基于深度机器学习技术的变电站图像智能分析

Zhitao Luo, Hongbin Hu
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摘要

随着我国智能电网的大规模建设,以及电力系统调度自动化和变电站自动化技术的不断提高,保障和协调变电站平稳运行的工作不断深入。随着科学技术的发展,深度学习和机器学习技术越来越智能化。如今,深度学习已经在目标检测、图像识别、字符识别等领域取得了巨大的成就,服务于变电站的工作。本文的目的是研究基于深度机器学习技术的变电站图像智能分析。本文从图像分析出发,以深度机器学习技术作为变电站图像智能分析的技术支撑,将深度机器学习技术与变电站图像检测相结合,重点研究深度机器学习技术在变电站图像智能分析中的应用,提高变电站的智能化水平,确保变电站安全稳定运行。实验数据表明,本文提出的BP神经网络对变电设备正常运行和三种避雷器发热故障的正确识别率分别为98.06%、98.25%、99%和98.75%。结果表明,BP神经网络具有较高的图像识别准确率,适用于变电站防雷器红外检测的实际工作。
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Intelligent Analysis of Substation Images Based on Deep Machine Learning Technology
With the large-scale construction of smart grids in my country, as well as the continuous improvement of power system dispatch automation and substation automation technology, the work of ensuring and coordinating the smooth operation of substations continues to deepen. With the development of science and technology, deep learning and machine learning technologies are becoming more and more intelligent. Nowadays, deep learning has made great achievements in the fields of target detection, image recognition, character recognition, etc., serving the work of substations. The purpose of this article is to study the intelligent analysis of substation images based on deep machine learning technology. Starting from the analysis of images, this paper uses deep machine learning technology as the technical support for intelligent analysis of substation images, combines deep machine learning technology with substation image detection, and focuses on the application of deep machine learning technology in substation image intelligent analysis, improve the intelligent level of substations and ensure the safe and stable operation of substations. Experimental data shows that the correct recognition rate of the BP neural network proposed in this paper for the normal operation of substation equipment and the heating fault of the three types of arresters are 98.06%, 98.25%, 99%, and 98.75%, respectively. It can be concluded that the BP neural network has a high image recognition accuracy rate and it is suitable for the actual work of infrared detection of lightning arresters in substations.
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