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spostrzeżenie - Power Systems - # Power Oscillation Damping Controllers for Grid-Forming Converters

Enhancing Power System Stability through Power Oscillation Damping Controllers for Grid-Forming Converters in Modern Power Systems


Główne pojęcia
This paper investigates the performance of grid-forming power converters and proposes supplementary power oscillation damping controllers to effectively damp electromechanical oscillations in modern power systems with increased penetration of converter-interfaced generation.
Streszczenie

The paper investigates the damping capability of grid-forming (GFOR) power converters and proposes supplementary power oscillation damping (POD) controllers for the active and reactive power injections (POD-P and POD-Q) to enhance the damping of electromechanical oscillations.

Two case studies are conducted:

  1. A two-area synthetic system is used to design the POD controllers using eigenvalue-sensitivity methods. This provides fundamental insights into the effects of incorporating a droop-based GFOR and the supplementary POD controllers.

  2. The analysis is then extended to the IEEE 118-bus system to assess the performance of the designed POD controllers in a large-scale power system with high penetration of converter-interfaced generation.

The key findings are:

  • GFOR converters exhibit inherent damping capability in the inter-area frequency region, but this can be significantly improved by incorporating the proposed POD-P and POD-Q controllers.
  • POD-P controllers are generally more effective than POD-Q controllers, but the control actions of POD-P are directly linked to the primary energy source. POD-Q controllers have the advantage that their control actions are not directly linked to the energy source.
  • Using both POD-P and POD-Q controllers simultaneously achieves further improvements in damping electromechanical oscillations.
  • The design of POD controllers using eigenvalue-sensitivity methods and a small synthetic system proves effective when applied to the large-scale power system, demonstrating the potential of this approach when limited information about the power system is available.
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Statystyki
The system is operating with 100 MW flowing through the line 2-3. In the operating point, SG1 and GFOR are injecting an active power of PSG1 = PGF OR = 1350 MW.
Cytaty
"This paper investigates the performance of GFORs and supplementary POD controllers in the damping of electromechanical oscillations in modern power systems." "POD controllers in GFOR power converters have received less attention." "The work in [29] proposed the Transient Damping Method (TDM) in GFOR converters, by adding a transient damping term to the VSM scheme, which is related to the active-power injection of the device."

Głębsze pytania

How can the proposed POD controllers be extended to handle uncertainties in the power system parameters and operating conditions?

To enhance the robustness of the proposed Power Oscillation Damping (POD) controllers against uncertainties in power system parameters and operating conditions, several strategies can be employed. One effective approach is to incorporate adaptive control techniques that allow the POD controllers to adjust their parameters in real-time based on observed system behavior. This could involve using online estimation algorithms to continuously monitor system dynamics and update the controller gains accordingly. Another method is to implement robust control design principles, such as H-infinity or mu-synthesis, which explicitly account for uncertainties in system models. By designing the POD controllers with these techniques, they can maintain performance across a range of operating conditions and parameter variations, ensuring effective damping of electromechanical oscillations even in the presence of disturbances. Additionally, the use of stochastic modeling can be beneficial. By simulating various scenarios with different uncertainties in system parameters (e.g., load variations, generation mix changes), the POD controllers can be optimized to perform well under a range of conditions. This could involve Monte Carlo simulations to assess the performance of the controllers under different realizations of uncertainty, leading to a more resilient design.

What are the potential drawbacks or limitations of using the frequency imposed by the GFOR as the input signal for the POD controllers?

While using the frequency imposed by the Grid-Forming (GFOR) converters as the input signal for the POD controllers offers several advantages, such as eliminating the need for additional frequency measurements and simplifying implementation, there are notable drawbacks and limitations. One significant limitation is that the frequency signal is an output of the control algorithm rather than a direct measurement. This can introduce delays or inaccuracies in the feedback loop, particularly during transient conditions or disturbances, potentially leading to suboptimal damping performance. If the GFOR's frequency control algorithm experiences delays or is not sufficiently responsive, the POD controller may react too slowly to oscillations, reducing its effectiveness. Moreover, the reliance on the GFOR's frequency signal may limit the controller's ability to respond to oscillations that are not directly related to the GFOR's operational parameters. For instance, if external disturbances affect the system but do not significantly alter the GFOR's frequency, the POD controller may not adequately address these oscillations, leading to insufficient damping. Lastly, the design of the POD controllers based on the GFOR's frequency may not account for the interactions with other system components, particularly in large-scale systems with multiple GFORs and synchronous generators. This could result in a lack of coordination among controllers, potentially exacerbating oscillatory behavior rather than mitigating it.

Could the design methodology be further improved by considering multi-objective optimization techniques to balance the damping performance and other control objectives?

Yes, the design methodology for the POD controllers can be significantly improved by incorporating multi-objective optimization techniques. These techniques allow for the simultaneous consideration of multiple performance criteria, which is essential in modern power systems where various control objectives must be balanced. For instance, while the primary goal of the POD controllers is to enhance damping performance, other objectives such as minimizing control effort, maintaining system stability, and ensuring robustness against disturbances are equally important. Multi-objective optimization can facilitate the trade-off between these competing objectives, leading to a more holistic design approach. Techniques such as Pareto optimization can be employed, where a set of optimal solutions is generated, each representing a different balance of the objectives. This allows system operators to select a controller design that best fits their specific operational priorities and constraints. Additionally, incorporating performance metrics such as transient response time, steady-state error, and energy consumption into the optimization process can lead to more efficient and effective POD controllers. Furthermore, advanced algorithms like genetic algorithms, particle swarm optimization, or even machine learning-based approaches can be utilized to explore the design space more thoroughly. These methods can adaptively refine the controller parameters based on historical performance data, leading to continuous improvement in damping performance and overall system reliability. In summary, integrating multi-objective optimization techniques into the design of POD controllers can enhance their effectiveness and adaptability, ensuring that they meet the diverse needs of modern power systems while maintaining robust damping of electromechanical oscillations.
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