Review of Optimal Design and Enhanced Hybrid Energy Systems Using Energy Management Strategies
Abstract
1. Introduction
2. Optimal Design and Enhancement of Hybrid Energy Systems
2.1. Modeling and Simulation of Hybrid Energy Systems Sizing
2.2. Commercially Available Software Tools for Hybrid System Sizing
3. Energy Management Strategies in Hybrid Renewable Energy Systems
3.1. Energy Management Utilizing Intelligent Approaches for Standalone Applications
3.1.1. Energy Management Based on Linear Programming—Standalone Applications
3.1.2. Energy Management Based on Intelligent Techniques—Standalone Applications
3.1.3. Energy Management by Fuzzy Logic Controllers in Standalone Hybrid Energy Systems
3.2. Energy Management Systems in Grid-Connected Hybrid Renewable Energy Systems
3.2.1. Energy Management Based on Linear Programming—Grid-Connected Applications
3.2.2. Energy Management Based on Intelligent Techniques—Grid-Connected Applications
3.2.3. Energy Management by Fuzzy Logic Controllers in Standalone Hybrid Energy Systems
3.3. Energy Management Strategies in Smart Grids Including Renewable Energy Sources
4. Control and Management of Hybrid Renewable Energy Systems
5. Challenges and Recent Advancements
- The intermittency of solar and wind energy requires an efficient energy storage system (ESS). But such a system cannot be overused. Most of the time, single ESS technologies cannot achieve a balance between energy density, power density, lifetime, and cost. Hybrid energy storage systems (HESSs) are considered a good solution for this problem due to the weight of benefits. Challenges exist in the optimization of HESS configuration and ensuring the compatibility of diverse storage technologies.
- HRES deployment is costly because of high initial capital, including the cost of renewable energy generators, storage systems, and all other required supportive systems. The high initial costs of HRESs are a significant barrier to adoption.
- System Sizing and Optimization: Determining the optimal size and configuration of HRES components is complex, involving trade-offs between cost, performance, and reliability. Efficiencies and added costs can arise from either oversizing or undersizing. To solve these challenges, advanced optimization algorithms are being developed, which use AI and ML techniques.
- For the proper functioning of HRESs, effective control strategies need to be established for proper operation and energy management. Recent advancements include the integration of AI for predictive, real-time, and fast decision-making. The systems need complex controls and strong energy management systems.
- The safety and reliability of HRESs, especially with the integration of different energy storage technologies, is a key issue. We need to manage degrading batteries, prevent failures, and ensure consistently functioning under harsh conditions with hybrid renewable energy.
- The creation, operation, and disposal of HRES components must not harm the environment and must be sustainable. The materials developed should be recyclable and the process of manufacturing should have a low environmental footprint. And system disposal should be performed responsibly during the HRES life cycle.
- AI techniques are used in these systems to enhance decision-making for smart energy management and predicting system behavior.
- Scientists are investigating new materials and technologies to develop new energy storage, such as solid-state batteries that make these systems more efficient, safe, and longer-lasting.
- Efforts are underway to develop standard protocols related to system integration, communication, and control for reducing interoperability issues and for facilitating the deployment of HRESs.
- Nations’ governments are launching policies and supplying incentives that reduce the financial hurdles of taking up HRESs to promote clean energy transition and strengthen the resilience of nations’ energy grids.
6. Discussion
7. Conclusions and Recommendations
- I.
- Design Protocols
- Autonomous rural systems: Prioritize multi-objective evolutionary algorithms (e.g., PSO, GA) integrated with HOMER simulations, which have proven to be cost-effective and reliable in isolated communities.
- Grid-integrated microgrids: Highlight the combination of AI-driven predictive energy management systems with hybrid storage solutions (batteries and supercapacitors) to address intermittency and alleviate grid stress.
- Developing versus developed regions: In developing countries, low-cost rule-based or fuzzy controllers are practical due to constrained computer resources, but established grids can leverage advanced model predictive and AI-driven control.
- II.
- Implications for Policy and Regulation
- Governments ought to implement region-specific feed-in tariffs, tax incentives, and subsidies that correspond to local resource availability (e.g., solar prevalence in MENA versus wind in Northern Europe).
- The standardization of communication protocols and grid integration norms is crucial for facilitating interoperability among renewable sources, storage systems, and national grids.
- Policies ought to promote public–private collaborations to mitigate substantial initial capital expenditures via collaborative finance frameworks.
- III.
- Insights on Practical Deployment
- Life Cycle Assessment (LCA) should be integrated into project design to evaluate environmental and social implications, in addition to economic viability.
- Pilot projects should be utilized as standards for expansion, particularly in rural electrification and smart grid integration.
- Capacity-building activities, including local training programs for technicians and operators, must follow deployment to guarantee long-term sustainability.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Optimization Methodology | Description | Strengths | Limitations | Ref. |
|---|---|---|---|---|
| Mathematical Programming | Uses linear and nonlinear programming to optimize system size and configuration. | Provides precise solutions and handles well-defined constraints. | Computationally expensive for large-scale aerospace systems. | [20] |
| Evolutionary Algorithms (EAs) | Utilizes GAs, PSO, and DE to find optimal solutions in design, control, and routing. | Effective for complex, multi-objective problems and large search spaces in aerospace applications. | Convergence time may be long and results depend heavily on initial population settings. | [21] |
| Machine Learning (ML) | Applies supervised and reinforcement learning for optimization and control. | Adaptive to dynamic conditions, supports real-time optimization and fault detection. | Requires large, high-quality datasets and extensive computational resources. | [22] |
| Hybrid Modeling Approaches | Combines physics-based and data-driven models to improve system performance. | Balances accuracy with efficiency; integrates simulation and empirical data for better prediction. | Increased model complexity and challenges in integrating different modeling approaches. | [23] |
| Simulation-Based Optimization | Uses Monte Carlo, system dynamics, or stochastic models to simulate system behavior. | Accounts for uncertainty and transient phenomena in flight dynamics and thermal systems. | Requires extensive simulation time, especially for high-fidelity or large-scale problems. | [24] |
| Energy Management Approach | Advantages | Disadvantages | Remarks/Literature Insights | Ref. |
|---|---|---|---|---|
| Simplex algorithm | Easy to understand | Relatively lower performance for finding the global optimum compared to GAs, etc. | Used in early-stage feasibility studies | [29] |
| Linear programming | Structured and fast; well-established | Not suitable for nonlinear systems; inflexible | Common in economic dispatch models | [30] |
| Evolutionary algorithm | Capable of global optimization; suitable for complex, nonlinear systems | Requires significant computational resources and parameter tuning | Widely applied in HRES optimization | [31,32] |
| HOMER | Makes it easy to understand the main concepts of a sizing procedure with efficient output figures; it can be downloaded freely | “Black box” code utilization; first-degree linear equation-based models for hybrid system components that do not represent the source characteristics exactly | Most cited tool in hybrid system research | [33] |
| Other software tools (HYBRID2 v1.3, etc.) | The advantage changes from approach to approach | Harder to find examples in the literature | Used in advanced and research-grade simulations | [34] |
| Neural networks | Efficient performance in most types of applications; easy to find examples in the literature | Needs a training procedure | Emerging in energy demand prediction and smart grid control | [35] |
| Design-space-based approach | Easy to implement and understand | Computational time inefficiency | Useful in sensitivity analysis and educational contexts | [36] |
| Control Paradigm | Energy Sources Considered | Outcome | Ref. |
|---|---|---|---|
| Load following (LF) and Maximum-Efficiency Point Tracking (MEPT) | PV, wind, FC | Four energy control strategies are proposed and analyzed for the standalone Renewable/Fuel Cell Hybrid Power Source (RES/FC HPS). The concept of load following (LF) and Maximum-Efficiency Point Tracking (MEPT) are used to control the fueling rates. | [137] |
| Rule-based hierarchical control strategy | PV, FC, electrolyzer, battery bank, SC | An advanced energy management strategy for a standalone hybrid energy system is proposed. The control strategy is designed to ensure the optimal energy management of the hybrid system. This strategy aims to satisfy the load demands throughout the different operation conditions and to reduce the stress on the hybrid system. | [47] |
| Master–slave concept with droop control | PV, wind, battery | The control strategy based on a communication link increases the control complexity and affects the expandability of the HRES. The master–slave control with the droop concept does not require a communication link and provides good load sharing. In addition, the master–slave concept adds features, such as the flexibility, expandability, and modularity of the HRES. | [91] |
| Threshold-based energy diversion strategy | PV, battery, FC | The energy management strategy is based on diverting any excess PV energy into the electrolyzer when the battery is charged to 99.5%. This protects the battery from overcharging. In this developed strategy, there is no need for a dump load as the generated energy is matched with the load demand. | [48] |
| Priority-based sequential control | PV, FC, UC | The purpose of the energy management strategy is to satisfy the load requirement continuously. The priority is to utilize the PV energy and any excess energy is used to generate hydrogen. The excess energy is directed to the ultra-capacitor when the hydrogen storage system is full. The solar system will be shut down if the capacitor is fully charged. | [78] |
| Forecast-based optimization strategy | PV, battery, FC | The strategy is based on weather forecasts and the objective of the control strategy is to optimize the use of renewable sources to ensure their use while improving the comfort conditions of the house. | [46] |
| Multi-agent distributed control | PV, wind, micro-hydropower, diesel, battery | A distributed energy management system architecture based on multi-agents is proposed. The purpose is to provide control for each of the energy sources and loads in the microgrid system. | [43] |
| Forecast-based predictive control with real-time updates | PV, wind, battery, FC | Forecasting of both the renewable sources and loads is carried out prior to implementing the proposed strategy. The power management system is continuously updated by updating both the decision time interval and any time lags resulting from hardware sensors. | [44] |
| Comparative strategy analysis: cycle charging, peak shaving, load following | PV, wind, diesel, battery | Three energy management strategies were checked: the cycle charging strategy, peak shaving strategy, and load following strategy. The cycle charging strategy was found to be the most effective in comparison with the other strategies. | [40] |
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Alhousni, F.K.; Okonkwo, P.C.; Barhoumi, E.M. Review of Optimal Design and Enhanced Hybrid Energy Systems Using Energy Management Strategies. Energies 2025, 18, 5652. https://doi.org/10.3390/en18215652
Alhousni FK, Okonkwo PC, Barhoumi EM. Review of Optimal Design and Enhanced Hybrid Energy Systems Using Energy Management Strategies. Energies. 2025; 18(21):5652. https://doi.org/10.3390/en18215652
Chicago/Turabian StyleAlhousni, Fadhil Khadoum, Paul C. Okonkwo, and El Manaa Barhoumi. 2025. "Review of Optimal Design and Enhanced Hybrid Energy Systems Using Energy Management Strategies" Energies 18, no. 21: 5652. https://doi.org/10.3390/en18215652
APA StyleAlhousni, F. K., Okonkwo, P. C., & Barhoumi, E. M. (2025). Review of Optimal Design and Enhanced Hybrid Energy Systems Using Energy Management Strategies. Energies, 18(21), 5652. https://doi.org/10.3390/en18215652

