Abstract
The inefficiency of manual inspections in substations struggles to meet increasing workloads amid power grid expansion, necessitating intelligent solutions for equipment monitoring. This study addresses two key challenges: detecting diverse equipment under scale variations, occlusions, and real-time constraints, and ensuring data privacy given geographically dispersed, sensitive substation data. We propose CWA-YOLO, a detection framework integrating multi-scale feature fusion and an enhanced small-object detection head into YOLOv8 to improve accuracy across variable conditions. Additionally, a federated learning (FL) system tailored for substations enables collaborative model training without centralized data sharing, addressing privacy concerns and data heterogeneity. The framework's novelty lies in its dual focus: optimizing detection performance through architectural enhancements and ensuring secure, efficient distributed learning. CWA-YOLO achieves mAP scores of 0.918 ([email protected]) and 0.623 ([email protected]:0.95), surpassing YOLOv8l and YOLOv7l by 6.5% and 7.49%, respectively, in accuracy. For FL, the Federated Adaptive (FedAdp) algorithm reduces communication rounds by 62% compared to Federated Averaging (FedAvg), maintaining near-centralized accuracy while preserving data locality. These results confirm the method's effectiveness in improving substation equipment recognition securely and efficiently.
| Original language | English |
|---|---|
| Article number | 110547 |
| Journal | International Journal of Electrical Power and Energy Systems |
| Volume | 166 |
| DOIs | |
| Publication status | Published - 2025 May |
Keywords
- Federated learning
- Multi-scale feature fusion
- Object detection
- Small object detection head
- Substation equipment detection
- YOLOv8
ASJC Scopus subject areas
- Energy Engineering and Power Technology
- Electrical and Electronic Engineering