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张新生

教授   博士生导师  硕士生导师

个人信息 更多+
  • 教师英文名称: zhangxinsheng
  • 教师拼音名称: zhangxinsheng
  • 所在单位: 管理学院
  • 学历: 研究生(博士)毕业
  • 办公地点: 教学大楼828
  • 性别: 男
  • 学位: 博士学位
  • 在职信息: 在职
  • 主要任职: 西安建筑科技大学,管理学院,副院长
  • 其他任职: CNAIS理事 中国系统工程学会会员 陕西省电子学会图形图像专委会委员 CCF会员

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论文成果

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Physics-constrained generative augmentation and hierarchical decomposition driven wind power forecasting framework under extreme weather conditions

发布时间:2026-05-25
点击次数:
影响因子:
9.4
DOI码:
10.1016/j.energy.2026.141322
发表刊物:
Energy
关键字:
Wind power forecastingExtreme weatherGenerative adversarial networkSignal decompositionDeep learning
摘要:
Accurate wind power forecasting under extreme weather remains challenging due to sample scarcity, strong non-stationarity, and multi-scale temporal coupling. This study develops a structured forecasting system integrating physics-constrained data augmentation, complexity-guided hierarchical signal decomposition, and adaptively optimized deep learning. A Physics-Constrained Real-World Time Series Generative Adversarial Network (PC-RTSGAN) embeds power curve constraints, icing derating mechanisms, and temporal consistency rules into the generation process to produce physically plausible synthetic samples. A three-level Decomposition strategy combining Improved Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (ICEEMDAN), Adaptive Multi-Scale Weighted Permutation Entropy (AMWPE)-guided clustering, and Adaptive Variational Mode Decomposition (AVMD) progressively extracts multi-scale features from non-stationary power series. A hybrid model integrating multi-order Kolmogorov-Arnold Network (MKAN) with TimeXer captures nonlinear feature interactions and endogenous-exogenous variable dependencies, with hyperparameters configured via Phototropic Growth Algorithm (PGA). Validated on a wind farm in Inner Mongolia, China, the framework achieves Normalized Mean Absolute Error (NMAE) of 0.0144 and Normalized Root Mean Square Error (NRMSE) of 0.0225 for cold wave events, and NMAE of 0.0164 and NRMSE of 0.0281 for strong wind events, outperforming all comparative models. These results are encouraging, though the validation remains limited to a single wind farm and broader cross-regional verification is needed.
论文类型:
期刊论文
论文编号:
141322
学科门类:
管理学
文献类型:
J
卷号:
357
ISSN号:
1873-6785
是否译文:
发表时间:
2026-01-01
收录刊物:
SCI
发布期刊链接:
https://doi.org/10.1016/j.energy.2026.141322