Solar, Wind and Their Hybridization Integration for Multi-Machine Power System Oscillation Controllers Optimization: A Review
Abstract
:1. Introduction
2. Review Methodology
3. Solar, Wind, and Their Hybridization Integration for Multi-Machine Power System Controllers Optimization
3.1. Renewable Energy Sources (RESs) and Integration with Multi-Machine Power System
3.1.1. Synchronous Machine Modeling
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- ;
- = q-axis component of generator terminal voltage;
- ;
- ;
- ;
- ;
- .
3.1.2. SOLAR
3.1.3. WIND
3.1.4. Hybrid
3.2. Wind–PV Maximum Power Tracking and Integration to the GRID
3.2.1. Maximum Power Point Tracking (MPPT)
3.2.2. Phase-Lock Loop (PLL)
3.2.3. Converters
3.3. Power System Stability and Oscillations
3.4. Stability Analysis of Different Damping Schemes
3.4.1. Damping Schemes
PSS-Based Damping
FACTS-Based Damping
Coordination Control Damping
Artificial Intelligence
3.5. Damping Controllers
3.5.1. Trimming and Linearization of a Nonlinear Power System
- = output vector;
- = the input vector;
- = state vector, represented as:
- = state matrix;
- = input matrix;
- = output matrix;
- = feedback matrix.
3.5.2. Eigenvalues
3.6. Review of Objective Function Formulation
3.6.1. Singular Objective Function
3.6.2. Multiple Objective Function
3.7. Optimization Techniques for Damping Controller Design
3.7.1. Particle Swarm Optimization Meta-Heuristic Algorithm
3.7.2. Genetic Algorithms
3.7.3. Tabu Search Algorithm (TS)
3.7.4. Salp Swarm Algorithm
3.7.5. Moth-Flame Algorithm
3.7.6. Sine Cosine Algorithm
3.7.7. Harris Hawk Algorithm
3.7.8. Other Algorithms
3.7.9. Hybrid Algorithms
4. Discussion
4.1. Controller Design limitations in Existing Methods
4.2. Challenges and Trending Issues
4.2.1. Performance and Design of Damping Controller
4.2.2. Objective Function
4.2.3. Implementation of the Meta-Heuristic Algorithm
4.3. Future Outlook
4.4. Conclusions and Recommendations
- ▪
- Artificial intelligent damping type of controller scheme needs to be further explored as there are signs of improved oscillation damping compared with PSS and FACTS;
- ▪
- The objective function definition is a critical part of damping controller design and thus, should be appropriately defined;
- ▪
- Researchers should apply statistical analysis together with the single convergence curve for proper validation in optimizing the parameters of a proposed damping controller which will provide sufficient validation of the convergence curve.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Country | Solar Energy (Gigawatt-Hour (GWh)) | Wind Energy (Gigawatt-Hour (GWh)) | Gross Total Electricity Generated from All Sources | Percentage of Electricity Generated through Solar and Wind |
---|---|---|---|---|
Denmark | 1181 | 16,353 | 27,907 | 62.83% |
Uruguay | 525.5 | 5437.7 | 13,470.5 | 44.27% |
Ireland | 0.093 | 4300 | 10,238.317 | 42% |
Germany | 50,600,000 | 130,963,000 | 558,000,000 | 32.54% |
United Kingdom | 12,800 | 75610 | 312,760 | 28.27% |
Portugal | 1269 | 12,067 | 49,342 | 27.03% |
Greece | 3898 | 9323 | 42,229.90 | 32.48% |
Spain | 15,273.607 | 54,333.98 | 250,387 | 27.8% |
Australia | 22,288 | 22,196 | 221,957 | 20.04% |
Netherlands | 8,056,000 | 15,269,000 | 118,920,000 | 19.61% |
Honduras | 1044.78 | 707.2028 | 9292.817 | 18.85% |
Belgium | 4300 | 10,800 | 81,200 | 18.6% |
Sweden | 805 | 27,589 | 159,635 | 17.79% |
Damping Scheme | Fundamental Damping Purpose | Limitation |
---|---|---|
Virtual synchronous generator | Provides damping over intra-area and inter-area modes of oscillations | Requires a reliable energy storage system for its reliable operation |
PSS | Provides damping over intra-area (local) modes of oscillations | Efficiency is low over inter-area modes of oscillation |
FACTS | Provides damping over inter-area modes of oscillations | Efficiency is low against intra-area modes of oscillation |
Coordination control (PSS+FACTS) | Provides damping over intra-area and inter-area modes of oscillations | Destabilizes the system if the design if there is no proper coordination |
Artificial Intelligence | Reduces the parameters to be tuned compared with PSS and FACTS and provides damping over intra-area and inter-area oscillation modes | Not easy to implement |
Definition Type | Equation | Objective |
---|---|---|
Singular objective function | } | Minimization |
) | Maximization | |
Minimization | ||
Multiple objective function | Minimization | |
) | Maximization |
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Sabo, A.; Kolapo, B.Y.; Odoh, T.E.; Dyari, M.; Abdul Wahab, N.I.; Veerasamy, V. Solar, Wind and Their Hybridization Integration for Multi-Machine Power System Oscillation Controllers Optimization: A Review. Energies 2023, 16, 24. https://doi.org/10.3390/en16010024
Sabo A, Kolapo BY, Odoh TE, Dyari M, Abdul Wahab NI, Veerasamy V. Solar, Wind and Their Hybridization Integration for Multi-Machine Power System Oscillation Controllers Optimization: A Review. Energies. 2023; 16(1):24. https://doi.org/10.3390/en16010024
Chicago/Turabian StyleSabo, Aliyu, Bashir Yunus Kolapo, Theophilus Ebuka Odoh, Musa Dyari, Noor Izzri Abdul Wahab, and Veerapandiyan Veerasamy. 2023. "Solar, Wind and Their Hybridization Integration for Multi-Machine Power System Oscillation Controllers Optimization: A Review" Energies 16, no. 1: 24. https://doi.org/10.3390/en16010024
APA StyleSabo, A., Kolapo, B. Y., Odoh, T. E., Dyari, M., Abdul Wahab, N. I., & Veerasamy, V. (2023). Solar, Wind and Their Hybridization Integration for Multi-Machine Power System Oscillation Controllers Optimization: A Review. Energies, 16(1), 24. https://doi.org/10.3390/en16010024