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Ensemble Learning-Based Reactive Power Optimization for Distribution Networks
2022
Energies
Reactive power optimization of distribution networks is of great significance to improve power quality and reduce power loss. However, traditional methods for reactive power optimization of distribution networks either consume a lot of calculation time or have limited accuracy. In this paper, a novel data-driven-based approach is proposed to simultaneously improve the accuracy and reduce calculation time for reactive power optimization using ensemble learning. Specifically, k-fold
doi:10.3390/en15061966
fatcat:znnsmtav7jh67bpqlohyjtgyw4