A Deep Learning Framework for Modeling Temporal Dependencies and Hierarchies in Hourly Electricity Demand Load
Claris Shoko,
Ntebogang Dinah Moroke,
Katleho Makatjane
Abstract:The limitations of traditional deep learning models in processing vast volumes of data and modelling complicated temporal dependencies make it difficult to effectively satisfy these objectives for short-term load forecasting (STLF). This chapter utilises deep learning, which enables the following: k-means clustering to comprehend hourly electricity demand load trend, extraction of complex features with non-linear interactions that impact electricity demand load, handling of long-term dependencies through the m… Show more
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