WANG Can, CHANG Wenhan, ZHANG Xuefei, et al. 基于SMA-Adaboost的单三相混联微网群孤岛检测方法[J]. Power System Protection and Control, 2025, (21).
DOI:
WANG Can, CHANG Wenhan, ZHANG Xuefei, et al. 基于SMA-Adaboost的单三相混联微网群孤岛检测方法[J]. Power System Protection and Control, 2025, (21). DOI: 10.19783/j.cnki.pspc.241758.
Unintentional islanding events pose a significant threat to the stable operation of hybrid single- and three-phase hybrid microgrid clusters. Timely and accurate detection of the actual islanding status is essential to ensure their secure and reliable operation. However
traditional islanding detection methods suffer from detection blind spots
and many weakly correlated or irrelevant electrical characteristics can adversely affect the accuracy of islanding detection. To address these issues
an islanding detection method for hybrid single- and three-phase microgrids based on the improved adaptive boosting (Adaboost) method is proposed. First
the slime mould algorithm (SMA) is introduced into the Adaboost learner to improve classification ability and reduce disturbance effects. Additionally
the weight learning method using group switchable normalization (GSN) is adopted to shorten the detection time. Then
an islanding detection model is established using the proposed SMA-Adaboost learner. To further enhance the efficiency and accuracy of the islanding detection model
electrical features strongly correlated with islanding status are extracted based on the partial least squares (PLS) method. Finally
the performance of the proposed method is validated through simulations on a hybrid single- and three-phase microgrid cluster based on the improved IEEE37-bus system. The results demonstrate that the proposed islanding detection method can accurately detect islanding without being affected by disturbance signals or three-phase system unbalance
and exhibits superior accuracy and generalization capability compared to existing detection methods.