Detection of abnormal photovoltaic systems’ operation with minimum data requirements based on Recursive Least Squares algorithms

Autor/a

Laguna Benet, Gerard

Moreno , Pablo

Cipriano, Jordi

Mor Martínez, Gerard

Gabaldon Ponsa, Eloi

Luna, Alvaro

Fecha de publicación

2024



Resumen

In the last years, the massive deployment of new photovoltaic (PV) power plants has launched the connection of PV inverters to the electrical network. A single medium-sized ground-mounted PV plant may have thousands of these inverters linked to the grid and even more PV panels on the DC side. Upon reaching such a substantial magnitude of devices involved in grid-connected installations, the effective operation, management, predictive maintenance, and fault detection becomes increasingly challenging without integrating advanced prediction and automated anomaly detection systems. Artificial intelligence algorithms, grounded in data measurements, can be pivotal in addressing this challenge. This paper proposes several regression-based methods to predict PV plants’ energy generation, which is useful for detecting transient and long-term anomalies. These models are trained using a Recursive Least Squares (RLS) method and require a minimum number of variables to yield satisfactory outcomes, which is one of the paper’s contributions. They mainly rely on energy generation measurements and geolocation. Within the scope of this research, two distinct algorithms have been implemented and validated. The first algorithm, a simplified model, is engineered to analyse the daily efficiency variation, prioritizing the identification of faults and abnormal operational profiles in PV plants. On the other hand, the second algorithm adopts a more intricate model tailored to facilitate long-term diagnosis, enabling the assessment of PV efficiency degradation. In this work, both algorithms are described and their performance is validated using the historical data from more than 20 PV plants placed in different climatic regions.


This work has been supported by the FPU-UPC 2023 scholarship programme and the SGR 01549 grant.

Tipo de documento

Artículo
Versión publicada

Lengua

Inglés

Materias y palabras clave

Renewable energy; Machine learning; Energy prediction; Smart grids

Publicado por

Elsevier

Documentos relacionados

Reproducció del document publicat a https://doi.org/10.1016/j.solener.2024.112556

Solar Energy, 2024, vol. 274, 112556

Derechos

cc-by (c) Gerard Laguna et al., 2024

Attribution 4.0 International

http://creativecommons.org/licenses/by/4.0/

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