Metaheuristic-Based Control Parameter Optimization of DFIG-Based Wind Energy Conversion Systems Using the Opposition-Based Search Optimization Algorithm
Abstract
1. Introduction
1.1. Research Gaps
1.2. Motivation
- Improve energy conversion efficiency and minimize power losses under variable wind conditions.
- Enhance dynamic stability by reducing oscillations and settling times.
- Lower computational burden, enabling faster adaptation and real-time control.
1.3. Research Contribution
2. Literature Review
2.1. PI Controller Tuning in DFIG Systems
2.2. Metaheuristic Optimization Techniques for PI Tuning
2.3. Hybrid and Advanced Control Strategies
2.4. Emerging Techniques in Intelligent Control
2.5. Owl Search Optimization (OSO) and Other Metaheuristics
3. Proposed Methodology
3.1. Model Development of DFIG-Based Wind Energy Conversion
- Rotor-Side Converter (RSC). The RSC regulates the power flow—both active and reactive—between the rotor and the grid by adjusting the generator slip. A 3-phase IGBT-based voltage source inverter (VSI) connects to the rotor of the induction generator through slip rings. Using vector control, the system can also control torque and flux independently [19].
- DC-Link Capacitor. The DC capacitor will be an electrolytic capacitor that performs as an energy buffer between the RSC and GSC. It acts as an energy buffer between the RSC and GSC, smoothing power transfer and stabilizing voltage [16].
3.2. Operation of Back-to-Back Converter
3.3. Control Structure of the DFIG Converter
3.3.1. RSC Control
3.3.2. GSC Control
3.4. Mathematical Equations and Performance Metrics
3.5. PI Controller Optimization Problem
- ITAE: integral of time-weighted absolute error.
- OS: percentage overshoot.
- : settling time.
- : converter power losses.
- : weighting factors reflecting control priorities.
3.6. Owl Search Optimization (OSO) Algorithm for PI Tuning
- Initialization: Generate candidate solutions (, ) within defined bounds.
- Fitness Evaluation: Compute the objective function J for each solution.
- Position Update: Adapt search based on exploration–exploitation balance.
- Selection: Retain the best candidates.
- Termination: Stop the process when the algorithm reaches the maximum iterations or meets the convergence criteria.
- Fewer iterations to reach convergence.
- Reduced computational overhead (no crossover/mutation as in GA).
- Faster adaptation to disturbances compared to SA.
4. Study of Other Optimization Algorithms
4.1. Optimization Using Owl Search Optimization
4.1.1. Algorithm of Owl Search Optimization
4.1.2. Flowchart of Owl Search Optimization
4.1.3. Computational Efficiency
4.2. Particle Swarm Optimization (PSO)
4.2.1. Algorithm of Particle Swarm Optimization
4.2.2. Flowchart of Particle Swarm Optimization
4.3. Genetic Algorithm (GA)
4.3.1. Flowchart of Genetic Algorithm
4.3.2. Algorithm of Genetic Algorithm (GA)
4.4. Simulated Annealing (SA)
4.4.1. Algorithm of Simulated Annealing (SA)
4.4.2. Flowchart of Simulated Annealing
4.5. Comparisons of the Studied Algorithm Structures
5. Simulation and Results
5.1. Simulation Setup
5.2. DFIG Model Verification
5.3. Simulation Analysis Under Step-Changing Wind Speed Inputs (4–12 m/s)
5.3.1. Rotor Speed Response
5.3.2. DC-Link Voltage Stability
5.3.3. Active Power Dynamics
5.3.4. Stator Current Quality
5.3.5. Electromagnetic Torque Response
5.3.6. Tip Speed Ratio (TSR) Under Step-Changing Wind Speed Conditions
5.4. Simulation Analysis on Variable Wind Speed Scenario from 4 m/s to 12 m/s
5.4.1. Tip-Speed Ratio (TSR)
5.4.2. Torque vs. Time
5.4.3. Stator Current vs. Time
5.4.4. Rotor Speed vs. Time
5.4.5. DC-Link Voltage vs. Time
5.4.6. Active Power vs. Time
6. Simulation Analysis Discussion
6.1. Step Wind Speed Change
6.2. Variable Wind Speed Ramp
6.3. Key Performance Indices
6.4. Sensitivity Analysis
7. Conclusions
- Dynamic response: OSO achieved the lowest rise and settling times, with effective suppression of oscillations and overshoot.
- Ripple suppression: OSO minimized DC-link voltage and stator current ripples, reducing RMS ripple values by about 20–30% compared to GA and SA.
- Harmonic quality and PQ indices: OSO delivered the lowest stator current THD (~2.8%) and maintained a high power factor (>0.96), ensuring grid-friendly operation.
- LVRT/FRT performance: OSO provided superior fault ride-through capability, with stable DC-link headroom and rapid post-disturbance recovery.
8. Future Work
- Hardware-in-the-Loop (HIL) and Experimental Validation: Extending the study beyond simulations to FPGA- or DSP-based HIL platforms and real testbed implementation.
- Extended Grid Disturbances: Incorporating imbalanced faults, harmonic-rich weak grids, and multi-machine interactions to evaluate robustness further.
- Hybrid Optimization Frameworks: Investigating OSO in combination with adaptive control or reinforcement learning for enhanced adaptability under extreme conditions.
- Scalability Studies: Applying OSO to large-scale wind farms with multi-turbine coordination, including wake effects and grid-code compliance.
- Cyber-Physical Resilience: Evaluating the resilience of OSO-based controllers under communication delays, cyberattacks, and uncertainties in sensor measurements.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Method | Strengths | Limitations | Reference |
|---|---|---|---|
| PI controller (manual tuning) | Simple structure, fast response, widely adopted | Poor adaptability to nonlinearities, parameter variations, and grid disturbances; instability under dynamic conditions | [9,11,20] |
| Gradient-based methods | Straightforward implementation, effective for small-scale problems | Susceptible to local optima, low robustness, and unsuitable for high-dimensional nonlinear DFIG systems | [7,12] |
| Particle swarm optimization (PSO) | Fast convergence, widely applied in wind energy systems | Premature convergence, local trapping, and reduced efficiency under dynamic wind variations | [13] |
| Genetic algorithm (GA) | Good global search ability, robust for nonlinear problems | Higher oscillations, longer settling times, and higher computational cost | [14] |
| Simulated annealing (SA) | Strong exploration, avoids premature convergence, stable in some conditions | Slow convergence, heavy computational burden, and limited real-time applicability | [15] |
| Owl search optimization (OSO) (proposed) | Balanced exploration–exploitation, strong global optimization, adaptive control, minimal oscillations | Application to DFIG power converter optimization remains underexplored | [18] |
| Algorithm | Type | Computational Complexity | Strengths | Limitations | Suitability for DFIG PI Tuning |
|---|---|---|---|---|---|
| PSO | Swarm Intelligence | O(N·I), where N = particles, I = iterations | Fast convergence, simple to implement, suitable for continuous parameter tuning | Prone to premature convergence, performance degrades under highly dynamic conditions | Adequate but limited robustness in real-time wind variability |
| GA | Evolutionary Computation | O(N·I·C), where C = crossover/mutation operations | Strong exploration capability, good for complex/nonlinear search spaces | Slow convergence, high computational burden, sensitive to parameter settings | Useful for offline optimization, less practical for real-time tuning |
| SA | Probabilistic Search | O(I), where I = iterations | Escapes local minima using probabilistic acceptance, simple structure | Slow convergence, performance depends on cooling schedule, single-solution trajectory limits exploration | Provides robustness but lacks efficiency for fast-changing wind environments |
| OSO | Nature-Inspired Metaheuristic | O(N·I) | Strong balance of exploration and exploitation, avoids premature convergence, faster than GA and SA, simpler than PSO | Relatively new; fewer theoretical guarantees and limited benchmarking in power systems | Highly suitable for real-time PI tuning due to fast convergence, low computation, and adaptability |
| Metric | OSO (Orange) | PSO (Green) | SA (Purple) | GA (Blue) |
|---|---|---|---|---|
| Rotor Speed (Rise, Settling, Overshoot) | <1.0 s, <1.2 s, <2% | =1.1 s, <1.3 s, 3% | =1.3 s, ≈1.6 s, 4% | =1.5 s, ≈1.8 s, 6% |
| DC-Link Voltage (Vdc) (Ripple RMS, Peak–Peak, Recovery) | =0.3%, =0.6%, <0.8 s | =0.35%, =0.8%, =1.0 s | =0.45%, =1.2%, =1.3 s | =0.55%, =1.5%, =1.6 s |
| Active Power (P) (Rise, Overshoot, Ripple Peak–Peak) | =1.3 s, <2.5%, =0.05 p.u. | =1.4 s, =3%, =0.07 p.u. | =1.6 s, =3.8%, =0.1 p.u. | =1.8 s, =5%, =0.15 p.u. |
| Stator Current (Steady Ripple, THD, PF) | =0.05 A, =2.8%, >0.96 | =0.07 A, =3.2%, ≈0.96 | =0.1 A, =3.9%, ≈0.95 | =0.12 A, =4.6%, ≈0.93 |
| Electromagnetic Torque (Mean, Overshoot, Localized ripples) | =−0.25 p.u., <8%, Minimal | =−0.25 p.u., =10%, Small | =−0.25 p.u., =12%, Moderate | =−0.25 p.u., =15%, pronounced |
| Tip Speed Ratio (λ) (Centered, Ripples) | =6.5, Tight convergence, small ripple | =6.5, Moderate ripple | =6.6, Slightly higher ripple | =6.7, largest deviations |
| LVRT/FRT (0.2–0.5 p.u. sag, 150–300 ms) (Recovery) | Fastest, current limiting effective, DC headroom secure | Good, slightly higher inrush | Moderate, longer current limiting | Slowest, high overshoot, weak current limiting |
| Metric | OSO (Orange) | PSO (Green) | SA (Purple) | GA (Blue) |
|---|---|---|---|---|
| Dynamic Response Rise Time (s)/Settling Time (s)/Overshoot (%) | 1.3/1.5/4–5% | 1.8/2.2/7–8% | 1.6/2.0/6–7% | 1.0/1.2/<3% |
| Steady-State Ripple Vdc (RMS/Peak–Peak %)/Current (RMS/Peak–Peak %) | 0.35/0.8; 3.2/6.5 | 0.55/1.3; 4.6/8.2 | 0.42/1.0; 3.9/7.1 | 0.28/0.6; 2.8/5.2 |
| Harmonics and PQ Indices THD (%)/Power Factor | 2.8/0.98 | 4.6/0.94 | 3.9/0.95 | 3.2/0.97 |
| LVRT/FRT Performance | Survives 0.3 p.u. sag, recovers ≈ 180 ms (moderate oscillations) | Struggles at 0.2–0.3 p.u. sag, >250 ms recovery, poor damping | Handles 0.3 p.u. sag, recovers ≈ 220 ms, moderate overshoot | Tolerates 0.2 p.u. sag, recovers < 150 ms, minimal overshoot |
| Convergence Statistics Time (s)/Mean Objective | 1.8/0.035 ± 0.004 | 2.5/0.049 ± 0.006 | 2.1/0.041 ± 0.005 | 2.2/0.038 ± 0.003 |
| Computational Cost (N × Iter)/Wall-time (s) | 20 × 40 = 800/1.1 | 30 × 40 = 1200/1.9 | 25 × 45 = 1125/1.6 | 20 × 30 = 600/0.9 |
| Controller Type | THD (%) | Settling Time (s) | Overshoot (%) | Implementation Complexity | Remarks/Source | Torque Response Observations |
|---|---|---|---|---|---|---|
| OSO–PI (Proposed) | 2.8 | 1.2 | 6.5 | Low | Fast adaptation, robust stability | Smooth torque recovery |
| Sliding-Mode Control (SMC) | 3.8 | 1.8 | 7.0 | High | Chattering, requires full model | High robustness during disturbances. However, its high-frequency chattering introduces visible harmonic content in the torque waveform |
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Behara, K.; Behara, R.K. Metaheuristic-Based Control Parameter Optimization of DFIG-Based Wind Energy Conversion Systems Using the Opposition-Based Search Optimization Algorithm. Energies 2025, 18, 5843. https://doi.org/10.3390/en18215843
Behara K, Behara RK. Metaheuristic-Based Control Parameter Optimization of DFIG-Based Wind Energy Conversion Systems Using the Opposition-Based Search Optimization Algorithm. Energies. 2025; 18(21):5843. https://doi.org/10.3390/en18215843
Chicago/Turabian StyleBehara, Kavita, and Ramesh Kumar Behara. 2025. "Metaheuristic-Based Control Parameter Optimization of DFIG-Based Wind Energy Conversion Systems Using the Opposition-Based Search Optimization Algorithm" Energies 18, no. 21: 5843. https://doi.org/10.3390/en18215843
APA StyleBehara, K., & Behara, R. K. (2025). Metaheuristic-Based Control Parameter Optimization of DFIG-Based Wind Energy Conversion Systems Using the Opposition-Based Search Optimization Algorithm. Energies, 18(21), 5843. https://doi.org/10.3390/en18215843

