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利用边缘人工智能实现工业自主运输车辆的实时故障检测和状态监测。

Real-Time Fault Detection and Condition Monitoring for Industrial Autonomous Transfer Vehicles Utilizing Edge Artificial Intelligence.

机构信息

Department of Informatics, Eskisehir Osmangazi University, Eskisehir 26040, Turkey.

Center of Intelligent Systems Applications and Research (CISAR), Eskisehir Osmangazi University, Eskisehir 26040, Turkey.

出版信息

Sensors (Basel). 2022 Apr 22;22(9):3208. doi: 10.3390/s22093208.

Abstract

Early fault detection and real-time condition monitoring systems have become quite significant for today's modern industrial systems. In a high volume of manufacturing facilities, fleets of equipment are expected to operate uninterrupted for days or weeks. Any unplanned interruptions to equipment uptime could jeopardize manufacturers' cycle time, capacity, and, most significantly, credibility for their customers. With the help of smart manufacturing technologies, companies have started to develop and integrate fault detection and classification systems where end-to-end constant monitoring of equipment is facilitated, and smart algorithms are adapted for the early generation of fault alarms and classification. This paper proposes a generic real-time fault diagnosis and condition monitoring system utilizing edge artificial intelligence (edge AI) and a data distributor open source middleware platform called FIWARE. The implemented system architecture is flexible and includes interfaces that can be easily expanded for various devices. This work demonstrates it for condition monitoring of autonomous transfer vehicle (ATV) equipment targeting a smart factory use case. The system is verified in a designated industrial model environment in a lab with a single ATV operation. The anomaly conditions of the ATV are diagnosed by a deep learning-based fault diagnosis method performed in the Edge AI unit, and the results are transferred to the data storage via a data pipeline setup. The proposed system's Edge AI solution for the ATV use case provides significant real-time performance. The network bandwidth requirement and total elapsed data transfer time have been reduced by 43 and 37 times, respectively. The proposed system successfully enables real-time monitoring of ATV fault conditions and expands to a fleet of equipment in a real manufacturing facility.

摘要

早期故障检测和实时状态监测系统对于当今的现代工业系统变得非常重要。在大量制造设施中,设备机组被期望能够连续运行数天或数周而不中断。任何设备正常运行时间的计划外中断都可能危及制造商的周期时间、产能,最重要的是,危及他们客户的信誉。在智能制造技术的帮助下,公司开始开发和集成故障检测和分类系统,从而实现设备的端到端持续监控,并采用智能算法实现早期故障报警和分类。本文提出了一种利用边缘人工智能(edge AI)和称为 FIWARE 的开源数据分发中间件平台的通用实时故障诊断和状态监测系统。所实现的系统架构具有灵活性,并包含可以轻松扩展到各种设备的接口。这项工作针对智能工厂用例展示了对自主运输车辆(ATV)设备的状态监测。该系统在实验室的指定工业模型环境中针对单个 ATV 操作进行了验证。通过在边缘 AI 单元中执行基于深度学习的故障诊断方法对 ATV 的异常情况进行诊断,并通过数据管道设置将结果传输到数据存储中。所提出的用于 ATV 用例的系统的边缘 AI 解决方案提供了显著的实时性能。网络带宽要求和总数据传输时间分别减少了 43 倍和 37 倍。该系统成功实现了 ATV 故障状态的实时监测,并扩展到实际制造设施中的设备机组。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d2e0/9105012/77bbf4743597/sensors-22-03208-g001.jpg

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