电力设备图像深度学习模型的轻量化方法研究

A. Jiang, Nannan Yan, Baoguo Shen, Chunjie Gu, Hao Huang, Huangru Zhu
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引用次数: 1

摘要

在电网巡检中,图像信息是判断设备故障和缺陷的关键要素。目前,所有基于深度学习的图像缺陷自动分析技术都是将图像传输到服务器云进行处理。然而,由于电力设备分布广泛,图像数据量大,数据传输时间长,对海量图像数据进行深度学习将导致严重的存储和推理速度问题。因此,有必要开展基于边缘计算的电力设备自动分析研究,实现电力设备图像的实时缺陷分析,大幅减少现场检测、数据后处理和缺陷分析的时间,提高工作效率,保证缺陷检测的及时性。本文分析了电力设备图像识别边缘计算的应用场景,总结了常用的电力设备图像识别深度学习模型,比较了现有边缘计算芯片的计算能力,提出了网络优化、推理优化和硬件优化两种电力设备图像识别深度学习模型轻量化方案。给出了可见光图像识别应用场景的方案示例。结果表明,与直接使用移动边缘计算的NVIDIA TX2芯片相比,使用TensorRT硬件架构加速和低精度网格加速可将识别时间缩短48% ~ 72%。与桌面GPU GTX1080TI相比,使用TensorRT硬件架构加速和低精度网格加速的识别时间仍然更长,因此需要进一步研究轻量化优化方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Lightweight Method of Image Deep Learning Model for Power Equipment
Image information is the key element to judge the fault and defect of equipment in the power grid inspection. At present, all the automatic image defect analysis technology based on deep learning is to transfer the image to the server cloud for processing. However, due to the wide distribution of power equipment, large amount of image data and long time of data transmission, deep learning of massive image data will lead to severe problems of storage and inference speed. Therefore, it is necessary to carry out automatic analysis and research of power equipment based on edge computing, realize real-time defect analysis of power equipment image, significantly reduce the time of field detection, post-processing data and defect analysis, improve work efficiency and ensure the timeliness of defect detection. This paper analyzes the application scenarios of power equipment image recognition edge computing, summarizes the commonly used power equipment image recognition depth learning model, compares the computing power of existing edge computing chips, and puts forward two kinds of power equipment image recognition depth learning model lightweight schemes, which are network optimization, reasoning optimization and hardware optimization, and obtains the design of substation A scheme example of the application scene for visible light image recognition is provided. The results show that compared with NVIDIA TX2 chip which uses mobile edge computing directly, using TensorRT hardware architecture acceleration and low precision grid acceleration can reduce the recognition time by 48% ~ 72%. Compared with desktop GPU GTX1080TI, using TensorRT hardware architecture acceleration and low-precision grid acceleration recognition time is still longer, so further research on lightweight optimization scheme is needed.
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