Abstract

In the last few decades, photovoltaic (PV) power station installations have surged across the globe. The output efficiency of these stations deteriorates with the passage of time due to multiple factors such as hotspots, shaded cell or module, short-circuited bypass diodes, etc. Traditionally, technicians inspect each solar panel in a PV power station using infrared thermography to ensure consistent output efficiency. With the advancement of drone technology, researchers have proposed to use drones equipped with thermal cameras for PV power station monitoring. However, most of these drone-based approaches require technicians to manually control the drone which in itself is a cumbersome task in the case of large PV power stations. To tackle this issue, this study presents an autonomous drone-based solution. The drone is mounted with both RGB (Red, Green, Blue) and thermal cameras. The proposed system can automatically detect and estimate the exact location of faulty PV modules among hundreds or thousands of PV modules in the power station. In addition, we propose an automatic drone flight path planning algorithm which eliminates the requirement of manual drone control. The system also utilizes an image processing algorithm to process RGB and thermal images for fault detection. The system was evaluated on a 1-MW solar power plant located in Suncheon, South Korea. The experimental results demonstrate the effectiveness of our solution.

Highlights

  • The development of renewable energy has gained a lot of attention worldwide

  • A PV power station typically consists of hundreds or thousands of PV modules which are connected together in a series circuit

  • These PV modules are the key components in a solar power station since the output efficiency of these stations are dependent upon these modules

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Summary

Introduction

The development of renewable energy has gained a lot of attention worldwide. This increased interest in renewable energy is primarily due to environmental problems such as global warming, abnormal weather, depletion of fossil fuels, etc. A PV power station typically consists of hundreds or thousands of PV modules which are connected together in a series circuit. Sci. 2020, 10, 3802 the shaded cell, which drastically increases the cell temperature and leads to hot spotting [2] It can damage the cell and reduce the total power output of the solar panel. In the last few years, the academic and industrial communities are interested in time efficient drone-based infrared thermography methods. A drone equipped with thermal camera is operated wirelessly by a technician and images are captured and saved during the flight, which are later processed for fault detection. This paper presents an autonomous drone-based infrared thermography solution for PV module fault detection and localization. The proposed solution can detect and exactly locate the faulty PV modules in a large-scale PV power station. The conclusions are covered in the last section of this paper

Related Works
Limitations
Method
System Configuration
Drone Hardware Details
Software Implementation Details
Autonomous Flight Path Planning Algorithm
Thermal Image Processing
ROI Segmentation
RGB and Thermal Image Registration
Image Rectification and Individual PV Module Extraction
Abnormal PV Module Detection
Findings
Conclusions
Full Text
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