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一种结合图像处理与社区检测算法的风电异常数据清洗方法

杨巧玲 陈凯 满建樟 段佳恒 金作启

全球能源互联网(英文)2024,Vol.7Issue(3):293-312,20.
全球能源互联网(英文)2024,Vol.7Issue(3):293-312,20.DOI:10.1016/j.gloei.2024.06.001

一种结合图像处理与社区检测算法的风电异常数据清洗方法

A method for cleaning wind power anomaly data by combining image processing with community detection algorithms

杨巧玲 1陈凯 1满建樟 1段佳恒 1金作启1

作者信息

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摘要

Abstract

Current methodologies for cleaning wind power anomaly data exhibit limited capabilities in identifying abnormal data within extensive datasets and struggle to accommodate the considerable variability and intricacy of wind farm data.Consequently,a method for cleaning wind power anomaly data by combining image processing with community detection algorithms(CWPAD-IPCDA)is proposed.To precisely identify and initially clean anomalous data,wind power curve(WPC)images are converted into graph structures,which employ the Louvain community recognition algorithm and graph-theoretic methods for community detection and segmentation.Furthermore,the mathematical morphology operation(MMO)determines the main part of the initially cleaned wind power curve images and maps them back to the normal wind power points to complete the final cleaning.The CWPAD-IPCDA method was applied to clean datasets from 25 wind turbines(WTs)in two wind farms in northwest China to validate its feasibility.A comparison was conducted using density-based spatial clustering of applications with noise(DBSCAN)algorithm,an improved isolation forest algorithm,and an image-based(IB)algorithm.The experimental results demonstrate that the CWPAD-IPCDA method surpasses the other three algorithms,achieving an approximately 7.23%higher average data cleaning rate.The mean value of the sum of the squared errors(SSE)of the dataset after cleaning is approximately 6.887 lower than that of the other algorithms.Moreover,the mean of overall accuracy,as measured by the F1-score,exceeds that of the other methods by approximately 10.49%;this indicates that the CWPAD-IPCDA method is more conducive to improving the accuracy and reliability of wind power curve modeling and wind farm power forecasting.

关键词

风电机组功率曲线/异常数据清洗/社区检测/Louvain算法/数学形态学运算

Key words

Wind turbine power curve/Abnormal data cleaning/Community detection/Louvain algorithm/Mathematical morphology operation

引用本文复制引用

杨巧玲,陈凯,满建樟,段佳恒,金作启..一种结合图像处理与社区检测算法的风电异常数据清洗方法[J].全球能源互联网(英文),2024,7(3):293-312,20.

基金项目

This work was supported by the National Natural Science Foundation of China(Project No.51767018)and Natural Science Foundation of Gansu Province(Project No.23JRRA836). (Project No.51767018)

全球能源互联网(英文)

OAEI

2096-5117

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