A Study of Electrical Load Forecasting by Synergetic Time Series Clustering in a Temporal Convolutional Network
Permanent lenke
https://hdl.handle.net/10037/22106Dato
2021-06-15Type
Master thesisMastergradsoppgave
Forfatter
Aasen, Håvard SundSammendrag
In this thesis time series forecasting is reviewed and performed on electrical load time
series. The main dataset that is used consists of 4074 load time series, each collected from a
secondary substation. The time series in this set cover hourly observations spanning more
than 2 years, and these time series all have different patterns, some being more similar to
each other. We explore how we can use this similarity and dissimilarity in order to group
the time series, and find that a clustering-like behaviour would be desired. We also explore
different possibilities with regards to forecasting the time series, and find that temporal
convolutional networks (TCNs) present good promises for doing such tasks. Two methods,
in addition to a simple baseline, are then presented and used, a regular TCN, and the
TCN-based model DeepGLO, which combines TCNs with clustering-like behaviour by use
of matrix factorization. Ultimately we find that the regular TCN outperforms DeepGLO,
and speculate that TCNs themselves might exhibit behaviour similar to clustering.
Forlag
UiT The Arctic University of NorwayUiT Norges arktiske universitet
Metadata
Vis full innførselSamlinger
Copyright 2021 The Author(s)
Følgende lisensfil er knyttet til denne innførselen: