基于机器人的尾矿管接头早期损伤检测的深度学习

Levi Welington de Resende Filho, A. Santos, Héctor Azpúrua, G. Garcia, G. Pessin
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引用次数: 1

摘要

在采矿业,通常使用几公里长的管道将尾矿从工厂输送到大坝。仅在Salobo铜矿,即Vale s.a.在亚马逊森林中的铜矿,就有超过3.5公里长的尾矿管道。由于通过尾管的物质会造成磨损,可能导致故障,因此需要定期检查。然而,考虑到人工检查的危险环境,远程操作或自主机器人是跟踪管道健康状况的关键工具。在这项工作中,我们提出了一种深度学习方法来处理来自机器人的图像数据流,旨在直接在设备的机载计算机上实时检测早期故障。评估了深度学习图像分类的多种架构,以检测异常。我们验证了早期损伤检测的准确性,并使用网络的类激活映射确定了异常的大致位置。然后,我们测试了在不同硬件上获得最佳结果的网络架构的运行时,以分析机器人板载GPU的需求。此外,我们还训练了一个Single Shot object Detector来寻找管道接头的边界,这意味着只有在检测到接头时才进行异常分类。我们的研究结果表明,在机器人软件中构建自动异常检测系统是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Early Damage Detection of Tailing Pipes Joints with a Robotic Device
In the mining industry, it is usual to employ several kilometers of pipes to carry tailing from the plant to a dam. Only in the Salobo Mine, a copper operation in the Amazon forest from Vale S.A., there are more than three and a half kilometers of tailing pipes. Since the material passing through the tailing pipe causes an abrasion effect that could lead to failures, regular inspections are needed. However, given the risky environment to perform manual inspections, a teleoperated or autonomous robot is a crucial tool to keep track of the pipe health. In this work, we propose a deep-learning methodology to process the data stream of images from the robot, aiming to detect early failures directly on the onboard computer of the device in real-time. Multiple architectures of deep-learning image classification were evaluated to detect the anomalies. We validated the early damage detection accuracy and pinpointed the approximate location of the anomalies using the Class Activation Mapping of the networks. Then, we tested the runtime for the network architectures that obtained the best results on different hardware to analyze the need for a GPU onboard in the robot. Moreover, we also trained a Single Shot object Detector to find the boundaries of the pipe joints, which means that the anomaly classification is performed only when a joint is detected. Our results show that it is possible to build an automatic anomaly detection system in the software of the robot.
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