4.5 Article

Automatic Inspection of Photovoltaic Power Plants Using Aerial Infrared Thermography: A Review

Journal

ENERGIES
Volume 15, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/en15062055

Keywords

aerial infrared thermography (aIRT); PV power plant; PV monitoring; deep learning; automatic fault detection; PV reliability

Categories

Funding

  1. Brazilian Electrical Energy Regulatory Agency ANEEL, ENGIE Brasil Energia and Guascor/Siemens [PE-00403-0042/2016, ANEEL 021/2016]
  2. Brazilian Electrical Energy Regulatory Agency ANEEL and CTG Brasil [PD-10381-0620/2020]

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aIRT has been proven to be a reliable and cost-efficient inspection method for failure detection in PV systems. Current research mainly focuses on autonomous fault detection and classification of PV plants, with accuracies up to 90%, but there are still issues with the accuracy, robustness, and generalization of the algorithms.
In recent years, aerial infrared thermography (aIRT), as a cost-efficient inspection method, has been demonstrated to be a reliable technique for failure detection in photovoltaic (PV) systems. This method aims to quickly perform a comprehensive monitoring of PV power plants, from the commissioning phase through its entire operational lifetime. This paper provides a review of reported methods in the literature for automating different tasks of the aIRT framework for PV system inspection. The related studies were reviewed for digital image processing (DIP), classification and deep learning techniques. Most of these studies were focused on autonomous fault detection and classification of PV plants using visual, IRT and aIRT images with accuracies up to 90%. On the other hand, only a few studies explored the automation of other parts of the procedure of aIRT, such as the optimal path planning, the orthomosaicking of the acquired images and the detection of soiling over the modules. Algorithms for the detection and segmentation of PV modules achieved a maximum F1 score (harmonic mean of precision and recall) of 98.4%. The accuracy, robustness and generalization of the developed algorithms are still the main issues of these studies, especially when dealing with more classes of faults and the inspection of large-scale PV plants. Therefore, the autonomous procedure and classification task must still be explored to enhance the performance and applicability of the aIRT method.

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