Lower Dimensional Spherical Representation of Medium Voltage Load Profiles for Visualization, Outlier Detection, and Generative Modelling
This paper presents the spherical lower dimensional representation for daily medium voltage load profiles, based on principal component analysis. The objective is to unify and simplify the tasks for (i) clustering visualisation, (ii) outlier detection and (iii) generative profile modelling under one...
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Zusammenfassung: | This paper presents the spherical lower dimensional representation for daily
medium voltage load profiles, based on principal component analysis. The
objective is to unify and simplify the tasks for (i) clustering visualisation,
(ii) outlier detection and (iii) generative profile modelling under one
concept. The lower dimensional projection of standardised load profiles unveils
a latent distribution in a three-dimensional sphere. This spherical structure
allows us to detect outliers by fitting probability distribution models in the
spherical coordinate system, identifying measurements that deviate from the
spherical shape. The same latent distribution exhibits an arc shape, suggesting
an underlying order among load profiles. We develop a principal curve technique
to uncover this order based on similarity, offering new advantages over
conventional clustering techniques. This finding reveals that energy
consumption in a wide region can be seen as a continuously changing process.
Furthermore, we combined the principal curve with a von Mises-Fisher
distribution to create a model capable of generating profiles with continuous
mixtures between clusters. The presence of the spherical distribution is
validated with data from four municipalities in the Netherlands. The uncovered
spherical structure implies the possibility of employing new mathematical tools
from directional statistics and differential geometry for load profile
modelling. |
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DOI: | 10.48550/arxiv.2411.14346 |