Abstract

In recent years, solar energy has been regarded as one of the most important sustainable energy sources. Under the rapid and large-scale construction of solar farms, the maintenance and inspection of the health conditions of solar modules in a large solar farm become an important issue. This article proposes a method for detecting solar cell faults with unmanned aerial vehicle (UAV) equipped with a thermal imager and a visible light camera, and providing a fast and reliable detection method. The detection process includes a new concept of real-time monitoring of the detected area and analysis of the health of solar panels. An image process is proposed that may quickly and accurately detect the abnormality of a solar module. The whole process includes grayscale conversion, filtering, 3-D temperature representation, probability density function, and cumulative density function analysis. Ten cases in real fields have been studied with this process, including large scale solar farms and small size solar modules installed on buildings. Results show that the cumulative density function is a convenient way to determine the health status of the solar panel and may provide maintenance personnel a basis for determining whether replacement of solar cells is necessary for improving the overall power generation efficiency and simplify the maintenance process. It is worth noting that image recognition can increase the clarity of IR images and the cumulative chart can judge the defect rate of the cell. These two methods were combined to provide an instant, fast and accurate defect judgment.

Highlights

  • In recent years, many countries are actively developing renewable energy-related industries, and the construction of solar power plants is regarded as an important part of it.Taipower, for example, has stated that 2019–2020 is a bumper year for large-scale development projects, and it is expected to achieve the target of 2.2 GW solar installations set by the Ministry of Economic Affairs

  • Thermal imaging analysis of solar photovoltaic modules was performed by infrared cameras (FLIR Duo R) mounted on the unmanned aerial vehicle (UAV), and IR images were immediately transmitted back to the ground station for analysis

  • A four-step procedure of image analysis is proposed in this paper

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Summary

Introduction

Taipower (a government power agency in Taiwan), for example, has stated that 2019–2020 is a bumper year for large-scale development projects, and it is expected to achieve the target of 2.2 GW solar installations set by the Ministry of Economic Affairs. The maintenance and monitoring will be a challenge as many large scale solar farms are operated and built in remote area and some panels are even installed on top of high rise buildings. To improve the detection efficiency, this paper proposes a fast, time-saving and real-time detection system to identify the failure status of solar panels. Advantages of using drones include large area coverage, high flexibility, light weight, and fast speed, and module defect detection can be performed in a relatively short time after the shooting status is sent back to the ground station [7]. The image analysis with MATLAB is conducted to determine the status of these modules

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