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基于虚拟现实技术和机器学习的电力故障应急演练系统设计

Design of Emergency Drill system for Electrical Power Based on Virtual Reality Technology and Machine Learning
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摘要 为了提高应急处置人员面对电力故障的操作能力,文章介绍了一个基于虚拟现实技术和机器学习的电力故障应急演练系统。该系统通过多点位三维摄像头,搭载超广角镜头,实时采集培训人员的人体骨骼数据信息,通过主成分分析(PCA)算法以及k近邻(KNN)算法对骨骼信息进行特征提取和分类,可以真实模拟电力电子设备发生的常见故障,极大节省了演练费用,有效降低了人员伤亡概率。 In order to improve the operation ability of emergency personnel facing electrical power,an electrical power emergency drill system based on virtual reality technology and machine learning has been developed.The system collects the human bone data information of training personnel in real time through a multi-point 3D camera equipped with ultra-wide-angle lens.Principal component analysis(PCA)algorithm and K-nearest neighbor(KNN)algorithm are used to extract and classify the bone information.The electrical power emergency drill system can simulate common faults that occur in power electronic equipment truly,saving drill costs greatly and reducing the probability of casualties effectively.
作者 吴宇红 纪涛 许泉强 朱优优 WU Yuhong;JI Tao;XU Quanqiang;ZHU Youyou(Deqing Power Supply Company,State Grid Zhejiang Electric Power Co.,Ltd.,Huzhou 313200,China;Deqing Xin Dian Electric Power Constuction Co.,Ltd.,Huzhou 313200,China;Taizhou Institute of Zhejiang University,Taizhou 318000,China)
出处 《数字通信世界》 2024年第3期78-80,共3页 Digital Communication World
关键词 电力故障 虚拟现实技术 主成分分析 K近邻 electrical power virtual reality technology principal component analysis K-nearest neighbor
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