Small-Sample Solar Power Interval Prediction Based on Instance-Based Transfer Learning

被引:8
|
作者
Long, Huan [1 ]
Geng, Runhao [1 ]
Sheng, Wanxing [2 ]
Hui, Hui [2 ]
Li, Rui [2 ]
Gu, Wei [1 ]
机构
[1] Southeast Univ, Sch Elect Engn, Nanjing 210096, Peoples R China
[2] China Elect Power Res Inst, Beijing Key Lab Distribut Transform, Beijing 100192, Peoples R China
关键词
Predictive models; Training; Data models; Task analysis; Boosting; Training data; Prediction algorithms; Small-sample scenario; interval prediction; solar power prediction; transfer learning; TrAdaBoost; REGRESSION;
D O I
10.1109/TIA.2023.3284776
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In the context of high photovoltaic (PV) penetration, high-quality solar power interval prediction is important for grid system operation. However, in some cases, sufficient amount of data are not available to train a reliable prediction model, especially for new installed PV stations. To tackle this problem, this article proposes a novel small-sample interval prediction model with improved TrAdaBoost (SIPTAB) method for solar power prediction. Sample weight is designed to select the important samples from other data sources. First, Extreme Learning Machine (ELM) with Direct Quantile Regression (DQR) is employed as the base predictor to construct interval boundaries. Second, an improved TrAdaBoost algorithm is proposed to iteratively construct a boosting ensemble interval predictor to enhance the prediction performance with limited amount of data. Third, a two-stage model training strategy is introduced in the architecture to optimize the boosting ensemble interval predictor and further improve prediction quality. Comprehensive experiments based on realistic solar power data are conducted to confirm the superiority of proposed model.
引用
收藏
页码:5283 / 5292
页数:10
相关论文
共 50 条
  • [31] Modeling and Optimizing Resource-Constrained Instance-Based Transfer Learning
    Askarizadeh, Mohammad
    Hussien, Mostafa
    Morsali, Alireza
    Kim Khoa Nguyen
    2022 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2022), 2022, : 6366 - 6371
  • [32] An optimization algorithm based on active and instance-based learning
    Fuentes, O
    Solorio, T
    MICAI 2004: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2004, 2972 : 242 - 251
  • [33] High-beta disruption prediction study on HL-2A with instance-based transfer learning
    Zhong, Y.
    Zheng, W.
    Chen, Z. Y.
    Yan, W.
    Xia, F.
    Yu, L. M.
    Xue, F. M.
    Shen, C. S.
    Ai, X. K.
    Yang, Z. Y.
    Yu, Y. L.
    Nie, Z. S.
    Ding, Y. H.
    Liang, Y. F.
    Chen, Z. P.
    NUCLEAR FUSION, 2024, 64 (09)
  • [34] Precise Temperature Prediction for Small-Sample Fiber Optic Spectra Based on Deep Learning
    Zhang, Yin
    Wang, Jian
    Xu, Zhiyuan
    Ren, Peng
    Li-Bo, Yuan
    IEEE PHOTONICS TECHNOLOGY LETTERS, 2024, 36 (24) : 1397 - 1400
  • [35] Radar Moving Target Detection Based on Small-Sample Transfer Learning and Attention Mechanism
    Zhu, Jiang
    Wen, Cai
    Duan, Chongdi
    Wang, Weiwei
    Yang, Xiaochao
    REMOTE SENSING, 2024, 16 (22)
  • [36] A cooperative coevolutionary algorithm for instance selection for instance-based learning
    Nicolás García-Pedrajas
    Juan Antonio Romero del Castillo
    Domingo Ortiz-Boyer
    Machine Learning, 2010, 78 : 381 - 420
  • [37] A cooperative coevolutionary algorithm for instance selection for instance-based learning
    Garcia-Pedrajas, Nicolas
    Antonio Romero del Castillo, Juan
    Ortiz-Boyer, Domingo
    MACHINE LEARNING, 2010, 78 (03) : 381 - 420
  • [38] Prototype Selection for Multilabel Instance-Based Learning
    Filippakis, Panagiotis
    Ougiaroglou, Stefanos
    Evangelidis, Georgios
    INFORMATION, 2023, 14 (10)
  • [39] Instance-based Learning for Knowledge Base Completion
    Cui, Wanyun
    Chen, Xingran
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35, NEURIPS 2022, 2022,
  • [40] Locally linear reconstruction for instance-based learning
    Kang, Pilsung
    Cho, Sungzoon
    PATTERN RECOGNITION, 2008, 41 (11) : 3507 - 3518