ADAPTIVE WIND POWER FORECASTING BASED ON ONLINE SELECTIVE ENSEMBLE JUST-IN-TIME LEARNING

被引:0
|
作者
Li, Yunlong [1 ,2 ]
Jin, Huaiping [1 ]
Fan, Shouyuan [2 ]
Jin, Huaikang [3 ]
Wang, Bin [1 ]
机构
[1] Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming,650500, China
[2] China Energy Engineering Group Yunnan Electric Power Design Institute Co.,Ltd., Kunming,650051, China
[3] Huaneng Renewables Co.,Ltd. Yunnan Branch, Kunming,650000, China
来源
关键词
Just-in-time learning - Online selective ensemble - Power - Power data - Process state - Process state identification - Selective ensembles - State identification - Statistical hypothesis testing - Wind power forecasting;
D O I
10.19912/j.0254-0096.tynxb.2023-0913
中图分类号
学科分类号
摘要
Wind power forecasting can provide effective guidance information for grid connection and optimal scheduling of wind power, and plays an important role in the development and utilization of wind energy. However,accurate wind power forecasting often encounters great challenges due to the inherent intermittency and randomness of wind power. Moreover,the characteristics of wind power data changes over time due to the factors such as seasonality,climate and equipment aging,which causes performance degradation of offline wind power forecasting models. To address these issues,an adaptive wind power forecasting method based on online selective ensemble just-in-time learning(OSEJIT)is proposed. Firstly,we construct a JIT base model library,incorporating similarity and learner perturbation techniques to effectively handle wind power’s nonlinearity and time-varying behavior,ensuring reliable forecasting. Secondly,we establish metrics for ensemble effectiveness,utilizing the Friedman test for diversity and prediction accuracy for model selection during online prediction. Subsequently,the final prediction is obtained through adaptive weighted ensemble based on the recent prediction performance of the individual models. To update the base model library while minimizing frequent model reconstruction and resource consumption,a state identification method based on KL divergence is employed. The effectiveness and superiority of the proposed method are validated through a real wind power data set. © 2024 Science Press. All rights reserved.
引用
收藏
页码:487 / 496
相关论文
共 50 条
  • [21] Online Batch Process Monitoring Based on Just-in-Time Learning and Independent Component Analysis
    王丽
    侍洪波
    JournalofDonghuaUniversity(EnglishEdition), 2016, 33 (06) : 944 - 948
  • [22] Just-in-time learning and CE
    Snyder, JR
    LABORATORY MEDICINE, 1998, 29 (09) : 518 - 518
  • [23] Forecasting of solar irradiance with just-in-time modeling
    Suzuki, T., 1600, John Wiley and Sons Inc (182):
  • [24] Forecasting of Solar Irradiance with Just-In-Time Modeling
    Suzuki, Takanobu
    Goto, Yusuke
    Terazono, Takahiro
    Wakao, Shinji
    Oozeki, Takashi
    ELECTRICAL ENGINEERING IN JAPAN, 2013, 182 (04) : 19 - 28
  • [25] An improved hybrid model for wind power forecasting through fusion of deep learning and adaptive online learning
    Zhao, Xiongfeng
    Liu, Hai Peng
    Jin, Huaiping
    Cao, Shan
    Tang, Guangmei
    COMPUTERS & ELECTRICAL ENGINEERING, 2024, 120
  • [26] A selective, just-in-time aspect weaver
    Sato, Y
    Chiba, S
    Tatsubori, M
    GENERATIVE PROGRAMMING AND COMPONENT ENGINEERING 2003, PROCEEDINGS, 2003, 2830 : 189 - 208
  • [27] An investigation of online and offline learning models for online Just-in-Time Software Defect Prediction
    Cabral, George G.
    Minku, Leandro L.
    Oliveira, Adriano L. I.
    Pessoa, Dinaldo A.
    Tabassum, Sadia
    EMPIRICAL SOFTWARE ENGINEERING, 2023, 28 (05)
  • [28] A hybrid wind power forecasting approach based on Bayesian model averaging and ensemble learning
    Wang, Gang
    Jia, Ru
    Liu, Jinhai
    Zhang, Huaguang
    RENEWABLE ENERGY, 2020, 145 : 2426 - 2434
  • [29] Online Deep Hybrid Ensemble Learning for Time Series Forecasting
    Saadallah, Amal
    Jakobs, Matthias
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES: RESEARCH TRACK, ECML PKDD 2023, PT V, 2023, 14173 : 156 - 171
  • [30] Wind power forecasting based on time series and machine learning models
    Park, Sujin
    Lee, Jin-Young
    Kim, Sahm
    KOREAN JOURNAL OF APPLIED STATISTICS, 2021, 34 (05) : 723 - 734