基于深度学习的电力设备状态检测研究

Bao YuDe
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引用次数: 0

摘要

针对设备状态检测业务应用中对图像的智能化、可靠性和可用性的更高要求,提出了一种基于深度学习的电力设备状态检测方案。该方案基于异构平台技术对多类型电力设备进行状态检测和效率提升,实现对典型电力设备状态的高效识别。通过低功耗电力设备状态图像采集与分析装置,为应用提供多种形式的检测,实现多类型电力设备的状态检测。本方案完善了电力设备的检查模式,提高了对设备状态的控制和运行检查的决策水平,加快了管理决策的速度,进一步提高了电力生产管理水平。
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Research on Power Equipment Status Detection Based on Deep Learning
In response to the higher requirements for the intelligence, reliability, and availability of images in equipment status inspection business applications, a deep learning based power equipment status detection scheme is proposed. The scheme is based on heterogeneous platform technology for state detection and efficiency improvement of multiple types of power equipment, achieving efficient recognition of typical power equipment states. Through low-power power equipment state image acquisition and analysis devices, various forms of detection are provided for applications, achieving state detection of multiple types of power equipment. This plan improves the inspection mode of power equipment, enhances the control of equipment status and the decision-making level of operation and inspection, accelerates the speed of management decision-making, and further enhances the level of power production management.
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