Title | Priori-guided and data-driven hybrid model for wind power forecasting |
Author | |
Corresponding Author | Liu, Guo-Ping |
Publication Years | 2022
|
DOI | |
Source Title | |
ISSN | 0019-0578
|
EISSN | 1879-2022
|
Volume | 134 |
Abstract | To overcome the high uncertainty and randomness of wind and enable the grid to optimize advance preparation, a priori-guided and data-driven hybrid method is proposed to provide accurate and reasonable wind power forecasting results. Fuzzy C-Means (FCM) clustering algorithm is used first to recognize the characteristics of the weather in different regions. Then, for the purpose of making full use of both priori information and collected measured data, a three-stage hierarchical framework is designed. First, via fuzzy inference and dimension reduction of Numerical Weather Prediction (NWP), more applicable wind speed information is obtained. Second, the accessible wind power generation patterns are served as a guide for mining the actual power curve. Third, the forecasted power is derived through the recorded data and the predictable wind conditions via data-driven model. This forecasting framework ingeniously introduces a gateway that can import priori knowledge to steer the iterative learning, thus possessing both adaptive learning ability and Volterra polynomial representation, and can present forecasted outcomes with robustness, accuracy and interpretability. Finally, a real-world dataset of a wind farm as well as an open source dataset are used to verify the performance of the proposed forecasting method. Results of the ablation analyses and comparative experiments demonstrate that the introduction of domain knowledge improves the forecasting performance.
© 2022 ISA |
Keywords | |
URL | [Source Record] |
Indexed By | |
Language | English
|
SUSTech Authorship | Corresponding
|
Funding Project | This work was supported in part by the National Natural Science Foundation of China under Grants 62173255 , 62188101 and 62073247 .
|
WOS Research Area | Automation & Control Systems
; Engineering
; Instruments & Instrumentation
|
WOS Subject | Automation & Control Systems
; Engineering, Multidisciplinary
; Instruments & Instrumentation
|
WOS Accession No | WOS:000952063400001
|
Publisher | |
EI Accession Number | 20223412613071
|
EI Keywords | Clustering Algorithms
; Electric Power Generation
; Iterative Methods
; Machine Learning
; Weather Forecasting
; Wind Power
; Wind Speed
|
ESI Classification Code | Meteorology:443
; Wind Power (Before 1993, Use Code 611 ):615.8
; Computer Theory, Includes Formal Logic, Automata Theory, Switching Theory, Programming Theory:721.1
; Artificial Intelligence:723.4
; Expert Systems:723.4.1
; Information Sources And Analysis:903.1
; Numerical Methods:921.6
|
ESI Research Field | ENGINEERING
|
Data Source | EV Compendex
|
Citation statistics |
Cited Times [WOS]:2
|
Document Type | Journal Article |
Identifier | http://kc.sustech.edu.cn/handle/2SGJ60CL/411569 |
Department | Southern University of Science and Technology |
Affiliation | 1.Department of Artificial Intelligence and Automation, School of Electrical Engineering and Automation, Wuhan University, Wuhan; 430072, China 2.Center for Control Science and Technology, Southern University of Science and Technology, Shenzhen; 518055, China |
Corresponding Author Affilication | Southern University of Science and Technology |
Recommended Citation GB/T 7714 |
Huang, Yi,Liu, Guo-Ping,Hu, Wenshan. Priori-guided and data-driven hybrid model for wind power forecasting[J]. ISA TRANSACTIONS,2022,134.
|
APA |
Huang, Yi,Liu, Guo-Ping,&Hu, Wenshan.(2022).Priori-guided and data-driven hybrid model for wind power forecasting.ISA TRANSACTIONS,134.
|
MLA |
Huang, Yi,et al."Priori-guided and data-driven hybrid model for wind power forecasting".ISA TRANSACTIONS 134(2022).
|
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