center of the population.
- Individuals are chosen utilizing a boolean tournament methodology with a crowded-comparison operator.
- Using simulated binary crossover and polynomial mutation, a real-coded GA was developed.
- Individuals from the future generation are chosen from the offspring population and the modern generation population. Each front fills a new generation until the overall population exceeds the present population number.
5. Results and Analysis
5.1. Description of Individual Combination Types of Equipment
5.1.1. Case 1: Only DG-Based
5.1.2. Case 2: PV/Wind/Battery
5.1.3. Case 3: PV/Battery/DG
5.1.4. Case 4: Wind/Battery/DG
5.1.5. Case 5: PV/Wind/Battery/DG
5.2. Emission Analysis
5.3. Sensitivity Analysis
5.3.1. The Effects of a Rising Diesel Price
5.3.2. The Effects of Wind Speed
5.3.3. The Effects of Solar Radiation
5.4. Comparison between HOMER and NSGA-II Optimization Technique
5.5. Proposed Optimized System vs. Present Energy System
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Type of Load | Description | No. in USA | Power (W) | Summer | Winter | ||
---|---|---|---|---|---|---|---|
Hours/Day | Watt-Hours/Day | Hours/Day | Watt-Hours/Day | ||||
House | CFL | 2 | 15 | 6 | 180 | 8 | 240 |
Fan | 1 | 80 | 14 | 1120 | 0 | 0 | |
TV | 1 | 120 | 8 | 960 | 7 | 840 | |
Fridge | 1 | 250 | 24 | 6000 | 24 | 6000 | |
Total (For one house) | 465 | 8260 | 7080 | ||||
Total (Houses) | 100 | 46,500 | 826,000 | 708,000 | |||
Shop | CFL | 2 | 15 | 5 | 150 | 7 | 210 |
Fan | 1 | 80 | 7 | 560 | 0 | 0 | |
Total (For one shop) | 95 | 710 | 210 | ||||
Total (Shops) | 20 | 1900 | 14,200 | 4200 | |||
Restaurant | CFL | 18 | 15 | 8 | 2160 | 9 | 2430 |
Fan | 9 | 80 | 10 | 7200 | 0 | 0 | |
TV | 1 | 120 | 8 | 960 | 7 | 840 | |
Fridge | 1 | 250 | 24 | 6000 | 24 | 6000 | |
Total (For one restaurant) | 465 | 16,320 | 9270 | ||||
Total (Restaurants) | 8 | 3720 | 130,560 | 74,160 | |||
Hotel | CFL | 60 | 15 | 7 | 6300 | 8 | 7200 |
Fan | 30 | 80 | 10 | 24,000 | 0 | 0 | |
TV | 22 | 120 | 5 | 13,200 | 6 | 15,840 | |
Fridge | 2 | 250 | 24 | 12,000 | 24 | 12,000 | |
Water Pump | 1 | 1500 | 2 | 3000 | 2 | 3000 | |
Total (For one hotel) | 1965 | 58,500 | 38,400 | ||||
Total (Hotels) | 3 | 5895 | 175,500 | 114,120 | |||
Total Load | 58,015 | 1,146,260 | 900,480 |
Parameters | Case 1 | Case 2 | Case 3 | Case 4 | Case 5 |
---|---|---|---|---|---|
NPC (USD) | 1,269,732 | 1,374,082 | 1,097,312 | 730,435 | 711,943 |
Initial Capital (USD) | 29,600 | 938,618 | 188,983 | 232,321 | 277,317 |
Operating Cost (USD/y) | 95,930 | 33,685 | 70,263 | 38,531 | 33,620 |
COE (USD) | 0.358 | 0.387 | 0.309 | 0.206 | 0.200 |
Simple Payback (y) | 0 | 12 | 6 | 3.3 | 3.7 |
PV Capacity (kW) | - | 175 | 102 | - | 35.8 |
WT Capacity (kW) | - | 8 | - | 5 | 5 |
No. of battery | - | 855 | 51 | 58 | 67 |
Inverter capacity (kW) | - | 65.4 | 62.3 | 36.1 | 38.5 |
DG capacity (kW) | 80 | - | 80 | 80 | 80 |
Fuel costs (USD) | 82,664 | - | 54,323 | 29,406 | 23,461 |
Fuel consumption (L/year) | 82,664 | - | 54,323 | 29,406 | 23,461 |
Diesel engine operating hour | 8760 | - | 5325 | 2913 | 2189 |
Electrical | Elements | kWh/y | % |
---|---|---|---|
Production | DG (80kW) | 276,999 | 100 |
Total | 276,999 | ||
Consumption | AC load | 274,752 | 100 |
Total | 274,752 | ||
Excess Electricity | 2247 | 0.811 | |
Quantity | Unmet Electric load | 0 | 0 |
Capacity Shortage | 0 | 0 |
Electrical | Elements | kWh/y | % |
---|---|---|---|
Production | PV | 266,910 | 39.2 |
Wind Trubine | 413,733 | 60.8 | |
Total | 680,643 | 100 | |
Consumption | AC load | 274,588 | 100 |
Total | 274,588 | ||
Excess Electricity | 393,722 | 57.8 | |
Quantity | Unmet Electric load | 164 | 0.0597 |
Capacity Shortage | 272 | 0.0990 |
Electrical | Elements | kWh/y | % |
---|---|---|---|
Production | PV | 155,986 | 45.8 |
DG | 184,408 | 54.2 | |
Total | 340,394 | 100 | |
Consumption | AC load | 274,752 | 100 |
Total | 274,752 | ||
Excess Electricity | 57,741 | 17 | |
Quantity | Unmet Electric load | 0 | 0 |
Capacity Shortage | 0 | 0 |
Electrical | Elements | kWh/y | % |
---|---|---|---|
Production | Wind Trubine | 258,583 | 72.2 |
DG | 99,730 | 27.8 | |
Total | 358,313 | 100 | |
Consumption | AC load | 274,752 | 100 |
Total | 274,752 | ||
Excess Electricity | 79,230 | 22.1 | |
Quantity | Unmet Electric load | 0 | 0 |
Capacity Shortage | 0 | 0 |
Electrical | Elements | kWh/y | % |
---|---|---|---|
PV | 54,456 | 13.843 | |
Production | Wind Turbine | 258,583 | 65.733 |
DG | 80,345 | 20.424 | |
Total | 393,385 | 100 | |
Consumption | AC load | 274,752 | 100 |
Total | 274,752 | ||
Excess Electricity | 113,169 | 28.8 | |
Quantity | Unmet Electric load | 0 | 0 |
Capacity Shortage | 0 | 0 |
Emitting Gas (kg/y) | DG | PV/Battery/DG | Wind/Battery/DG | PV/Wind/Battery/DG |
---|---|---|---|---|
CO | 218,666 | 143,732 | 77,803 | 62,075 |
SO | 542 | 356 | 193 | 154 |
Parameters | HOMER | NSGA-II |
---|---|---|
NPC (USD) | 711,943 | 692,775 |
PV (kW) | 35.8 | 54 |
DG (kW) | 80 | 50 |
Battery (kWh) | 67 | 86 |
Wind Turbine (kW) | 5 × 10 | 6 × 10 |
Total renewable generation (kWh/year) | 313,039 | 392,441 |
Total diesel generation (kWh/year) | 80,345 | 55,691 |
Excess energy (kWh/year) | 113,169 | 189,921 |
Renewable fraction (%) | 70.80 | 88.00 |
Total energy (kWh/year) | 393,385 | 448,132 |
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Islam, M.R.; Akter, H.; Howlader, H.O.R.; Senjyu, T. Optimal Sizing and Techno-Economic Analysis of Grid-Independent Hybrid Energy System for Sustained Rural Electrification in Developing Countries: A Case Study in Bangladesh. Energies 2022, 15, 6381. https://doi.org/10.3390/en15176381
Islam MR, Akter H, Howlader HOR, Senjyu T. Optimal Sizing and Techno-Economic Analysis of Grid-Independent Hybrid Energy System for Sustained Rural Electrification in Developing Countries: A Case Study in Bangladesh. Energies. 2022; 15(17):6381. https://doi.org/10.3390/en15176381
Chicago/Turabian StyleIslam, Md. Rashedul, Homeyra Akter, Harun Or Rashid Howlader, and Tomonobu Senjyu. 2022. "Optimal Sizing and Techno-Economic Analysis of Grid-Independent Hybrid Energy System for Sustained Rural Electrification in Developing Countries: A Case Study in Bangladesh" Energies 15, no. 17: 6381. https://doi.org/10.3390/en15176381
APA StyleIslam, M. R., Akter, H., Howlader, H. O. R., & Senjyu, T. (2022). Optimal Sizing and Techno-Economic Analysis of Grid-Independent Hybrid Energy System for Sustained Rural Electrification in Developing Countries: A Case Study in Bangladesh. Energies, 15(17), 6381. https://doi.org/10.3390/en15176381