ESTSS – Energy System Time Series Suite: A declustered, application-independent, semi-artificial load profile benchmark set
Sebastian Günther,
Jonathan Brandt,
Astrid Bensmann
et al.
Abstract:This paper introduces an univariate application-independent set of load profiles or time series derived from real-world energy system data. The generation involved a two-step process: manifolding the initial dataset through signal processors to increase diversity and heterogeneity, followed by a declustering process that removes data redundancy. The study employed common feature engineering and machine learning techniques: the time series are transformed into a normalized feature space, followed by a dimension… Show more
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