Abstract:
In the critical field of electrical grid maintenance, ensuring the integrity of power line insulators is a primary concern. This study introduces an innovative approach f...Show MoreMetadata
Abstract:
In the critical field of electrical grid maintenance, ensuring the integrity of power line insulators is a primary concern. This study introduces an innovative approach for monitoring the condition of insulators using aerial surveillance via drone-mounted cameras. The proposed method is a composite deep learning framework that integrates the “You Only Look Once” version 3 (YOLO3) model with deep convolutional generative adversarial networks (DCGAN) and super-resolution generative adversarial networks (SRGAN). The YOLO3 model excels in rapidly and accurately detecting insulators, a vital step in assessing their health. Its effectiveness in distinguishing insulators against complex backgrounds enables prompt detection of defects, essential for proactive maintenance. This rapid detection is enhanced by DCGAN's precise classification and SRGAN's image quality improvement, addressing challenges posed by low-resolution drone imagery. The framework's performance was evaluated using metrics such as sensitivity, specificity, accuracy, localization accuracy, damage sensitivity, and false alarm rate. Results show that the SRGAN+DCGAN+YOLO3 model significantly outperforms existing methods, with a sensitivity of 98%, specificity of 94%, an overall accuracy of 95.6%, localization accuracy of 90%, damage sensitivity of 92%, and a reduced false alarm rate of 8%. This advanced hybrid approach not only improves the detection and classification of insulator conditions but also contributes substantially to the maintenance and health of power line insulators, thus ensuring the reliability of the electrical power grid.
Published in: Tsinghua Science and Technology ( Volume: 29, Issue: 6, December 2024)
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- IEEE Keywords
- Index Terms
- Generative Adversarial Networks ,
- Deep Learning ,
- Convolutional Network ,
- Localization Accuracy ,
- Power Grid ,
- Deep Convolutional Network ,
- False Alarm Rate ,
- Mean Square Error ,
- Convolutional Neural Network ,
- Support Vector Machine ,
- High-resolution Images ,
- Convolutional Layers ,
- Deep Learning Models ,
- Object Detection ,
- Image Object ,
- Bounding Box ,
- Object Classification ,
- Hybrid Model ,
- Residual Network ,
- Low-resolution Images ,
- Object Detection Model ,
- Residual Layer ,
- Super-resolution Model ,
- Using Unmanned Aerial Vehicles ,
- Blurred Images ,
- Good Insulation ,
- General Architecture ,
- Fake Images ,
- Loss Function ,
- Private Dataset
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Generative Adversarial Networks ,
- Deep Learning ,
- Convolutional Network ,
- Localization Accuracy ,
- Power Grid ,
- Deep Convolutional Network ,
- False Alarm Rate ,
- Mean Square Error ,
- Convolutional Neural Network ,
- Support Vector Machine ,
- High-resolution Images ,
- Convolutional Layers ,
- Deep Learning Models ,
- Object Detection ,
- Image Object ,
- Bounding Box ,
- Object Classification ,
- Hybrid Model ,
- Residual Network ,
- Low-resolution Images ,
- Object Detection Model ,
- Residual Layer ,
- Super-resolution Model ,
- Using Unmanned Aerial Vehicles ,
- Blurred Images ,
- Good Insulation ,
- General Architecture ,
- Fake Images ,
- Loss Function ,
- Private Dataset
- Author Keywords