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Research of Insulator Fault Identification Method Based on Atlas Intelligent Computing Platform

机译:基于阿特拉斯智能计算平台的绝缘子故障识别方法研究

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Transmission line monitoring plays a crucial role in the safe operation of the power grid. The application of image recognition technology based on artificial intelligence algorithms can improve the efficiency of fault identification and reduce the labor cost. Object detection is to detect the object of interest in the given picture and is an effective method to recognize the fault location. This paper proposed an insulator fault identification method based on the Atlas intelligent computing platform aiming at the characteristics of small insulator fault data set. This method adopts the SSD300 model for training and inference and analysis is carried out based on the Atlas intelligent computing platform. The experiment results show that the SSD300 model can be ported well to the Atlas intelligent computing platform without reducing the recognition accuracy. At the same time, the model size is decreased.
机译:传输线监测在电网的安全操作中起着至关重要的作用。基于人工智能算法的图像识别技术的应用可以提高故障识别效率,降低劳动力成本。对象检测是检测给定图片的感兴趣对象,是识别故障位置的有效方法。本文提出了一种基于ATLAS智能计算平台的绝缘子故障识别方法,旨在瞄准小型绝缘体故障数据集的特性。该方法采用SSD300模型进行训练和推断,并基于ATLAS智能计算平台进行分析。实验结果表明,SSD300模型可以很好地融合到地图集智能计算平台,而不会降低识别精度。同时,模型大小减少。

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