中国电力 ›› 2026, Vol. 59 ›› Issue (5): 176-182.DOI: 10.11930/j.issn.1004-9649.202510007
• 新能源与储能 • 上一篇
收稿日期:2025-10-09
修回日期:2026-04-17
发布日期:2026-05-15
出版日期:2026-05-28
作者简介:基金资助:
ZHAO Jun(
), ZHANG Shifeng(
), SONG Jinge(
)
Received:2025-10-09
Revised:2026-04-17
Online:2026-05-15
Published:2026-05-28
Supported by:摘要:
现有风电功率预测大多依赖数据驱动或物理驱动的单一方法,少有研究将物理模型与数据驱动相结合,而这两种方法之间存在显著的互补潜力。建立了基于K均值聚类、经验模态分解与并行加权长短期记忆网络的数据驱动模型,并构建了融合物理驱动与数据驱动的风电场预测方法。以山西某风电场的实测数据为案例进行验证,所提物理数据融合方法的预测精度比纯数据驱动方法高21.67%,比基于经验尾流物理模型驱动方法高35.17%。该结果证实了物理数据融合方法在风电场功率预测中具有一定优越性及可靠性,能够满足风电场功率预测精度的要求。
赵军, 张世锋, 宋金鸽. 物理数据融合的风电场功率预测[J]. 中国电力, 2026, 59(5): 176-182.
ZHAO Jun, ZHANG Shifeng, SONG Jinge. Wind farm power forecasting by physical data fusion[J]. Electric Power, 2026, 59(5): 176-182.
| 模型 | ERMS | EMA |
| 物理驱动 | 18.024 8 | 12.648 9 |
| 数据驱动 | 24.197 6 | 14.302 5 |
| 融合模型 | 12.899 0 | 8.988 2 |
表 1 不同方法在训练集上的误差比较
Table 1 Comparison of errors among different methods on the training set 单位:MW
| 模型 | ERMS | EMA |
| 物理驱动 | 18.024 8 | 12.648 9 |
| 数据驱动 | 24.197 6 | 14.302 5 |
| 融合模型 | 12.899 0 | 8.988 2 |
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