Advancements in Wind Farm Control: Modelling and Multi-Objective Optimization Through Yaw-Based Wake Steering
Abstract
:1. Introduction
2. Control Strategies for Wind Farms: Background and Objectives
2.1. Wake Physics as a Basis for Control Strategy Design
- The near-wake region extends approximately 2–4 rotor diameters downstream of the turbine. This region is strongly influenced by the turbine’s shape and design, leading to a complex, non-uniform three-dimensional flow pattern.
- The far-wake region develops further downstream, where the influence of the turbine’s specific geometry diminishes. In this region, the mean flow characteristics can be estimated based on overall parameters such as thrust, power output, and prevailing inflow conditions.
2.2. Wind Turbine and Wind Farm Control Overview
2.2.1. Control Systems and Operating Principles
- A supervisory controller for each wind turbine;
- A dynamic controller for the different subsystems of each wind turbine.
2.2.2. Wind Farm Control Strategies
2.3. Control Objectives: Achievements and Opportunities
- Increasing energy extraction: In recent evaluations comprising both academic and industrial experts [17], increased energy production is given as the foremost benefit of flow control technology. This objective has been widely explored through various simulation models, aerodynamic experiments, and real-world field assessments, offering quantifiable gains in annual energy production (AEP) and revenue. Predicted gains vary widely based on factors like turbine technology, site conditions, and resource specifics. Confidence in predicted gains hinges on the complexity of WF flow models, sensor accuracy, and data analysis sophistication.
- Reducing structural loading: Flow control in WFs has the potential to mitigate structural loading on turbines by reducing local wake-added turbulence and redirecting wakes. Fewer studies focus on this goal when compared to increasing energy extraction. Reducing structural loads can have a substantial impact, potentially influencing layout, system cost distribution, and operational strategies. Evaluating the economic benefits of load reduction is complex due to its intricate links with component durability, residual lifespan, and operations and maintenance (O&M) expenses. Nonetheless, as explained by Meyers et al. [4], there are clear advantages in pre-construction, project development, and the possibility of extending the operational lifespan of existing turbines and wind farms.
- Power regulation for grid support and balancing: WF control can play an important role in grid stability and ancillary services, offering a nuanced approach. While lumping the farm into one power plant model is a common strategy, controlling wake interactions provides advantages for services requiring the regulation of active WF power outputs over longer time spans, i.e., longer than the flow time between two consecutive turbines. WF control can sustain WTs’ aggregated power within quality requirements set by transmission system operators. The implementation of flow control strategies, such as maximizing reserve power for compensation during downregulation, enhancing its value in the balancing market, minimizing fatigue loads, and supporting asset management under dynamic electricity prices, becomes crucial for efficient WF operation and revenue maximization.
- Other improvements: Ancillary services in WF control can be grouped into several categories. First, there are electrical support services like reactive power compensation and voltage regulation, which help maintain grid stability. Second, turbine protection services address issues unrelated to structural fatigue, such as preventing leading edge erosion, mitigating icing, and protecting power electronics from overheating. Finally, there are operational modelling services, which include efforts to reduce aerodynamic noise and mitigate environmental impacts, such as bird and bat collisions. Techniques such as turbine curtailment or shutdown, active pitching, and induction control are employed for these purposes. While these controls traditionally focus on individual turbines, their integration into a multi-objective WF control optimization can enhance overall performance, profitability, and environmental impact. Moreover, the integration of hybrid WFs [19], which produce both electricity for the grid and green hydrogen, is an emerging area of interest that can further enhance the sustainability and versatility of wind energy systems.
3. From Open-Loop to Closed-Loop Control
3.1. Open-Loop Control: A Standard Approach
3.2. Developments on Closed-Loop Control
- Internal model: At the core of closed-loop control is the internal model, which extrapolates and predicts the future behaviour of the WF based on possible control actions. Steady-state models and dynamic engineering models serve as internal models, capturing the essential first principles necessary for predicting wake behaviour and turbine interactions. More detailed models enable comprehensive system simulations, while simplified versions facilitate controller or estimator design, with the performance of the controlled system validated against the complete model (simulator).
- Estimation or data assimilation: The accurate awareness of the WF’s current state is crucial for effective closed-loop control. Estimation techniques, such as Kalman filters, are employed to combine available measurement data with the internal model, providing real-time insights into the flow field within the WF.
- Model calibration and adaptation: The continuous refinement of the internal model is realized through calibration and adaptation. These processes involve updating the first-principle model using real-time data, ensuring that it accurately represents the flow and turbine dynamics within the WF.
- Robust decision-making: The closed-loop control strategy relies on a robust decision-making process that optimizes actuator inputs over a specified horizon. The objective function, conditioned by the data-calibrated internal model, defines the best control parameters for each WT. Receding-horizon control is commonly employed, where decisions are made iteratively based on the evolving state of the WF.
3.3. Note on Model-Free Control Approaches
4. Challenges of Numerical Modelling and Fatigue Prediction
4.1. Wake Modelling
4.2. Aero-Structural Modelling
4.3. Fatigue Prediction: Towards Reliable Multi-Objective Optimization
4.3.1. Fatigue Damage Assessment
4.3.2. Instrumentation for an Improved Assessment
4.4. Digital Twins in Wind Farm Control: Beyond the Buzzword
5. Multi-Objective Optimization Through Yaw-Based Wake Steering
5.1. Balancing Power Output and Structural Loads
5.2. Economic Optimization and Lifetime Extension
5.3. Integrating AI for Enhanced Control
5.4. Literature Synthesis: Optimization and Modelling Approaches
6. Beyond Yaw-Based Steering: Emerging Wake Control Approaches
6.1. Wake Breakup and Mixing
6.2. Rotor Tilting
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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---|---|---|---|
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He et al. (2022) [76,80] | [Support vector regression (SVR) for power and fatigue prediction in [80].] Single cost function Two-turbine setup | FAST.farm; OpenFAST. | Mid |
Guilloré et al. (2024) [82] | N.A. [Surrogate model proposed for control optimization.] | FAST.farm; OpenFAST. | Mid |
Braunbehrens et al. (2024) [78] | Single cost function 3 aligned turbines WF—profit (EUR) gains: Max. power: 107%; max. profit: 125% | Floris; [+ Static test campaign training data.] | Low/High |
Requate et al. (2024) [79] | Multiple cost functions (VIOLA method, genetic particle swarm algorithm, interior point algorithm from IPOPT) | Aeroelastic model. [85] | Mid |
Liew et al. (2024) [83] | Single cost function Gradient-free COBYLA algorithm 3 × 3 WF—max. reported gains: Power: 4.1%; fatigue load reduction: 10% | HAWC2Farm + HAWC2 to train the model; Pywake in optimization. | Mid/Low |
Lucas Frutuoso et al. (2024) [77] | Multiple cost functions Direct multi-search algorithm Tocha WF (5 WTs)—max. reported gains: Power: 4.6%; Fatigue reduction: 5.7% (blade) and 84% (tower) | FLORIS; CCBlade (BEM). | Low |
Yang et al. (2025) [84] | Multiple cost functions (double-stage optim) Bayesian machine learning 5-turbine row and 16-turbine WF Max. reported gains: Lifetime extension of 8% at the expense of less than 2% power reduction | ANN Yawed Wake Model; SOWFA (RANS/ALM coupling model). | High |
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Lucas Frutuoso, T.R.; Castro, R.; Pereira, R.B.S.; Moutinho, A. Advancements in Wind Farm Control: Modelling and Multi-Objective Optimization Through Yaw-Based Wake Steering. Energies 2025, 18, 2247. https://doi.org/10.3390/en18092247
Lucas Frutuoso TR, Castro R, Pereira RBS, Moutinho A. Advancements in Wind Farm Control: Modelling and Multi-Objective Optimization Through Yaw-Based Wake Steering. Energies. 2025; 18(9):2247. https://doi.org/10.3390/en18092247
Chicago/Turabian StyleLucas Frutuoso, Tiago R., Rui Castro, Ricardo B. Santos Pereira, and Alexandra Moutinho. 2025. "Advancements in Wind Farm Control: Modelling and Multi-Objective Optimization Through Yaw-Based Wake Steering" Energies 18, no. 9: 2247. https://doi.org/10.3390/en18092247
APA StyleLucas Frutuoso, T. R., Castro, R., Pereira, R. B. S., & Moutinho, A. (2025). Advancements in Wind Farm Control: Modelling and Multi-Objective Optimization Through Yaw-Based Wake Steering. Energies, 18(9), 2247. https://doi.org/10.3390/en18092247