A Novel Wind Power Outlier Detection Method with Support Vector Machine Optimized by Improved Harris Hawk
Jingtao Huang,
Jin Qin,
Shuzhong Song
Abstract:The accurate detection of wind power outliers plays a crucial role in wind power forecasting, while the inherited strong randomness and high fluctuations bring great challenges to this issue. This work investigates the way to improve the outlier detection accuracy based on support vector machine (SVM). Although SVM can achieve good results for outlier detection in theory, its performance is heavily dependent on the hyper-parameters. Parameter optimization is not an easy task due to its complex nonlinear multi-… Show more
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