Transferable wind power probabilistic forecasting based on multi-domain adversarial networks

被引:12
作者
Dong, Xiaochong [1 ]
Sun, Yingyun [1 ]
Dong, Lei [1 ]
Li, Jian [2 ]
Li, Yan [2 ]
Di, Lei [3 ]
机构
[1] North China Elect Power Univ, Dept Elect Engn, Beijing 102206, Peoples R China
[2] China Elect Power Res Inst, Artificial Intelligence Applicat Res Dept, Beijing 100192, Peoples R China
[3] State Grid Gansu Elect Power Co, Elect Power Res Inst, Lanzhou 730070, Peoples R China
关键词
Transfer learning; Wind power; Probabilistic forecasting; Domain adaption; Incremental learning; NEURAL-NETWORK; PREDICTION;
D O I
10.1016/j.energy.2023.129496
中图分类号
O414.1 [热力学];
学科分类号
摘要
Due to the limited availability of historical data, forecasting the wind power of newly-built wind farms poses a significant challenge. Transfer learning methods offer a potential solution by transferring knowledge from the source domain to the target domain, thereby reducing the data requirements for wind power forecasting. However, the difference in dataset distribution between the source and target domains causes domain shift. To address this issue, we propose a multi-domain adversarial network (MDAN). MDAN uses multi-domain datasets for adversarial learning, which maps numerical weather prediction (NWP) data to an adaptive latent space, thereby reducing domain shift. Additionally, we propose a data fusion-based incremental learning method to mitigate catastrophic forgetting. Through comprehensive case studies, MDAN provides accurate short-term wind power probabilistic forecasts in zero-shot learning. The incremental learning method enhances forecast accuracy in few-shot learning. Moreover, visualization analysis using t-stochastic neighbor embedding (t-SNE) shows that MDAN successfully reduces the domain shift between the source and target domains.
引用
收藏
页数:11
相关论文
共 46 条
[1]   Advanced Deep Learning Approach for Probabilistic Wind Speed Forecasting [J].
Afrasiabi, Mousa ;
Mohammadi, Mohammad ;
Rastegar, Mohammad ;
Afrasiabi, Shahabodin .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2021, 17 (01) :720-727
[2]   Spatio-temporal probabilistic forecasting of wind power for multiple farms: A copula-based hybrid model [J].
Arrieta-Prieto, Mario ;
Schell, Kristen R. .
INTERNATIONAL JOURNAL OF FORECASTING, 2022, 38 (01) :300-320
[3]   Probabilistic Wind Power Forecasting Approach via Instance-Based Transfer Learning Embedded Gradient Boosting Decision Trees [J].
Cai, Long ;
Gu, Jie ;
Ma, Jinghuan ;
Jin, Zhijian .
ENERGIES, 2019, 12 (01)
[4]   Data-augmented sequential deep learning for wind power forecasting [J].
Chen, Hao ;
Birkelund, Yngve ;
Zhang, Qixia .
ENERGY CONVERSION AND MANAGEMENT, 2021, 248
[5]   Wind Power Forecasts Using Gaussian Processes and Numerical Weather Prediction [J].
Chen, Niya ;
Qian, Zheng ;
Nabney, Ian T. ;
Meng, Xiaofeng .
IEEE TRANSACTIONS ON POWER SYSTEMS, 2014, 29 (02) :656-665
[6]   Probabilistic forecasting with temporal convolutional neural network [J].
Chen, Yitian ;
Kang, Yanfei ;
Chen, Yixiong ;
Wang, Zizhuo .
NEUROCOMPUTING, 2020, 399 :491-501
[7]   Spatio-temporal Convolutional Network Based Power Forecasting of Multiple Wind Farms [J].
Dong, Xiaochong ;
Sun, Yingyun ;
Li, Ye ;
Wang, Xinying ;
Pu, Tianjiao .
JOURNAL OF MODERN POWER SYSTEMS AND CLEAN ENERGY, 2022, 10 (02) :388-398
[8]  
Ganin Y, 2016, J MACH LEARN RES, V17
[9]   Strictly proper scoring rules, prediction, and estimation [J].
Gneiting, Tilmann ;
Raftery, Adrian E. .
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2007, 102 (477) :359-378
[10]   The Use of Probabilistic Forecasts Applying Them in Theory and Practice [J].
Haupt, Sue Ellen ;
Garcia Casado, Mayte ;
Davidson, Michael ;
Dobschinski, Jan ;
Du, Pengwei ;
Lange, Matthias ;
Miller, Timothy ;
Mohrlen, Corinna ;
Motley, Amber ;
Pestana, Rui ;
Zack, John .
IEEE POWER & ENERGY MAGAZINE, 2019, 17 (06) :46-57