Shading fault detection in a grid-connected PV system using vertices principal component analysis
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Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
Partial shading severely impacts the performance of the photovoltaic (PV) system by causing power
losses and creating hotspots across the shaded cells or modules. Proper detection of shading faults serves
not only in harvesting the desired power from the PV system, which helps to make solar power a reliable
renewable source, but also helps promote solar versus other fossil fuel electricity-generation options that
prevent making climate change targets (e.g. 2015’s Paris Agreement) achievable. This work focuses
primarily on detecting partial shading faults using the vertices principal component analysis (VPCA), a
data-driven method that combines the simplicity of its linear model and the ability to consider the
uncertainties of the different measurements of a PV system in an interval format. Data from a gridconnected
monocrystalline PV array, installed on the rooftop of the Power Electronics and Renewable
Energy Research Laboratory (PEARL), University of Malaya, Malaysia, have been used to train the VPCA
model. To prove the effectiveness of this VPCA method, four partial shading patterns have been created.
The obtained performance has, then, been tested against a regular PCA. In addition to its ability to
acknowledge the uncertainty of a PV system, the VPCA method has shown an enhanced performance of
detecting partial shading fault in comparison with the standard PCA. Also, included in the article is an
extension of the contribution plot diagnosis-based method, of the Q-statistic, to the interval-valued case
aiming to pinpoint the out-of-control variables.
Description
Keywords
Photovoltaic system (PV), Partial shading, Fault detection, Fault diagnosis, Principal component analysis (PCA), Interval-valued PCA
