2025
DOI: 10.3390/info16050407
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YOLO-SRSA: An Improved YOLOv7 Network for the Abnormal Detection of Power Equipment

Abstract: Power equipment anomaly detection is essential for ensuring the stable operation of power systems. Existing models have high false and missed detection rates in complex weather and multi-scale equipment scenarios. This paper proposes a YOLO-SRSA-based anomaly detection algorithm. For data enhancement, geometric and color transformations and rain-fog simulations are applied to preprocess the dataset, improving the model’s robustness in outdoor complex weather. In the network structure improvements, first, the A… Show more

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