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Intelligent Identification of Transmission Line Defects Based on Fast Neural Network Model

机译:基于快速神经网络模型的输电线路缺陷智能识别

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The hidden risk management and governance of the important crossing sections of overhead transmission lines is one of the key tasks of State Grid Corporation in recent years. With the wide application of new technologies such as unmanned aerial vehicles and visual online monitoring systems, massive inspection image data has been obtained. Most of the image data is identified and diagnosed manually at present, which is easy to cause misjudgment, and the recognition efficiency is extremely low. In this paper, the multi-source monitoring data of overhead transmission lines are collected and organized. Based on the fast neural network model, an intelligent fault identification method for transmission line visualization data is proposed for improving the utilization efficiency of transmission line monitoring data and helping to fully understand the running status of the equipment.
机译:架空输电线路重要交叉口的隐患管理和治理是近年来国家电网公司的重点任务之一。随着无人驾驶飞机和视觉在线监控系统等新技术的广泛应用,已经获得了大量的检查图像数据。目前,大多数图像数据是人工识别和诊断的,容易引起误判,识别效率极低。本文收集并整理了架空输电线路的多源监控数据。在快速神经网络模型的基础上,提出了一种用于传输线可视化数据的智能故障识别方法,以提高传输线监控数据的利用率,并有助于充分了解设备的运行状况。

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