Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics
Regular Papers|更新时间:2025-11-04
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Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics
Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics
中国电机工程学会电力与能源系统学报(英文)2025年11卷第2期 页码:612-622
作者机构:
1. Key Laboratory of Modern Power System Simulation and Control & Renewable Energy Technology, Ministry of Education, Northeast Electric Power University,Jilin,China
2. Department of Electronic and Electrical Engineering, University of StrathclYde, Glasgow, United Kingdom
Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(2):612-622.
Mao Yang, Tian Peng, Wei Zhang, et al. Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics[J]. Csee journal of power and energy systems, 2025, 11(2): 612-622.
Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(2):612-622. DOI: 10.17775/CSEEJPES.2022.06640.
Mao Yang, Tian Peng, Wei Zhang, et al. Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics[J]. Csee journal of power and energy systems, 2025, 11(2): 612-622. DOI: 10.17775/CSEEJPES.2022.06640.
Abnormal Data Identification and Reconstruction Based on Wind Speed Characteristics
High availability of wind power data is the basis for wind power research
but there are a large number of abnormal data in actual collected data
which seriously affects analysis of wind power law and reduces prediction accuracy. Measured power data of wind farm are analyzed
influence of wind speed fluctuation characteristics on wind power is discussed
and abnormal points are identified for data of different wind types. The Cluster-Based Local Outlier Factor (CLOF) algorithm based on K-means is used to identify outlier abnormal points
and conditional constraints based on physical background are used to identify accumulation abnormal points. Reconstructed data segment is divided according to fluctuation of wind speed. The Bidirectional Gate Recurrent Unit (BiGRU) model with wind speed as input reconstructs fluctuation segment data
and bi-directional weighted random forest model reconstructs stationary segment data. Based on analysis of measured data of a wind farm
results show the method can effectively identify various abnormal data
and complete high-quality reconstruction of data
thereby improving accuracy of wind power prediction.