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基于优化VMD模态二次分解和TCN-BiGRU组合模型的短期风电功率预测

陈旭东, 卞礼杰, 马刚, 陈浩, 詹孝升, 彭乐瑶   

  1. 南京师范大学, 210023
  • 收稿日期:2025-07-03 修回日期:2025-09-04
  • 基金资助:
    江苏省碳达峰碳中和科技创新专项资金(产业前与关键核心技术攻关)重点项目“新能源发电自组网运行与控制关键技术研发”(BE2022003)

Short-term wind power prediction based on optimized VMD double modal decomposition and TCN-BiGRU

  1. , 210023,
  • Received:2025-07-03 Revised:2025-09-04
  • Supported by:
    Key Project of Jiangsu Province Carbon Peak and Carbon Neutrality Science and Technology Innovation Special Fund (Pre-Industry and Core Technology Research): Research and Development of Key Technologies for Autonomous Networking Operation and Control of New Energy Power Generation(BE2022003)

摘要: 提升风电功率预测的准确性对于保障电网安全与稳定运行至关重要。然而,风电具有高度的随机性和波动性,传统预测方法在特征提取和建模能力方面仍存在不足。为此,本文提出一种融合完全自适应噪声集合经验模态分解(CEEMDAN)、蜣螂优化算法(DBO)、变分模态分解(VMD)、时间卷积网络(TCN)与双向门控循环单元(BiGRU)的短期风电功率预测模型(CEEMDAN-DBO-VMD-TCN-BiGRU)。首先,利用CEEMDAN对原始风电功率数据进行分解,提取内在模态函数(IMF)以捕捉时间序列的关键特征;随后,通过样本熵与K-means聚类将IMF划分为高频、中频和低频分量,选取高频分量采用DBO优化的VMD进行二次分解,以提高特征提取效果并降低计算复杂度。所有分量经归一化处理后输入TCN-BiGRU组合模型进行预测,各分量预测结果经叠加与反归一化处理获得最终预测值。实验结果显示,本文模型均方根误差为6.47 MW,平均绝对误差为4.30MW,平均绝对百分比误差为6.28%,决定系数为98.62%,相较对比模型均取得最优预测精度,验证了所提模型的有效性、稳定性和应用潜力。

关键词: 风电功率预测, CEEMDAN, 样本熵, K-means聚类, 时间卷积网络, 双向门控循环单元

Abstract: Improving the accuracy of wind power forecasting is critical to ensuring the safe and stable operation of power grids. However, due to the high randomness and volatility of wind energy, traditional forecasting methods often struggle with limited feature extraction and modeling capabilities. To address these challenges, this study proposes a novel short-term wind power forecasting model, termed CEEMDAN-DBO-VMD-TCN-BiGRU, which integrates Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN), Dung Beetle Optimization (DBO), Variational Mode Decomposition (VMD), Temporal Convolutional Network (TCN), and Bidirectional Gated Recurrent Unit (BiGRU). First, CEEMDAN is employed to decompose the original wind power series into intrinsic mode functions (IMFs), capturing key temporal features. The IMFs are then classified into high-, medium-, and low-frequency components using sample entropy and K-means clustering. High-frequency components are further decomposed via DBO-optimized VMD to enhance feature representation and reduce computational complexity. All components are normalized and fed into the TCN-BiGRU hybrid network for prediction. The final forecast is obtained by aggregating the individual predicted components and applying inverse normalization. Experimental results demonstrate that the proposed model achieves a root mean square error (RMSE) of 6.47 MW, a mean absolute error of 4.30 MW, a mean absolute percentage error of 6.28%, and a coefficient of determination of 98.62%, outperforming benchmark models and confirming its effectiveness, robustness, and practical applicability.

Key words: wind power forecast, CEEMDAN, sample entropy, K-means, TCN, BiGRU