TY - EJOU AU - Dinh, Nghia AU - Hoang, Vinh Truong AU - Le, Viet-Tuan AU - Tran-Trung, Kiet AU - Hong, Ha Duong Thi AU - Van, Bay Nguyen AU - Trung, Hau Nguyen AU - Huong, Thien Ho AU - Meethongjan, Kittikhun TI - YOLOv10-HQGNN: A Hybrid Quantum Graph Learning Framework for Real-Time Faulty Insulator Detection T2 - Computers, Materials \& Continua PY - 2026 VL - 86 IS - 3 SN - 1546-2226 AB - Ensuring the reliability of power transmission networks depends heavily on the early detection of faults in key components such as insulators, which serve both mechanical and electrical functions. Even a single defective insulator can lead to equipment breakdown, costly service interruptions, and increased maintenance demands. While unmanned aerial vehicles (UAVs) enable rapid and cost-effective collection of high-resolution imagery, accurate defect identification remains challenging due to cluttered backgrounds, variable lighting, and the diverse appearance of faults. To address these issues, we introduce a real-time inspection framework that integrates an enhanced YOLOv10 detector with a Hybrid Quantum-Enhanced Graph Neural Network (HQGNN). The YOLOv10 module, fine-tuned on domain-specific UAV datasets, improves detection precision, while the HQGNN ensures multi-object tracking and temporal consistency across video frames. This synergy enables reliable and efficient identification of faulty insulators under complex environmental conditions. Experimental results show that the proposed YOLOv10-HQGNN model surpasses existing methods across all metrics, achieving Recall of 0.85 and Average Precision (AP) of 0.83, with clear gains in both accuracy and throughput. These advancements support automated, proactive maintenance strategies that minimize downtime and contribute to a safer, smarter energy infrastructure. KW - Object detection; GNN; QGNN; HQGNN; Quantum; YOLO; power quality DO - 10.32604/cmc.2025.069587