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基于图像处理的汽车制造中下线电子控制单元低成本故障检测解决方案

Image-Processing-Based Low-Cost Fault Detection Solution for End-of-Line ECUs in Automotive Manufacturing.

作者信息

Korodi Adrian, Anitei Denis, Boitor Alexandru, Silea Ioan

机构信息

Faculty of Automation and Computers, Department of Automation and Applied Informatics, University Politehnica Timisoara, 300223 Timisoara, Romania.

出版信息

Sensors (Basel). 2020 Jun 22;20(12):3520. doi: 10.3390/s20123520.

DOI:10.3390/s20123520
PMID:32580271
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7349585/
Abstract

The manufacturing industry is continuously researching and developing strategies and solutions to increase product quality and to decrease production time and costs. The approach is always targeting more automated, traceable, and supervised production, minimizing the impact of the human factor. In the automotive industry, the Electronic Control Unit (ECU) manufacturing ends with complex testing, the End-of-Line (EoL) products being afterwards sent to client companies. This paper proposes an image-processing-based low-cost fault detection (IP-LC-FD) solution for the EoL ECUs, aiming for high-quality and fast detection. The IP-LC-FD solution approaches the problem of determining, on the manufacturing line, the correct mounting of the pins in the locations of each connector of the ECU module, respectively, other defects as missing or extra pins, damaged clips, or surface cracks. The IP-LC-FD system is a hardware-software structure, based on Raspberry Pi microcomputers, Pi cameras, respectively, Python and OpenCV environments. This paper presents the two main stages of the research, the experimental model, and the prototype. The rapid integration into the production line represented an important goal, meaning the accomplishment of the specific hard acceptance requirements regarding both performance and functionality. The solution was implemented and tested as an experimental model and prototype in a real industrial environment, proving excellent results.

摘要

制造业一直在不断研究和开发各种策略与解决方案,以提高产品质量、缩短生产时间并降低成本。其方法始终以实现更高的自动化、可追溯性和生产监控为目标,尽量减少人为因素的影响。在汽车行业,电子控制单元(ECU)制造完成后要进行复杂的测试,最终产品随后会被发送到客户公司。本文针对最终产品阶段的ECU提出了一种基于图像处理的低成本故障检测(IP-LC-FD)解决方案,旨在实现高质量和快速检测。IP-LC-FD解决方案致力于解决在生产线上确定ECU模块每个连接器位置处引脚是否正确安装的问题,以及其他诸如引脚缺失或多余、夹子损坏或表面裂纹等缺陷。IP-LC-FD系统是一种基于树莓派微型计算机、Pi摄像头以及Python和OpenCV环境的硬件 - 软件结构。本文介绍了研究的两个主要阶段、实验模型和原型。快速集成到生产线是一个重要目标,表示要满足关于性能和功能的特定严格验收要求。该解决方案在实际工业环境中作为实验模型和原型进行了实施和测试,结果证明非常出色。

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