Intelligent sensing for robotic re-manufacturing in aerospace — An industry 4.0 design based prototype

R. French, Michalis Benakis, H. Marin-Reyes
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引用次数: 24

Abstract

Emerging through an industry-academia collaboration between the University of Sheffield and VBC Instrument Engineering Ltd, a proposed robotic solution for remanufacturing of jet engine compressor blades is under ongoing development, producing the first tangible results for evaluation. Having successfully overcome concept adaptation, funding mechanisms, design processes, with research and development trials, the stage of concept optimization and end-user application has commenced. A variety of new challenges is emerging, with multiple parameters requiring control and intelligence. An interlinked collaboration between operational controllers, Quality Assurance (QA) and Quality Control (QC) systems, databases, safety and monitoring systems, is creating a complex network, transforming the traditional manual re-manufacturing method to an advanced intelligent modern smart-factory. Incorporating machine vision systems for characterization, inspection and fault detection, alongside advanced real-time sensor data acquisition for monitoring and evaluating the welding process, a huge amount of valuable industrial data is produced. Information regarding each individual blade is combined with data acquired from the system, embedding data analytics and the concept of “Internet of Things” (IoT) into the aerospace re-manufacturing industry. The aim of this paper is to give a first insight into the challenges of the development of an Industry 4.0 prototype system and an evaluation of first results of the operational prototype.
航空航天中机器人再制造的智能传感。基于工业4.0设计的原型
谢菲尔德大学和VBC仪器工程有限公司之间的产学研合作,提出了一种用于喷气发动机压气机叶片再制造的机器人解决方案,目前正在开发中,并产生了第一个可供评估的切实结果。在成功克服概念适应、资助机制、设计过程、研究和开发试验之后,概念优化和最终用户应用阶段已经开始。各种各样的新挑战正在出现,需要控制和智能的多个参数。操作控制器、质量保证(QA)和质量控制(QC)系统、数据库、安全和监控系统之间的相互关联协作正在创建一个复杂的网络,将传统的人工再制造方法转变为先进的智能现代智能工厂。结合机器视觉系统进行表征,检查和故障检测,以及用于监测和评估焊接过程的先进实时传感器数据采集,产生了大量有价值的工业数据。有关每个叶片的信息与从系统获取的数据相结合,将数据分析和“物联网”(IoT)概念嵌入航空航天再制造行业。本文的目的是首次深入了解工业4.0原型系统开发的挑战,并对可操作原型的初步结果进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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