Optimal Design of an Isolated Hybrid Microgrid for Enhanced Deployment of Renewable Energy Sources in Saudi Arabia
Abstract
:1. Introduction
- Optimal design of the microgrid system feeding a load in the Yanbu region in Saudi Arabia
- Proposing and analyzing two configurations of microgrid systems considering their technical and operational features
- Presenting the optimal design operation of the hybrid renewable microgrid system by selecting suitable renewable sources to meet the required objectives and constraints
- Investigation and implementation of a recent GPC optimization algorithm and compared it with other algorithms
2. Mathematical Modeling
- The PV and wind turbine supply energy as a pillar of the system.
- The battery operates when there is a shortage of power from renewable sources.
- The diesel generator works and supplies power when the battery is at its min SOC.
2.1. PV Modeling
2.2. Wind Generator Modeling
2.3. Biomass System Modeling
2.4. Diesel Generator System Modeling
2.5. Battery Energy Storage System Modeling
3. Mathematical Formulation of the Objective Function
3.1. Net Present Cost
3.1.1. Costs of PV and Wind
3.1.2. Costs of Diesel Generation
3.1.3. Costs of Battery System
3.1.4. Costs of Biomass System
3.1.5. Costs of Inverter
3.2. Levelized Cost of Energy
3.3. Loss of Power Supply Probability
3.4. Availability Index
4. Optimization Algorithm
Algorithm 1: Giza Pyramids construction [33] |
Step 1: |
Initialize a set of random stone block or workers within the limits . Initialize the GPC parameters. |
Evaluate the objective function of all populations. |
Step 2: for iter = 1 to Max_iter, do |
Step 3: for i = 1 to N do Calculate the amount of stone block displacement. |
Calculate the amount of worker movement. Estimate new positions of stone blocks and workers. Investigate the possibility of substituting workers. Determine new position and new fitness. |
if new_fitness < Pharaoh’s agent cost then set new_fitness as Pharaoh’s agent cost. end if end Sort solution for next iteration. end |
5. Yanbu Case Study of the Hybrid Microgrid System
6. Results and Discussions
- (A)
- PV/biomass hybrid microgrid system
- (B)
- PV/wind/diesel/battery microgrid system
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Symbols | |||
A | Availability index | Efficiency of the battery (%) | |
Coefficient of consumption curve (a = 0.246 L/kW) | Efficiency of the biomass system (%) | ||
AD | Daily autonomy of battery (day) | Efficiency of the inverter (%) | |
Area covered by the PV panels () | Efficiency of the PV system (%) | ||
Cross-sectional area of the tidal () | Reference efficiency of PV panels (%) | ||
Swept area by the wind turbine () | |||
Capital Cost ($) | Output power of the wind turbine (kW) | ||
Capacity of the Battery (kWh) | Replacement Cost ($) | ||
Maximum power coefficient (%) | Temperature (°C) | ||
Calorific value of the organic material (MJ/kg) | Ambient temperature (°C) | ||
DOD | Depth of Discharge (%) | Total available of biomass (ton/yr) | |
Load demand (kWh) | Reference temperature of solar cell (°C) | ||
Fuel consumption of diesel (L/h) | Wind speed (m/s) | ||
Fuel Cost for one year ($/Year) | Cut-in wind speed (m/s) | ||
Solar irradiation (kW/m2) | Cut-out wind speed (m/s) | ||
Interest rate (%) | Rated wind speed (m/s) | ||
N | project lifetime (year) | Coefficient of consumption curve (b = 0.08415 L/kW) | |
Nominal operating cell temperature (°C) | Efficiency MPPT system (%) | ||
Net Present Cost ($) | Temperature coefficient (0.004 to 0.006 °C) | ||
Maintenance and operation ($) | Air density (Kg/m3) | ||
Rated power of the diesel generator (kW) | Initial cost of the battery system ($/kWh) | ||
Fuel price ($/L) | Biomass initial cost ($/kW) | ||
Generated power of the biogas plant (kW) | Diesel generator initial cost ($/kW) | ||
Biomass power (kW) | Initial cost of PV and WT ($/m2) | ||
Output power of the PV (kW) | Inflation rate (%) | ||
Rated power (kW) | Escalation rate (%) | ||
Power from renewable energy systems | Biomass annual fixed O&M cost ($/kW/year) | ||
Annual working of biomass (kWh/Year) | Biomass variable O&M cost ($/kW h) | ||
Abbreviations | |||
AEFA | Artificial Electric Field Algorithm | HMGs | Hybrid Microgrid system |
ACS | Annualized cost of the system | HSA | Harmony Search Algorithm |
BESS | Battery Energy Storage System | IWO | Invasive Weed optimization Algorithm |
BO | Bonobo Optimizer Algorithm | LCOE | Levelized Cost of Energy |
BOQO | Quasi Oppositional BO Algorithm | LPSP | Loss of Power Supply Probability |
COE | Cost of Energy | MOPSO | Multiple Objective Particle Swarm Optimization |
Capital Recovery Factor | NPC | Net present cost | |
GWO | Grey Wolf Optimizer | PSO | Particle Swarm Optimization |
HOMER | Hybrid Optimization of Multiple Energy Resources | PV | Photovoltaic |
HRES | Hybrid Renewable Energy Systems | RF | Renewable Fraction |
HHO | Harris Hawks Optimization | WT | Wind Turbine |
Appendix A
Appendix A.1. Algorithm of Artificial Electric Field
Algorithm A1: AEFA [35] |
Initialize a random population of N size, within the limits . Initialize velocity with a random value. |
Evaluate the fitness of all populations. |
Set iteration count to zero. Reproduction and Updating. |
While the criteria are not satisfied do |
Calculate K (t), best (t) and worst (t) |
for i = 1: N do Evaluate fitness values. Calculate the total force of each direction. Calculate acceleration. (t + 1) = rand () × (t) +(t) (t + 1) = (t) + (t + 1) |
end for |
end while |
Appendix A.2. Algorithm of Grey Wolf Optimizer
Algorithm A2: GWO [36] |
Initialize a set of grey wolf population within the limits . Initialize the parameters Calculate the fitness of all population. |
While (iter < ) |
for i = 1: N do |
Update the position of the current search agent end for Update a, A and C Calculate the fitness of the whole population Update , and iter = iter + 1 end while return |
Appendix A.3. Algorithm Parameters
Algorithms | Parameters |
GPC | Gravity = 9.8; Angle of Ramp = 30; Minimum Friction = 1; Maximum Friction = 10; Substitution Probability = 0.5. |
AEFA | = 500; ⍺ = 30; Population size = 10; Maximum iteration = 100 |
GWO | a = Linear reduction from 2 to 0; Search agents = 10; Maximum iteration = 100 |
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Reference | Year | Microgrid System | Location | Algorithm/Tool | Objective Function | Strength | Weakness |
---|---|---|---|---|---|---|---|
Fathy et al. [8] | 2020 | PV/wind/battery/diesel | Sakaka, Aljouf, Saudi Arabia | -SSO-WOA-ALO -MVO-GWO | COE | Detailed study. | The constraint factors are limited |
Rezk et al. [9] | 2020 | PV/FC/battery | NEOM, Saudi Arabia | HOMER | -NPC -COE | Present the effect of tilt angle and derating factor variation on COE | The study should be enhanced by a comparison of HOMER with other algorithms |
Ramli et al. [10] | 2016 | wind/PV | Yanbu, Saudi Arabia | HOMER | -NPC-COE-unmet demand of the electric load-excess electricity | Consider the unmet electric load demand and the excess electricity | The study does not take the reliability factor as an objective or constraint |
Alharthi el al. [11] | 2018 | PV/wind/grid-connected | -Yanbu, Saudi Arabia -Hafar Albatin, Saudi Arabia -Sharurah, Saudi Arabia -Riyadh, Saudi Arabia | HOMER | -NPC -COE | Provide a general overview of microgrid systems in Saudi Arabia. | In the study, no technical factors are declared |
Kharrich et al. [12] | 2021 | PV/wind/diesel/battery | Dakhla, Morocco | -HHO-AEFA-GWO -STOA-EO | NPC | Apply a new meta-heuristic algorithm | The study does not consider uncertainty |
Barbaro et al. [13] | 2019 | PV/wind/geothermal/diesel | Faial Island, Portugal | Unit Commitment (UC) algorithm | NPV | Develop a new simulation model | The power management is not shown |
Yoshida, and Farzaneh [15] | 2020 | PV/wind/battery/diesel | Kasuga, Japan | PSO | Total cost of system | Use the least-cost perspective approach | The convergence curve of the minimization of the objective function is not presented |
Elkadeem et al. [16] | 2019 | -PV/WT/DG1/DG2/battery -PV/WT/DG1/battery -PV/DG1/DG2/battery -WT/DG1/DG2/battery -DG1/DG2 | Dongola, Sudan | HOMER Pro | NPC | Provide a comprehensive feasibility analysis to feed the electricity of agricultural and irrigation areas. | A meta-heuristic algorithm Is not applied and compared to HOMER Pro |
Odou et al. [17] | 2019 | PV/diesel/battery | Alibori, Benin | HOMER software | NPC | Analyze the techno-economic feasibility of hybrid system with case study in rural electrification | The results are obtained by HOMER only and not compared with any other algorithm |
Khan and Javaid [23] | 2020 | PV/wind/battery | Rafsanjan, Iran | -Jaya-TLBO-JLBO -GA | TAC | Propose a hybrid JLBO | The renewable fraction is not considered as an objective function or constraints |
Makhdoomi and Askarzadeh [24] | 2020 | PV/diesel/PHS | Adrar, Algeria | -GA-PSO-CSA -CSAAC-AP | Fuel consumption | Propose modified version of the crow search optimization algorithm | The operation time of the study is only 24 h |
Kharrich et al. [25] | 2020 | -PV/wind/diesel/battery -PV/biomass -PV/diesel/battery -wind/diesel/battery | Aswan, Egypt | -QOBO-BO -HHO-AEFA-IWO | NPC | Propose an algorithm: Quasi-Oppositional BO (QOBO) | The uncertainty of the renewable sources is not considered |
Abo-Elyousr and Nozh [26] | 2018 | PV/wind/biomass/NGFC/NGT | Kharga, Egypt Saint Katherine, Egypt Qussair, Egypt | -BOACA-GA -PSO-HOMER | -COE -GHG | Develop the BOACA algorithm to find optimal HMG | LPSP results are not presented |
Heydari and Askarzadeh [27] | 2016 | PV/biomass | Kerman, Iran | HSA | NPC | Show the limits of HOMER compared to meta-heuristic algorithm | It does not provide a comparison of the HS algorithm |
Guangqian et al. [28] | 2018 | -PV/diesel/battery -Wind/diesel/battery -Wind/PV/diesel/battery | Khorasan, Iran | -HSA-SAA -HHSSAA | LCC | Propose hybrid meta-heuristic algorithm to size a grid-independent system | The reliability is not considered |
Sawle et al. [29] | 2018 | -PV/biomass/diesel/battery -PV/diesel/battery -Wind/biomass/diesel/battery -Wind/diesel/battery -PV/wind/diesel/battery -PV/wind/biomass/diesel/battery | Barwani, India | -GA-PSO-BFPSO -TLBO | Sum of several objectives | Consider the social aspect | Uncertainty is not considered |
Ramli et al. [30] | 2018 | PV/wind/diesel/battery | MOSaDE | -COE-LPSP | Clear study | There is not comparison with a multi-objective algorithm |
Symbol | Indix | Quantity |
---|---|---|
N | Microgrid project lifetime | 20 years |
Interest rate index | 0.882% | |
Escalation rate index | 5% | |
Inflation rate index | 2% | |
PV system | ||
initial cost of PV | $400/m2 | |
Annual cost of PV O&M | /m2/year | |
Reference efficiency of PV | 25% | |
MPPT Efficiency | 100% | |
reference temperature of cell PV | 25 °C | |
Temperature coefficient | 0.005 °C | |
NOCT | Nominal operating temperature cell | 47 °C |
PV system lifetime | 20 years | |
WT system | ||
Wind initial cost | $125/m2 | |
Annual O&M cost of wind | /m2/year | |
Maximum power coefficient | 48% | |
Cut-in wind speed | 2.6 m/s | |
Cut-out wind speed | 25 m/s | |
Rated wind speed | 9.5 m/s | |
Wind system lifetime | 20 years | |
Diesel generator | ||
Diesel initial cost | $250/kW | |
Annual O&M cost of diesel | $0.05/h | |
Replacement cost | $210/kW | |
Fuel price in Egypt | $0.43/L | |
Diesel system lifetime | 7 years | |
BESS | ||
Initial cost of battery | $100/kWh | |
Annual O&M cost of the battery | /m2/year | |
Depth of discharge | 80% | |
Battery efficiency | 97% | |
Minimum state of charge | 20% | |
Maximum state of charge | 80% | |
Battery system lifetime | 5 years | |
Inverter | ||
Inverter initial cost | $400/kW | |
Annual O&M cost of inverter | $20/year | |
Inverter efficiency | 97% |
Microgrid System | Algorithm | NPC ($) | LCOE ($/kWh) | LPSP (%) | A (%) | AD (Day) |
---|---|---|---|---|---|---|
PV/biomass | GPC | 319,219 | 0.208 | 0.049 | 96.409 | -- |
AEFA | 323,724 | 0.211 | 0.046 | 96.450 | -- | |
GWO | 325,612 | 0.213 | 0.048 | 96.527 | -- | |
PV/diesel/BESS | GPC | 497,124 | 0.325 | 0.045 | 99.825 | 0.9 |
AEFA | 503,112 | 0.328 | 0.041 | 99.736 | 2.2 | |
GWO | 505,078 | 0.329 | 0.039 | 99.858 | 0.7 | |
PV/WT/diesel/BESS | GPC | 522,290 | 0.341 | 0.05 | 95 | 0 |
AEFA | 574,806 | 0.375 | 0.045 | 98.826 | 2 | |
GWO | 592,074 | 0.386 | 0.046 | 98.705 | 2.09 |
Microgrid System | Algorithm | PV (m2) | Wind (m2) | Diesel (kW) | Battery (kWh) | Biomass (Ton/Year) | Time(s) |
---|---|---|---|---|---|---|---|
PV/biomass | GPC | 265.870 | -- | -- | -- | 1000 | 46,291 |
AEFA | 295.263 | -- | -- | -- | 995.954 | 82,420 | |
GWO | 305.290 | -- | -- | -- | 981.023 | 161,439 | |
PV/diesel/BESS | GPC | 372.168 | -- | 25.199 | 11.195 | -- | 229,861 |
AEFA | 360.071 | -- | 25.969 | 28.247 | -- | 50,794 | |
GWO | 390.121 | -- | 25.279 | 8.866 | -- | 87,471 | |
PV/WT/diesel/BESS | GPC | 535 | 2000 | 0 | 0 | -- | 53,392 |
AEFA | 191 | 1837 | 34 | 26 | -- | 338,099 | |
GWO | 284 | 1741 | 31 | 26 | -- | 592,074 |
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Kharrich, M.; Kamel, S.; Alghamdi, A.S.; Eid, A.; Mosaad, M.I.; Akherraz, M.; Abdel-Akher, M. Optimal Design of an Isolated Hybrid Microgrid for Enhanced Deployment of Renewable Energy Sources in Saudi Arabia. Sustainability 2021, 13, 4708. https://doi.org/10.3390/su13094708
Kharrich M, Kamel S, Alghamdi AS, Eid A, Mosaad MI, Akherraz M, Abdel-Akher M. Optimal Design of an Isolated Hybrid Microgrid for Enhanced Deployment of Renewable Energy Sources in Saudi Arabia. Sustainability. 2021; 13(9):4708. https://doi.org/10.3390/su13094708
Chicago/Turabian StyleKharrich, Mohammed, Salah Kamel, Ali S. Alghamdi, Ahmad Eid, Mohamed I. Mosaad, Mohammed Akherraz, and Mamdouh Abdel-Akher. 2021. "Optimal Design of an Isolated Hybrid Microgrid for Enhanced Deployment of Renewable Energy Sources in Saudi Arabia" Sustainability 13, no. 9: 4708. https://doi.org/10.3390/su13094708
APA StyleKharrich, M., Kamel, S., Alghamdi, A. S., Eid, A., Mosaad, M. I., Akherraz, M., & Abdel-Akher, M. (2021). Optimal Design of an Isolated Hybrid Microgrid for Enhanced Deployment of Renewable Energy Sources in Saudi Arabia. Sustainability, 13(9), 4708. https://doi.org/10.3390/su13094708