Archive/Detection and Classification of Hot Spots in Photovoltaic Panels Using Thermal Image Processing Techniques
Detection and Classification of Hot Spots in Photovoltaic Panels Using Thermal Image Processing Techniques
Wejdan Altawallbeh, Huthaifa Obeidat, Issam Trrad et al.
1. Juli 2026
en

Abstract

Photovoltaic systems have recently attracted significant attention for the free, clean, and sustainable energy they generate. In this work, thermal image processing techniques were developed and utilized to classify hot spots on solar photovoltaic panels. Thermal images were classified into three categories: (a) ideal images, where images do not contain hot spots; (b) images affected by shadow; and (c) images affected by bird drops. The proposed classification was developed using image processing techniques, including histogram analysis, contrast enhancement, and filtering tools. The attained classes are then matched to the decrease in electrical power output. The proposed method was applied to thermal images to detect and classify the target hot spot. Experimental results showed that the estimated error was approximately 6.3% of the total number of images used in the research, with error rates of 6.57% for the shadow hot spot type and 6.67% for the bird drops (mud-like class). Moreover, the accuracy of the proposed method was around 93.7%.

IPC Classification

G06H01

Keywords

detectionclassificationspotsphotovoltaicpanelsthermalimageprocessingtechniquessignalssystemsrecentlyattractedsignificantattentionfreecleansustainableenergytheygenerateworkdevelopedutilized
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