Optimal Electricity Load Interruption Based on Time Series Classification With Super Learner and Feature Filtering
Solomon Oluwole Akinola,
Peter Olukanmi,
Qing-Guo Wang
et al.
Abstract:load-shedding is vital for managing electrical power shortages and avoiding grid collapse. However, excessive electricity demand poses an imminent threat to the overall stability of power grid system (PGS) and its ability to run safely and reliably. Load-shedding strategies can be complicated and inadequate to manage electrical power system efficiently. The study proposed a data-driven load-shedding time series classification (TSC) technique employing a heterogeneous ensemble super learner (eSL) to categorize … Show more
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