Automatic fault detection on BIPV systems without solar irradiation data
Jonathan Leloux, Luis Narvarte, Alberto Luna, Adrien Desportes

TL;DR
This paper introduces a novel fault detection method for BIPV systems that relies solely on energy production data, eliminating the need for solar irradiation data, and demonstrates its effectiveness on large datasets.
Contribution
The paper presents the P2P performance indicator, enabling automatic fault detection in BIPV systems without requiring solar irradiation or environmental data.
Findings
P2P is more stable than PR for fault detection.
Method applied to 10,000 BIPV systems across Europe.
Effective fault detection demonstrated on a Belgian BIPV system.
Abstract
BIPV systems are small PV generation units spread out over the territory, and whose characteristics are very diverse. This makes difficult a cost-effective procedure for monitoring, fault detection, performance analyses, operation and maintenance. As a result, many problems affecting BIPV systems go undetected. In order to carry out effective automatic fault detection procedures, we need a performance indicator that is reliable and that can be applied on many PV systems at a very low cost. The existing approaches for analyzing the performance of PV systems are often based on the Performance Ratio (PR), whose accuracy depends on good solar irradiation data, which in turn can be very difficult to obtain or cost-prohibitive for the BIPV owner. We present an alternative fault detection procedure based on a performance indicator that can be constructed on the sole basis of the energy…
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