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Neural Detection of Foreign Objects for Transmission Lines in Power Systems

机译:电力系统中输电线路外物体的神经检测

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Ensuring the normal operation of the transmission lines, which provides a path for directing the transmission of energy from one place to another, is a prerequisite for delivering power to cities and enterprises. A major threat comes from foreign objects, which may cause interruption of power transmission. Compared with traditional manual method, which not only consumes a lot of manpower, but more importantly, affects the safety and efficiency of power network, in this paper, we apply a neural detection of foreign objects for transmission lines. Transfer learning and data augmentation are used to mitigate data shortages. Experimental results show that even with small training data, the neural detection with transfer learning and data augmentation is an effective method for this task without loss of real-time property.
机译:确保传输线的正常运行,这提供了一种用于将能量传输从一个地方传输到另一个地方的路径,是为城市和企业提供权力的先决条件。主要威胁来自异物,可能导致动力传输中断。与传统的手工方法相比,这不仅消耗了大量的人力,而且更重要的是,在本文中影响了电网的安全性和效率,我们应用了用于传输线的外来物体的神经检测。转移学习和数据增强用于减轻数据短缺。实验结果表明,即使具有小的训练数据,具有转移学习和数据增强的神经检测是该任务的有效方法,而不会损失实时性。

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