DOI: 10.1063/5.0315541 ISSN: 2158-3226

E2-YOLO: Enhanced fault detection for smart meter calibration systems

Chao Liu, Xiaojie Zhang, Laiming Liang, Ainiwa Keranmu

Addressing the challenges of meter malfunction detection caused by uneven ambient lighting and surface reflection interference, this paper presents E2-YOLO, an enhanced fault diagnosis method for single-phase and three-phase meter automated calibration systems. To overcome issues such as non-uniform illumination, small-scale faults, and indistinct fault boundaries, E2-YOLO integrates image data with electrical parameters to improve both fault detection and classification performance. The proposed method introduces several key innovations, including a task-specific multi-branch feature extraction backbone that jointly captures spatial details and temporal dynamics, a multi-scale Retinex-based adaptive illumination correction module designed for industrial camera environments, a bidirectional attention-enhanced feature pyramid network for robust multi-scale fault representation, and a dual-attention mechanism that combines channel and spatial attention to improve small-scale fault localization. Experimental results demonstrate that E2-YOLO significantly improves fault identification accuracy, localization precision, and overall system robustness, providing a reliable solution for industrial meter calibration applications in smart grid environments.

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