Assets management on electrical grid using Faster-RCNN

被引:0
作者
Jules Raymond Kala
Didier Michael Kre
Armelle N’Guessan Gnassou
Jean Robert Kamdjoug Kala
Yves Melaine Akpablin Akpablin
Tiorna Coulibaly
机构
[1] CIE-Centre de Recherche en Intelligence Artificielle,
[2] Universite Catholique d’Afrique Centrale,undefined
来源
Annals of Operations Research | 2022年 / 308卷
关键词
Electrical; Convolutional neural network; Drones; Images; Faster-RCNN;
D O I
暂无
中图分类号
学科分类号
摘要
Electrical utility companies around the world are keeping track of all equipment on their distribution grid, because it will help them improve the management and the quality of the services they offer to their customers. Asset management of the electric grid is usually conducted manually, which is expensive, time consuming and the results obtained are often not accurate. In this article an automated asset management system for electricity, transport infrastructures is proposed, it is based on images taken by drones and analysed by Faster Region proposal Convolutional Neural Networks (Faster-RCNN) to generate the inventory. The designs of CNN are inspired from the human brain structures, they have been applied to many fields such as object recognition and crowed counting with promising results that are proven to be better than human observer. In order to evaluate the proposed asset management approach, a sample of images was randomly selected from a given dataset, the inventory results generated by the CNN based model are accurate, faster and cheaper than the previous approach based on human observers and helicopters.
引用
收藏
页码:307 / 320
页数:13
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