Machine-learning-based estimate of the wind speed over complex terrain using the long short-term memory (LSTM) recurrent neural network

article
Autores

Leme Beu, Cássia Maria

Landulfo, Eduardo

Data de Publicação

27 de junho de 2024

Resumo

Abstract. Accurate estimation of the wind speed profile is crucial for a range of activities such as wind energy and aviation. The power law and the logarithmic-based profiles have been widely used as universal formulas to extrapolate the wind speed profile. However, these traditional methods have limitations in capturing the complexity of the wind flow, mainly over complex terrain. In recent years, the machine-learning techniques have emerged as a promising tool for estimating the wind speed profiles. In this study, we used the long short-term memory (LSTM) recurrent neural network and observational lidar datasets from three different sites over complex terrain to estimate the wind profile up to 230 m. Our results showed that the LSTM outperformed the power law as the distance from the surface increased. The coefficient of determination (R2) was greater than 90 % up to 100 m for input variables up to a 40 m height only. However, the performance of the model improved when the 60 m wind speed was added to the input dataset. Furthermore, we found that the LSTM model trained on one site with 40 and 60 m observational data and when applied to other sites also outperformed the power law. Our results show that the machine-learning techniques, particularly LSTM, are a promising tool for accurately estimating the wind speed profiles over complex terrain, even for short observational campaigns.

Citação

BibTeX
@online{beu,_cássia_maria2024,
  author = {Beu, Cássia Maria, Leme and Eduardo , Landulfo},
  title = {Machine-learning-based estimate of the wind speed over
    complex terrain using the long short-term memory (LSTM) recurrent
    neural network},
  volume = {9},
  number = {6},
  date = {2024-06-27},
  doi = {10.5194/wes-9-1431-2024},
  langid = {pt-BR},
  abstract = {Abstract. Accurate estimation of the wind speed profile is
    crucial for a range of activities such as wind energy and aviation.
    The power law and the logarithmic-based profiles have been widely
    used as universal formulas to extrapolate the wind speed profile.
    However, these traditional methods have limitations in capturing the
    complexity of the wind flow, mainly over complex terrain. In recent
    years, the machine-learning techniques have emerged as a promising
    tool for estimating the wind speed profiles. In this study, we used
    the long short-term memory~(LSTM) recurrent neural network and
    observational lidar datasets from three different sites over complex
    terrain to estimate the wind profile up to 230 m. Our results showed
    that the LSTM outperformed the power law as the distance from the
    surface increased. The coefficient of determination~(R2) was greater
    than 90 \% up to 100 m for input variables up to a 40 m height only.
    However, the performance of the model improved when the 60 m wind
    speed was added to the input dataset. Furthermore, we found that the
    LSTM model trained on one site with 40~and 60 m observational data
    and when applied to other sites also outperformed the power law. Our
    results show that the machine-learning techniques, particularly
    LSTM, are a promising tool for accurately estimating the wind speed
    profiles over complex terrain, even for short observational
    campaigns.}
}
Por favor, cite este trabalho como:
Beu, Cássia Maria, Leme, and Landulfo Eduardo. 2024. “Machine-learning-based estimate of the wind speed over complex terrain using the long short-term memory (LSTM) recurrent neural network.” Wind Energy Science. June 27, 2024. https://doi.org/10.5194/wes-9-1431-2024.