Application of BERT in Wind Power Forecasting-Teletraan's Solution in
Baidu KDD Cup 2022
- URL: http://arxiv.org/abs/2307.09248v1
- Date: Tue, 18 Jul 2023 13:28:30 GMT
- Title: Application of BERT in Wind Power Forecasting-Teletraan's Solution in
Baidu KDD Cup 2022
- Authors: Longxing Tan and Hongying Yue
- Abstract summary: We introduce the BERT model applied for Baidu KDD Cup 2022.
The daily fluctuation is added by post-processing to make the predicted results in line with daily periodicity.
Our solution achieves 3rd place of 2490 teams.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Nowadays, wind energy has drawn increasing attention as its important role in
carbon neutrality and sustainable development. When wind power is integrated
into the power grid, precise forecasting is necessary for the sustainability
and security of the system. However, the unpredictable nature and long sequence
prediction make it especially challenging. In this technical report, we
introduce the BERT model applied for Baidu KDD Cup 2022, and the daily
fluctuation is added by post-processing to make the predicted results in line
with daily periodicity. Our solution achieves 3rd place of 2490 teams. The code
is released athttps://github.com/LongxingTan/KDD2022-Baidu
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