Article, 2024

Bayesian averaging-enabled transfer learning method for probabilistic wind power forecasting of newly built wind farms

Applied Energy, ISSN 0306-2619, 1872-9118, Volume 355, Page 122185, 10.1016/j.apenergy.2023.122185

Contributors

Hu, Jiaxiang [1] Hu, Wei-Hao 0000-0002-7019-7289 [1] Cao, Di (Corresponding author) [1] Huang, Yuehui [2] Chen, Jianjun [1] Li, Yahe [3] Chen, Zhe 0000-0003-3404-6974 [4] Blaabjerg, Frede 0000-0001-8311-7412 [4]

Affiliations

  1. [1] University of Electronic Science and Technology of China
  2. [NORA names: China; Asia, East];
  3. [2] State Grid Corporation of China (China)
  4. [NORA names: China; Asia, East];
  5. [3] Fudan University
  6. [NORA names: China; Asia, East];
  7. [4] Aalborg University
  8. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

This paper proposes a technique for the probabilistic wind power forecasting (WPF) of a newly built wind farm (NWF) using a limited amount of historical data. First, the state-of-the-art Transformer network is employed to capture the power generation pattern of different wind farms (WFs) based on abundant historical training samples. Then, the Bayesian averaging regression method is applied to transfer the learned power generation pattern to the NWF by assigning proper weights to the WPF results of different WFs. This enables the proposed method to yield accurate NWF power predictions utilizing a limited amount of historical data. The Bayesian characteristics further enable the quantification of multiple uncertainties in forecasting results that may be essential for the NWF operator when the input is uncertain. Comprehensive tests were also performed by employing other deterministic and probabilistic WPF methods using field data. By comparing the results, the proposed method is demonstrated to produce accurate forecasting results with sparse historical data. Moreover, the uncertainties of outcomes are quantified, and acceptable performance is achieved.

Keywords

Bayesian, Bayesian characteristics, NWF, acceptable performance, accurate forecasting results, characteristics, comprehension test, data, farms, field, field data, forecasting, forecasting results, generation patterns, historical data, historical training samples, input, learning methods, method, multiple uncertainties, network, operation, outcomes, patterns, performance, power, power forecasting, power generation patterns, power prediction, prediction, probabilistic wind power forecasting, quantification, regression method, results, samples, state-of-the-art, state‐of‐the‐art transformer network, technique, test, training samples, transfer learning method, transformer network, uncertainty, uncertainty of outcome, weight, wind, wind farms, wind power forecasting, wind power forecasting results

Funders

  • China Postdoctoral Science Foundation

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