Wang Ding, Xu Min, Guangming Zhu, Luo Futao, Gao Jiaxin, Chen Yuntian
State Grid Hunan Electric Power Company Limited Research Institute, Changsha, People's Republic of China.
State Grid Hunan Electric Power Company Limited, Changsha, People's Republic of China.
Sci Rep. 2025 Feb 13;15(1):5352. doi: 10.1038/s41598-025-89398-y.
Wind power constitutes a pivotal component in the quest for carbon neutrality, serving as a principal renewable energy source. Enhancing the accuracy of wind power forecasting facilitates more efficient exploitation of this resource, with deep-learning models, notably Long Short-Term Memory (LSTM), proving effective in advancing forecasting capabilities within this domain. Nevertheless, the accuracy of wind power forecasting is undermined by the inaccurate forecasted wind speed, which diminish the reliability of such predictions. To address this challenge, we propose the model "LSTM with Adaptive Wind Speed Calibration (C-LSTM)", which integrates a mechanism into LSTM that autonomously calibrates forecasted wind speed during the training and inference phase. Specifically, considering the inherent continuity of wind speed, C-LSTM fuses historical wind speed with forecasted wind speed using adaptive weighting parameters. This integration is harmonized with the concurrent updating of the other parameters of C-LSTM, thereby ensuring a dynamic adaptation process that bolsters the model's capacity to coordinate discrepancies between forecasted and actual wind speeds. Experiments conducted across 25 distinct wind turbines have demonstrated that C-LSTM significantly outperforms LSTM in both Mean Squared Error (MSE) and accuracy metrics when the latter directly incorporates forecasted or historical wind speeds. This disparity underscores the efficacy of the adaptive wind speed calibration technique employed within the C-LSTM framework.
风力发电是实现碳中和的关键组成部分,是主要的可再生能源。提高风力发电预测的准确性有助于更有效地开发这一资源,深度学习模型,特别是长短期记忆(LSTM)模型,已被证明能有效提升该领域的预测能力。然而,预测风速不准确会削弱风力发电预测的准确性,降低此类预测的可靠性。为应对这一挑战,我们提出了“具有自适应风速校准的LSTM(C-LSTM)”模型,该模型在LSTM中集成了一种机制,可在训练和推理阶段自动校准预测风速。具体而言,考虑到风速的固有连续性,C-LSTM使用自适应加权参数将历史风速与预测风速融合。这种融合与C-LSTM其他参数的同步更新相协调,从而确保了一个动态适应过程,增强了模型协调预测风速与实际风速之间差异的能力。在25个不同风力涡轮机上进行的实验表明,当LSTM直接纳入预测风速或历史风速时,C-LSTM在均方误差(MSE)和准确率指标上均显著优于LSTM。这种差异凸显了C-LSTM框架中采用的自适应风速校准技术的有效性。