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Research on the application of target detection based on deep learning technology in power grid operation inspection

机译:基于深度学习技术在电网运行检测中的目标检测应用研究

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-External damage to power facilities caused by crane, excavator and other construction operations increases year by year, which will seriously threaten the safe operation of power system. It is an important measure to ensure the safe and reliable operation of power system to implement intelligent monitoring and early warning of power external breakdown through video and other non-contact observation means. The video data of power mainly comes from the fixed monitoring of helicopters, uavs and transformation poles and towers, which is characterized by large amount of data, complex scenes and serious environmental interference. The traditional target detection method usually selects the candidate area first, and then makes judgment based on the characteristics of human construction. The detection speed is slow and the accuracy is low, which makes it impossible to monitor the video data in real time, so as to make timely and accurate early warning and intervention fbr external damage. The target detection method based on deep learning optimizes or even eliminates the selection of candidate regions, which greatly speeds up the detection speed. By learning a lot of target samples through the deep neural network, the characteristics of high robustness are gradually fitted to make the target judgment more accurate.There are three key problems in introducing the target detection method based on deep learning into the power video detection: Firstly, the target detection method based on deep learning has a large amount of calculation and many parameters. In order to realize in-place operation on terminals with limited computing and storage capacity, it is necessary to find a practical method to simplify the network and reduce the amount of operational data in the detection process, which is the key to realize in-place operation and terminal operation of deep neural network. Secondly, for specific application scenarios, the effect of different target detection algorithms varies greatly, and there is a strong particularity of power video. Finding an effective target detection method is the key to improve the detection speed and accuracy. Finally, with the continuous development of deep learning, the structure of deep neural network changes with each passing day, and each has its own characteristics, which network structure is used as the feature extraction layer of target detection algorithm is the focus of research.
机译:- 由起重机,挖掘机和其他施工业务引起的电力设施的外部损坏,逐年增加,这将严重威胁到电力系统的安全运行。这是一种重要的措施,确保电力系统的安全可靠运行,实现通过视频和其他非接触观察装置实现电力外部崩溃的智能监控和预警。电力的视频数据主要来自直升机,无人机和转换极和塔的固定监控,其特征在于大量数据,复杂的场景和严重的环境干扰。传统的目标检测方法通常首先选择候选区域,然后基于人体构造的特征进行判断。检测速度慢,精度低,这使得不可能实时监控视频数据,以便及时准确地进行预警和干预FBR外部损坏。基于深度学习的目标检测方法优化甚至消除了候选地区的选择,这大大加速了检测速度。通过深入神经网络学习大量目标样本,逐渐拟合高稳健性的特性,以使目标判断更准确。基于深度学习进入电力视频检测的目标检测方法是引入目标检测方法的三个关键问题:首先,基于深度学习的目标检测方法具有大量的计算和许多参数。为了实现具有有限的计算和存储容量的终端的原位运行,有必要找到简化网络的实用方法,并减少检测过程中的操作数据量,这是实现原始的钥匙深神经网络的操作与终端运行。其次,对于特定的应用场景,不同目标检测算法的效果大大变化,并且功率视频具有很强的特殊性。找到有效的目标检测方法是提高检测速度和准确性的关键。最后,随着深度学习的不断发展,深度神经网络的结构随着每个通过的一天而改变,并且每个都有自己的特点,该网络结构用作目标检测算法的特征提取层是研究的焦点。

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