Optimal Planning of Remote Area Electricity Supply Systems: Comprehensive Review, Recent Developments and Future Scopes
Abstract
:1. Introduction
1.1. Background and Motivation
1.2. Critical Literature Review
- The existing studies did not provide a thorough review of optimal planning of RAES systems. This includes the optimization process, input data, methods, objective functions, study based on the country, and design constraints.
- The technical challenges of the existing studies were not found by the review papers.
- The advantages and disadvantages of applied methodologies and data uncertainties for RAES optimal planning were not described by the review studies.
- The potential future directions were not introduced for researchers. Since the optimal planning problem of RAES systems is extremely critical, future perspectives should be identified to develop more significant studies.
1.3. Contribution
- Overviewing the optimization problem of RAES systems’ planning.
- Conducting a review on the state of the art in optimal planning of RAES systems.
- Classifying the existing studies on optimal planning of RAES systems.
- Identifying the current technical challenges on optimal planning of RAES systems.
- Outlooking the future research trends in optimal planning of RAES systems.
1.4. Article Organization
2. Overview on Optimal Planning of RAES Systems
2.1. System Components
2.2. Input Data
2.3. Objective Functions
2.3.1. Financial Objective Functions
2.3.2. Reliability Objective Functions
2.3.3. Emission and Technical Objective Functions
2.4. Feasibility Constraints
2.5. Operation Strategies
2.6. Solving the RAES Optimal Planning
2.6.1. Metaheuristic Methods
2.6.2. Other Optimization Methods
2.6.3. HOMER Software
3. Review on Existing Studies and Technical Challenges
3.1. Hybrid RAES Systems with/without ESS
3.1.1. HOMER Software for Hybrid RAES Systems
3.1.2. Metaheuristic Methods for Hybrid RAES Systems
3.1.3. Non-Metaheuristic Optimization Algorithms for Hybrid RAES Systems
3.2. Clean (Renewable-Storage) RAES Systems
3.2.1. HOMER Software for Renewable-Storage RAES Systems
3.2.2. Metaheuristic Methods for Renewable-Storage RAES Systems
3.2.3. Non-Metaheuristic Optimization Algorithms for Renewable-Storage RAES Systems
3.3. Discussion
3.3.1. Electricity Supply Cost for RAES Systems
3.3.2. Discussions on Methods
3.3.3. Technical Challenges
- High capacity of BES in clean remote area energy supply systems.
- Demand response strategies for optimal planning in RAES systems.
- Robust optimal planning of components for clean RAES systems.
- Neglecting guidelines for customers in RAES systems.
- Neglecting distribution network constraints in the optimal planning model.
4. Recent Developments
4.1. EV Charging Stations and Diesel Generator
4.2. Integrated Energy System with Solar PV and Biogas
4.3. Hybrid Energy Storage and PV
4.4. Optimal Configuration
4.5. Accurate Battery Lifetime Estimation and Technology Selection
4.6. Concentrating Solar Power Plant
4.7. Cooperation of a Diesel Generator and Flywheel with Incentive DR
5. Future Scopes
5.1. Incentive Demand Response
5.2. Distribution Network Constraints
5.3. Considering Voltage and Frequency Control
5.4. New Software Tools for Optimal Planning of RAES Systems
5.5. Guidelines for RAES Customers
5.6. Feed-in-Tariff in RAES
5.7. Robust Optimal Planning
5.8. Resilient Optimal Planning
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Objective Function | Equation | Equation Number |
---|---|---|
NPC | (1) | |
(2) | ||
(3) | ||
LCOE | (4) | |
TAC | (5) | |
SPP | (6) | |
IRR | (7) | |
(8) | ||
Parameters and variables | : Total NPC of the RAES system, : NPC of the RAES components, : NPC of the fuel consumption, : Present values of capital, maintenance, replacement, and salvation costs, : Amount of fuel consumption, : Fuel price, : Total time period of the planning project, : Project lifetime, : Interest rate, : Total energy demand of the RAES system, : Discount rate, : Annual cost of components, : Annual payment of the RAES system for the external system, : is the net cash flow in year y. |
Objective Function | Equation | Equation Number |
---|---|---|
LPSP | (9) | |
EENS | (10) | |
LOLE | (11) | |
LOEE | (12) | |
SAIFI | (13) | |
SAIDI | (14) | |
Parameters and variables | : Total energy generation by renewable energy, : Total energy generation by diesel generators, : Total discharged energy generation by battery, : Total charged energy generation by battery, : Total dumped energy, : Average annual load, : Duration of unmet load, : Probability of meeting state s, : Loss of load duration, : all loss of energy states, : Rate of power interruption, : Duration of power outage, : Number of customers for location i. |
Objective Function | Equation | Equation Number |
---|---|---|
RF | (15) | |
CE | (16) | |
BL | (17) | |
CCL | (18) | |
DE | (19) | |
Parameters and variables | : Approximate emission coefficients, : Generated power by diesel generator, : Battery capacity degradation due to charging/discharging cycles and environmental issues |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[63] | Particle swarm optimization | Diesel generator-PV-WT-BES | Island village | Life cycle cost | Power balance Diesel generator output power, Battery constraint | Thailand | 2011 |
[64] | Grasshopper optimization algorithm | Diesel generator-PV-WT-BES | Off-grid community | LCOE | Renewable energy fraction, number of components | Nigeria | 2019 |
[65] | Harmony search algorithm | Diesel generator-PV | Remote community | NPC | LPSP, number of components | Iran | 2017 |
[66] | Particle swarm optimization | Diesel generator-PV-BES | Rural mini-grids | NPC | Power balance, fuel consumption and tank level, curtailment of PV, energy of BES | Kenya | 2016 |
[67] | Particle swarm optimization | Diesel generator-Biomass-PV-WT-BES | Small remote area community | LCOE | LPSP | India | 2017 |
[68] | Particle swarm optimization | Diesel generator-FT-PV-WT-BES-FW | Remote community | LCOE | Power balance, SOC, number of components, power reserve | Australia | 2020 |
[69] | Biogeography based optimization | Diesel generator-PV-WT-Hydro-BES | Remote home | Total cost | Number of components, power balance, SOC | India | 2013 |
[70] | Several algorithms | Diesel generator-PV-WT-BES | Remote village | LCOE | LPSP, power balance, SOC | Egypt | 2019 |
[71] | Hybrid simulated annealing–tabu search | Diesel generator-Biodiesel-PV-WT-BES-FC | Educational Institute | LCOE | Initial cost, unmet load, capacity shortage, fuel consumption, renewable factor, components’ size | Greece | 2012 |
[72] | Particle swarm optimization | Diesel generator-PV-BES-EV | Residential | Lifetime cost | Size of components, unit commitment constraints | India | 2019 |
[73] | Crow search algorithm | Diesel generator-PV-FC | Remote area community | NPC | LPSP, renewable energy portion | Iran | 2020 |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[74] | Multi-objective genetic algorithm | Diesel generator-PV-WT-BES | Not specified | LCOE, CE | Not specified | Spain | 2011 |
[75] | Multi-objective genetic algorithm | Diesel generator-PV-WT-BES | Residential island | Cycle cost, CE, RF | SOC | China | 2014 |
[76] | Non-dominated sorting genetic algorithm II | Diesel generator-PV-WT-BES | Island | TAC, LPSP and emission | Number of components, height of WTs, tilt angle of PV, SOC | China | 2017 |
[77] | Multi-objective line-up competition algorithm | Diesel generator-PV-WT-BES | Residential | Total TAC, total greenhouse gas | Energy of BES, power of Diesel generator, number of components, energy supply constraint | Not specified | 2017 |
[78] | Multi-objective crow search algorithm | Diesel generator-PV-FC | Not specified | NPC and LPSP | Number of components, tank energy | Iran | 2019 |
[79] | Multi-objective grey wolf algorithm | Diesel generator-PV-WT-Tidal-BES | Flinders island | LCOE, emission | Number of components, operating reserve | Australia | 2018 |
[80] | Fuzzy artificial bee colony optimization mechanism | Diesel generator-PV-WT-BES | An edge region | Annualized cost, emission | Number of components, battery’s energy | USA | 2020 |
[81] | Non-dominated sorting genetic algorithm II | Diesel generator-PV-BES | Island | LCOE, CE, grid voltage deviation | Number of components, battery’s energy | Indonesia | 2018 |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[82] | Deterministic algorithm | Diesel generator-PV-WT-BES | Not specified | NPC | Power balance, SOC, number of components | Senegal | 2011 |
[83] | Iterative approach | Diesel generator-PV-WT-BES | Residential | Energy cost | Energy of battery | Algeria | 2014 |
[84] | Developed method | Diesel generator-PV | Campus | LCOE | Not specified | Burkina Faso | 2015 |
[85] | Decision support technique | Diesel generator-PV-WT-BES | Remote village | NPC | LPSP | India | 2007 |
[86] | MILP with GAMS/CPLEX | Diesel generator-PV-WT-BES | Not specified | LCOE | Minimum Diesel generator power, battery’s energy, power balance | Portugal | 2015 |
[87] | Triangular Aggregation Model and the Levy-Harmony Algorithm | Diesel generator-PV-WT-BES | Island village | COE, TAC, loss of renewable energy, LOLP, emission, LPSP | SOC, Diesel generator output power, LPSP | Australia | 2018 |
[88] | CPLEX optimizer in JAVA | Diesel generator-PV-BES | Ten households in rural area | Capacity of battery | SOC, Diesel generator’s output power | Australia | 2018 |
[89] | Reformed electric system cascade analysis | Diesel generator-PV-WT-BES | Residential community with 100 homes | Defined based on constraints | Final Excess Energy, Renewable Energy Fraction, LPSP, Annual System Cost | USA | 2019 |
[90] | MINLP in GAMS using BARON solver | Diesel generator-PV-BES | A remote 38-bus distribution network | Annualized costs | Power flow, active and reactive power mismatch constraints, system frequency | Not specified | 2019 |
[91] | Dynamic programming algorithm | Diesel generator-PV-BES | Not specified | Total cost per day | Power and energy of BES | USA | 2015 |
[92] | Stochastic MINLP optimization with GAMS | Diesel generator-PV-WT-BES | Not specified | NPC | Power balance, Diesel generator constraints, operating reserve, BES constraints, budget constraint | Not specified | 2018 |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[100] | Firefly-inspired algorithm | PV-WT-BES | Group of twenty households | COE | Energy of battery, number of components, load dissatisfaction rate | Algeria | 2017 |
[101] | Water cycle algorithm | Biogas-PHES-PV-BES | Radio transmitter station | NPC | LPSP, number of components, SOC, upper reservoir volume | India | 2019 |
[102] | Four algorithms | PV-WT-BES PV-WT-FC | Not specified | TAC | Number of components, energy of tank and battery | Iran | 2014 |
[103] | Flower pollination optimization algorithm | PV-WT-FC | Rustic | NPC | Number of components | Egypt | 2020 |
[104] | Genetic algorithm | PV-WT-BES | Remote community (2240 home with 4440 population) | NPC | SOC, EENS | India | 2016 |
[105] | Discrete harmony search | MHP-Biogas-Biomass-PV-WT-BES | Remote rural households (723 homes with 3031 population) | TAC | Unmet load, number of components, energy of BES | India | 2017 |
[106] | Particle swarm optimization | PV-thermal, WT, microturbine, thermal storage, backup natural gas boiler | Not specified | TAC | LPSP, SOC of energy storage systems, thermal power, number of components | Iran | 2019 |
[107] | Hybrid harmony search and simulated annealing algorithm | Bio Diesel-PV-WT-BES | Five typical residential building | Life cycle cost | Number of components, power balance, SOC | Iran | 2018 |
[108] | Particle swarm optimization | PV-WT-Tidal-BES | Remote house | NPC | Number of components, reliability, SOC | France | 2019 |
[109] | Hybrid grey wolf optimizer-sine cosine algorithm | PV-WT-FC | Residential-commercial center | lifespan cost of hybrid system | Load interruption probability, number of components, energy at tank | Iran | 2020 |
[110] | Improved bee algorithm | PV-WT-BES-FC-Reverse Osmosis Desalination | Desalination systems and community load | Total life cycle cost | LPSP, energy at hydrogen tank, SOC, number of components | Iran | 2018 |
[111] | Particle swarm optimization | PV-WT-BES | Single house | NPC | Power balance, number of components | Australia | 2019 |
[112] | Particle swarm optimization | Biogas-PV-BES | Residential | LCOE | Constraint on deficit power of PV | Kenya | 2017 |
[113] | Whale optimization algorithm | PV-WT-FC-Tidal | Remote region | NPC | Load deficit probability Size of components | Iran | 2020 |
[114] | Four algorithms | PV-WT-BES-PHS | Remote island | NPC | Number of components, battery’s energy and SOC | China | 2020 |
[115] | Genetic algorithm | PV-WT-PHS | Coastline communities | Life cycle cost | Not specified | Nigeria | 2020 |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[116] | Multi-objective particle swarm optimization | PV-WT-BES | Residential | LPSP, LOEP, volatility, life cycle cost | Number of components | China | 2017 |
[117] | Multi-objective grey wolf algorithm | PV-WT-BES | Rural telecom tower | COE, LPSP, DE | SOC | India | 2020 |
[118] | Multi-objective grey wolf algorithm | PV-WT-BES-PHS | Isolated farmstead | COE, LPSP | Energy of battery and pump-storage hydro | Algeria | 2019 |
[119] | Multi-objective genetic algorithm | PV-WT-BES-FC | Not specified | NPC, excess energy, life cycle emission | Number of components, energy of tank | Australia | 2015 |
[120] | Imperial competitive algorithm | PV-WT-FC | Not specified | Total cost, emission | Equivalent loss factor, angle of PV array, number of components, energy stored at tank | Iran | 2015 |
[121] | Multi-objective particle swarm optimization | PV-WT-Hydro-PHS | Not specified | LPSP, LCOE, curtailment rate of wind and PV power | Not specified | China | 2020 |
[122] | Multi-objective genetic algorithm | PV-WT-BES | A residential home with four occupants | Life cycle cost, embodied energy, LPSP | SOC | USA | 2014 |
[123] | Multi-objective particle swarm optimization | PV-WT-FC | Not specified | TAC, LOEE, LOLE | Energy at tank, number of components, PV tilt angle | Not specified | 2016 |
[124] | Non-dominated sorting genetic algorithm II | PV-BES-FC | Residential (10 houses) | LPSP, system cost, potential energy waste | Number of components | China | 2019 |
[125] | Mutation adaptive differential evolution | PV-BES | Rural area | Life cycle cost, LOLP, LCOE | SOC | Malaysia | 2020 |
Ref. | Applied Method | System Components | RAES Type | Objective Function | Feasibility Constraints | Country | Year |
---|---|---|---|---|---|---|---|
[126] | ε-constraint method | PV-WT-BES-FC | Not specified | NPC, LPSP, DE | SOC, energy in hydrogen tank, number of components | Not specified | 2018 |
[127] | Hybrid multi-criteria decision-making method | PV | Water pumping | Life cycle cost, LOLP, excess water volume | Not specified | Malaysia | 2018 |
[128] | Sensitivity analysis | PV-WT-BES-PHS | Remote island | Life cycle cost | Not specified | Hong Kong | 2014 |
[129] | Simulink Design Optimization | PV-BES-FC | Not specified | Cost | Not specified | Spain | 2013 |
[130] | Iterative technique | PV-WT-BES | Remote residential household | LPSP and LCOE | SOC, number of components | Algeria | 2011 |
[131] | Power Pinch Analysis | PV-BES | Remote community | Cost | Not specified | Bhutan | 2017 |
[132] | Object-Oriented Programming | PV-WT-BES | Not specified | NPC | LPSP, SOC | Algeria | 2014 |
[133] | Probabilistic simulation | PV-BES | A refrigerator used for medical supply in remote area | Loss of load hour, energy not supplied | Not specified | USA | 1998 |
[134] | Linear programming based on a cascade calculation | PV-WT-Tidal-BES | Island | Equivalent loss Factor | SOC | France | 2016 |
[135] | Enumerative method | PV-BES | House | LCOE | Unmet load percentage, number of days of autonomy | Spain | 2018 |
[136] | Pattern search-based optimization | PV-WT-BES | Not specified | Total system cost | SOC, load constraint for DR, EENS, energy index of reliability | USA | 2014 |
[137] | Iterative method in MATLAB | PV-WT-BES-FC | Pumping system (centrifugal pump) | Deficiency Power Supply, NPC | SOC, tank energy | Tunisia | 2018 |
[138] | Iterative simulation-optimization | PV-WT-BES-FC | Not specified | LCOE | LOLE | Iran | 2016 |
[139] | An iterative method | PV-WT-BES | Ten houses in a remote island | NPC | LPSP, COE | China | 2019 |
[140] | MILP | PV-WT-BES | Remote area mountain lodge | NPC | Energy of BES, power balance | Italy | 2020 |
[141] | Logical approach | PV-WT-BES | Remote community | NPC | Number of components | South Korea | 2016 |
[142] | MILP with CPLEX solver in GAMS | PV-WT-BES | Forestry camp | NPC | BES energy and charge/ discharge, demand response constraint | Iran | 2017 |
[143] | Stochastic optimization | WT-concentrating solar power (CSP) plant-BES | Island | Overall cost | SOC, power balance, output power of components | China | 2020 |
[144] | Sensitivity based method | PV-WT-FC-PHS | University | RES fraction | Not specified | Cyprus | 2020 |
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Khezri, R.; Mahmoudi, A.; Aki, H.; Muyeen, S.M. Optimal Planning of Remote Area Electricity Supply Systems: Comprehensive Review, Recent Developments and Future Scopes. Energies 2021, 14, 5900. https://doi.org/10.3390/en14185900
Khezri R, Mahmoudi A, Aki H, Muyeen SM. Optimal Planning of Remote Area Electricity Supply Systems: Comprehensive Review, Recent Developments and Future Scopes. Energies. 2021; 14(18):5900. https://doi.org/10.3390/en14185900
Chicago/Turabian StyleKhezri, Rahmat, Amin Mahmoudi, Hirohisa Aki, and S. M. Muyeen. 2021. "Optimal Planning of Remote Area Electricity Supply Systems: Comprehensive Review, Recent Developments and Future Scopes" Energies 14, no. 18: 5900. https://doi.org/10.3390/en14185900
APA StyleKhezri, R., Mahmoudi, A., Aki, H., & Muyeen, S. M. (2021). Optimal Planning of Remote Area Electricity Supply Systems: Comprehensive Review, Recent Developments and Future Scopes. Energies, 14(18), 5900. https://doi.org/10.3390/en14185900