Hybrid Energy Storage Power Allocation Strategy for Stabilizing Wind Power Fluctuations

Authors

  • Jing Shang
  • Ying Jia

DOI:

https://doi.org/10.54097/ije.v3i2.007

Keywords:

Mixed Energy Storage, Model Predictive Control, Variational Mode Decomposition, Wind Power Stabilized, Wind Power Consumption

Abstract

In order to solve the problem of energy shortage, renewable energy such as wind power has developed rapidly worldwide. However, due to its time-varying and uncertain nature, wind power is prone to local fluctuations and operational safety hazards when connected to the power grid. In response to the stable grid connection problem of wind power generation, a hybrid energy storage system is proposed A method was proposed to achieve smooth power fluctuations in wind power generation using a model, and a charging and discharging control and allocation method for energy storage was proposed. Firstly, the preliminary power of hybrid energy storage was obtained using the model predictive control method, Then, an adaptive variational mode decomposition method was used to achieve energy distribution between batteries and supercapacitors. Finally, the measured data of a 100MW wind power plant in Xinjiang was analyzed as an example. The proposed method has been validated to not only achieve reasonable power allocation between hybrid energy storage systems, but also effectively reduce the impact of wind power generation on the power grid, achieving long-term safe operation of hybrid energy storage systems.

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References

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Published

25-09-2023

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Section

Articles

How to Cite

Shang, J., & Jia, Y. (2023). Hybrid Energy Storage Power Allocation Strategy for Stabilizing Wind Power Fluctuations. International Journal of Energy, 3(2), 26-31. https://doi.org/10.54097/ije.v3i2.007