采用可扩展技术实现航空加工过程的实时监控

E. Tapia, Leonardo Sastoque-Pinilla, Norberto López de Lacalle, Unai Lopez-Novoa
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引用次数: 2

摘要

航空制造业目前正参与第四次工业革命,即工业4.0,在信息通信技术的支持下改善制造流程。这场革命的目标之一是能够预测可能具有经济和操作影响的制造缺陷。在这项工作中,我们提出了一个软件平台,该平台使用可扩展的软件工具,接近实时地监测和检测工业制造过程中的异常值。我们的平台从机器上收集数据,对其进行处理,并在仪表板上显示结果。IQR方法用于检测制造过程中的异常值。我们通过监测位于西班牙Zamudio航空先进制造中心的Ibarmia THR 16多功能加工中心来验证我们的平台。我们以几种方式对我们的平台进行了性能评估,并展示了结果,突出了诸如OPC-UA工业通信协议的限制等瓶颈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards real time monitoring of an aeronautical machining process using scalable technologies
The aeronautical manufacturing sector is currently involved in the 4th industrial revolution, namely Industry 4.0, improving manufacturing processes with the support of ICT. One of the objectives of this revolution is to be able to predict manufacturing defects that can have economic and operational impacts. In this work, we present a software platform that monitors and detects outliers in an industrial manufacturing process, close to real time, using scalable software tools. Our platform collects data from a machine, processes it and plots visualizations in a dashboard with the results. The IQR method is used to detect outliers in the manufacturing process. We validate our platform by monitoring an Ibarmia THR 16, a versatile machining centre, located at the Aeronautics Advanced Manufacturing Centre in Zamudio, Spain. We conduct a performance evaluation of our platform in several ways and present the results, highlighting bottlenecks such as the limits of the OPC-UA industrial communication protocol.
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