Comprehensive Review of Hybrid Energy Systems: Challenges, Applications, and Optimization Strategies
Abstract
:1. Introduction
2. Problem Formulation
2.1. Design Considerations
2.1.1. Integration of Multiple Energy Sources
2.1.2. Sizing and Optimization
2.1.3. Life Cycle Analysis (LCA)
2.1.4. Cost of Energy (CoE)
2.1.5. System Architecture
2.2. Comparison and Analysis of ON-GRID and OFF-GRID Systems
2.2.1. Characteristics of ON-GRID and OFF-GRID Systems
2.2.2. Energy Resources and Control Mechanisms
2.2.3. Objective Functions and Optimization Techniques
2.2.4. Analysis of ON-GRID and OFF-GRID Systems
3. State-of-the-Art Literature Review
3.1. Challenges in HES
3.1.1. Grid Integration and Stability
3.1.2. Energy Storage and Backup System Challenges
3.1.3. Resource Variability, Forecasting, and Optimized Management
3.1.4. Cost, Scalability, and Energy Scheduling
3.1.5. Socio-Technical Challenges
3.2. Applicability of Hybrid Energy Systems
3.2.1. Residential and Commercial Applications
3.2.2. Healthcare and Critical Infrastructure
3.2.3. Remote and Islanded Microgrids
3.2.4. Transportation and Maritime Applications
3.3. Optimization Techniques and EMS for Hybrid Energy Systems
3.3.1. Fuzzy Logic Control (FLC)
3.3.2. Metaheuristic Optimization Algorithms
3.3.3. Hybrid Optimization Techniques
3.3.4. Advanced EMS Architectures and Strategies
3.4. Synthesis and Research Gaps
3.4.1. Real-World Testing and Long-Term Performance
3.4.2. Hybrid Optimization Algorithms
3.4.3. Energy Storage Technologies
3.4.4. Advanced Control Strategies
4. Optimization Techniques for Hybrid Energy Systems
4.1. Artificial Intelligence Techniques
4.1.1. Genetic Algorithm (GA)
4.1.2. Harmony Search (HS)
4.1.3. Particle Swarm Optimization (PSO)
4.1.4. Reinforcement Learning (RL)
4.1.5. Simulated Annealing (SA)
4.2. Iterative Methods
4.2.1. Conjugate Gradient (CG) Method
4.2.2. Gradient Descent (GD)
4.2.3. Newton–Raphson (N-R) Method
4.3. Synthesis of Optimization Techniques for HESs
5. Grid Control Strategies: Integration, Scalability, and Practical Insights
5.1. Integration of Hybrid System with Grid Control Strategies
5.2. Scalability of Control Systems
5.3. Control Techniques and Their Application Across Hybrid Systems
5.3.1. Load Balancing
5.3.2. Demand Response
5.3.3. Distributed Energy Resource Management
5.4. Grid Control Enhancement: Predictive Maintenance and Security
5.4.1. Predictive Maintenance
5.4.2. Cybersecurity Measures
5.5. Practical Implementation Insights
6. Advancements and Challenges in Renewable Energy Systems and EMS: Toward Sustainable Energy Solutions
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
AEO | Artificial Ecosystem-Based Optimization |
ADMM | Alternative Direction Method of Multipliers |
AI | Artificial Intelligence |
AOA | Archimedes Optimization Algorithm |
BT | Battery |
CO2 | Carbon Dioxide |
CoE | Cost of Energy |
DER | Distributed Energy Resource |
DERM | Distributed Energy Resource Management |
DES | Distributed Energy Source |
DG | Distributed Generation |
DPA | Dynamic Programming Algorithm |
EO | Equilibrium Optimizer |
EMS | Energy Management System |
ESS | Energy Storage System |
FC | Fuel Cell |
FLC | Fuzzy Logic Control |
GA | Genetic Algorithm |
GEKKO | Generalized Karush–Kuhn–Tucker Optimization |
GWO | Grey Wolf Optimization |
HES | Hybrid Energy System |
HESS | Hybrid Energy Storage System |
HS | Harmony Search |
HVAC | Heating, Ventilation, and Air Conditioning |
IoT | Internet of Things |
LCOE | Levelized Cost of Electricity |
MF | Membership Function |
MG | Microgrid |
MILP | Mixed-Integer Linear Programming |
MPA | Marine Predator Algorithm |
MRFOA | Manta Ray Foraging Optimization Algorithm |
NNGA | Neural Network Genetic Algorithm |
NSGA | Non-Dominated Sorting Genetic Algorithm |
O&M | Operational and Maintenance |
OF | Objective Function |
PSO | Particle Swarm Optimization |
PSO-MWWO | Particle Swarm Optimization-Modified Weight Watcher Optimization |
PV | Photovoltaic |
RE system | Renewable Energy System |
RES | Renewable Energy Source |
RL | Reinforcement Learning |
SA | Simulated Annealing |
SC | Super Capacitor |
SDP | Stochastic Dynamic Programming |
SoC | State of Charge |
SSA | Salp Swarm Algorithm |
TEC | Transactive Energy Control |
TLSC | Total Life Span Cost |
TSA | Tunicate Swarm Algorithm |
TT | Tidal Turbine |
WT | Wind Turbine |
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Characteristic | ON-GRID | OFF-GRID |
---|---|---|
Grid connection | Yes [45] | No [45] |
Power supply | Dependent on grid [45] | Independent of grid [45] |
Energy storage needs | Lower [47] | Higher [47] |
Integration of multiple energy sources | Yes [21,22] | Yes [21,22] |
Economic benefits | Potential revenue from net metering and feed-in tariffs [38] | No revenue from selling excess energy [38] |
Energy independence | Limited [45] | Complete [45] |
Environmental benefits | Varies depending on energy sources used [36] | Typically higher [36] |
Remote applications | Suitable [59] | Ideal [59] |
Grid infrastructure costs | Higher [60] | - |
Initial investment | Lower [60] | Higher [60] |
Grid support | Available [45] | Limited [45] |
Research Article | PV | FC | WT/TT | ESS | Diesel Generator | ON-GRID/OFF-GRID | Single/Multi OF | Optimization Method | Design Constraints/Objectives | Desired Outcomes | Limitations/Weaknesses |
---|---|---|---|---|---|---|---|---|---|---|---|
[6] | ✓ | ✓ | WT | ✓ | ON-GRID | Single | PSO-MWWO hybrid optimization algorithm | C1. Voltage and frequency regulation C2. Power balance C3. RES uncertainty C4. Component constraints (e.g., SoC, capacity) | 1. Minimize cost and fuel consumption 2. Improve power quality (THD reduction) 3. Optimize HESS sizing and operation | 1. High computational complexity 2. Limited scalability assessment | |
[7] | ✓ | ✓ | ✓ | OFF-GRID | Single | Search space | C1. Power system components capacity O1. Dispatch strategy (load following or cycle charging) | 1. Performance 2. Life cost of electricity | Limited scalability to larger systems; assumes static load profiles. | ||
[8] | ✓ | ✓ | ON-GRID | Fuzzy logic | C1. The rules of the electricity bill O1. Operating mode of different time slots (peak, off-peak, and off days) | 1. To reduce: a. Electricity bill b. CO2 emissions of commercial building 2. CoE | Limited representation of: a. Dynamic load demand b. renewable energy variability. | ||||
[9] | ✓ | ✓ | ✓ | ON-GRID | Multi | NNGA | O1. Lowest cost rate O2. Minimum CO2 emissions O3. Least power from the grid O4. Highest O2 production | Optimum sizing of: a. PV panels b. Electrolyzer c. Fuel-cell | 1. Computational complexity 2. Potential overfitting in NNGA | ||
[10] | ✓ | ✓ | ✓ | ✓ | OFF-GRID | Single | Search space | C1. Distributed power generation system capacities O1. CoE O2. Net present cost | 1. Low CoE 2. Meets the daily and annual AC primary load of the building 3. Low greenhouse gas emissions | 1. Assumes idealized conditions 2. Lacks robustness to demand variation | |
[11] | ✓ | ✓ | Both | Single | PSO | O1. Total output energy of PV and Battery ESS O2. Capital cost O3. Replacement cost O4. Operation cost O5. Maintenance cost C1. Total output load | 1. Minimum cost 2. Optimum PV and Battery ESS size | PSO can converge prematurely in complex multi-modal problems | |||
[12] | ✓ | ✓ | ON-GRID | Single | Search Space | C1. Power system components capacity C2. Daily power load requirement for the building | 1. To increase the penetration of renewable energy 2. Low-levelized CoE 3. Low CO2 emissions | Simplistic modeling of grid interaction and component dynamics | |||
[13] | ✓ | ✓ | WT | ✓ | ✓ | Both | Both | GA and NSGA-II | O1. Feed-in and profit O2. Penetration and CO2 Emission O3. Present Value of TLSC | Optimum size and configuration: a. Number of WTs b. Turbine rotor radius c. Total size of the PV panels d. Number of batteries e. Nominal power of the diesel generator, FC, and electrolyzer. | Computational time increases with system size and objectives |
[14] | ✓ | ✓ | ON-GRID | Single | Fuzzy logic | O1. Identify the parameters of the MF of FL-EMS O2. Optimize the sizing of BT | Decrease the levelized CoE | Focuses only on BT optimization; limited insights for broader systems. | |||
[15] | ✓ | ON-GRID | Single | MRFO | O1.The gain of the PI controller for the DC-DC and DC-AC converters | 1. To achieve smooth power quality 2. Improve performance of the grid-connected PV system | Applicability limited to specific PV systems; lacks real-world testing | ||||
[16] | ✓ | TT | ✓ | ✓ | OFF-GRID | Single | Primal-dual interior point algorithm in Python 3.8 using the GEKKO package | O1. Operating cost of DG O2. LCOEs of PV and tidal marine turbine systems O3. Battery degradation cost O4. Load shedding cost | To reduce operating and maintenance costs | High reliance on accurate modeling of tidal and PV resources | |
[74] | ✓ | ✓ | WT | ✓ | Gas Turbine | ON-GRID | Single | MPA | C1. The provided power must be equal to the load power C2. DG unit capacity O1. DGs operating cost | 1. To enhance the performance 2. Reduces the daily operating cost | 1. High computational demand 2. Weather dependency for WT systems |
[75] | ✓ | ✓ | ON-GRID | Multi | Fuzzy logic | C1. Power balance C2. Energy forecast C3. SoC C4. HESS degradation and efficiency | 1. Ensuring power balance 2. Conservative use of HESS 3. O&M cost reduction 4. Bus voltage control 5. Reduction of energy losses | 1. Dependence on precise forecasting 2. Degradation model accuracy | |||
[77] | ✓ | ✓ | ✓ | OFF-GRID DC | Single | MILP | C1. Power from each RES is within the allowable thresholds as forecasted. C2. SoC C3. Total power demand C4. Power is balanced C5. Losses in the system | 1. Minimizing operation cost 2. Supply and demand balance 3. Battery lifetime improvement 4. Maximum utilization of RESs | 1. High dependency on accurate forecasts 2. Simplified assumptions about RES availability | ||
[79] | ✓ | ✓ | ✓ | OFF-GRID | Single | Rule-based and SDP | C1. Magnitude and rate of the FC and battery operation C2. Characteristics of the PV C3. Uncertain PV output into account in the actual system operation scheduling | 1. Optimal EMS 2. Ensure the robustness and effectiveness of the SDP algorithm | Lack of scalability for larger and more complex systems | ||
[81] | ✓ | ✓ | ON-GRID | Single | MILP-based techno-economic model Static and dynamic energy sharing modeling | C1. No remuneration for excess energy to users C2. SOC limits, charge/discharge limits | 1. Increase self-consumption of community PV generation 2. Reduce electricity costs 3. Assess static vs. dynamic sharing schemes | 1. Relies on static load and generation profiles. 2. The optimization method (LP) may not handle nonlinear system dynamics effectively. | |||
[99] | ✓ | ✓ | ✓ | ON-GRID | Single | Optimal adaptive FLC-EMS with eight different optimizers (PSO, SSA, AOA, MPA, AEO, EO, PO, and TSA) | C1. SoC C2. The net power O1. Fuzzy MFs are optimized using one of the proposed algorithms to enhance the EMS performance | To enhance the system’s power saving | Limited comparison with non-fuzzy optimization approaches | ||
[101] | ✓ | ✓ | WT | ON-GRID | Single | Hybrid firefly/harmony search algorithm (HFA/HS) and PSO | C1. Loss of power supply probability (LPSP) | 1. Optimal size of PVs, WTs, hydrogen tanks, FCs, and electrolyzers 2. Minimizing the total net present cost with a specific quantity of LPSP | 1. Limited scalability 2. Reliance on heuristic tuning parameters. |
Optimization Method | Advantages | Disadvantages | Challenges Addressed | Applicability | Optimization Strategy | Cited Articles |
---|---|---|---|---|---|---|
Genetic Algorithm (GA) | Global search capability Effective for multi-objective problems | High computational cost Stagnation at local minima | Nonlinear systems Multi-objective optimization | HES design PV-battery optimization | Evolutionary process through selection, crossover, mutation | [9,13,14] |
Harmony search (HS) | Simple implementation Fast convergence | Premature convergence Limited scalability | Small to medium-sized systems | Remote area microgrids Cost minimization | Musical improvisation-inspired optimization technique | [101] |
Particle swarm optimization (PSO) | Fast convergence No derivative requirement | Result variability Susceptible to local optima | Dynamic energy management Real-time optimization | PV-H2-Grid systems Load demand response | Swarm-based optimization using cognitive and social behavior | [11,102] |
Reinforcement learning (RL) | Adaptive learning Effective for dynamic environments | High data requirements Computationally intensive | Real-time energy scheduling Dynamic load balancing | Smart grids Energy trading | Policy optimization through trial-and-error interaction | [114,115] |
Simulated annealing (SA) | Escapes local optima Suitable for nonlinear systems | Slow convergence Sensitive to temperature schedules | Discrete decision-making Cost vs. reliability trade-off | Microgrid optimization Network reconfiguration | Probabilistic global search with temperature control | [117] |
Conjugate gradient (CG) | Fast for large-scale systems Efficient convergence | Limited to differentiable functions | Power flow optimization Distributed generation | Large-scale hybrid systems | Gradient-based iterative optimization | [120] |
Gradient descent (GD) | Simple implementation Effective for small systems | Slow convergence Trapped in local minima | Continuous optimization Convex problems | Energy dispatch Resource allocation | Gradient-based iterative improvement | [121] |
Newton–Raphson (N-R) | Rapid convergence Accurate for smooth functions | Complex implementation Requires second-order derivatives | Power flow analysis Voltage stability | Hybrid microgrid power optimization | Iterative root-finding and system analysis | [122] |
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Khan, A.; Bressel, M.; Davigny, A.; Abbes, D.; Ould Bouamama, B. Comprehensive Review of Hybrid Energy Systems: Challenges, Applications, and Optimization Strategies. Energies 2025, 18, 2612. https://doi.org/10.3390/en18102612
Khan A, Bressel M, Davigny A, Abbes D, Ould Bouamama B. Comprehensive Review of Hybrid Energy Systems: Challenges, Applications, and Optimization Strategies. Energies. 2025; 18(10):2612. https://doi.org/10.3390/en18102612
Chicago/Turabian StyleKhan, Aqib, Mathieu Bressel, Arnaud Davigny, Dhaker Abbes, and Belkacem Ould Bouamama. 2025. "Comprehensive Review of Hybrid Energy Systems: Challenges, Applications, and Optimization Strategies" Energies 18, no. 10: 2612. https://doi.org/10.3390/en18102612
APA StyleKhan, A., Bressel, M., Davigny, A., Abbes, D., & Ould Bouamama, B. (2025). Comprehensive Review of Hybrid Energy Systems: Challenges, Applications, and Optimization Strategies. Energies, 18(10), 2612. https://doi.org/10.3390/en18102612