Detecting and classifying defects on the surface of water heaters: Development of an automated system

IF 2.3 4区 工程技术 Q2 ENGINEERING, MECHANICAL
Ângela Semitela, André Ferreira, António Completo, Nuno Lau, José P Santos
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Abstract

Seeking a total automation of the existing industrial processes, manual product quality control systems have been gradually replaced by automated ones, to significantly improve efficiency and speed, and ultimately, increase industrial productivity. In this regard, an automated inspection system was developed in this work to detect and classify defects on the painted surfaces of Bosch Thermotechnology water heaters. This system comprised a deflectometry-based image acquisition module, two light deep learning models built and trained from scratch for defect detection and classification in the painted surfaces and a visual interface. The experimental results confirmed that: (1) deflectometry techniques were crucial for an accurate defect detection; (2) the two lightweight models – for detection and classification – rapidly achieved high accuracies, even in the testing stage, demonstrating their high performance regardless of their small size; (3) the developed system was able to correctly and quickly predict the status of a painted surface, and then successfully send this status information to a user-friendly visual interface, validating its suitability for an industrial setting. Overall, this system demonstrated great potential as a suitable alternative to the existing manual inspection of the painted surfaces of Bosch Thermotechnology water heaters.
对热水器表面的缺陷进行检测和分类:开发自动化系统
为了实现现有工业流程的全面自动化,人工产品质量控制系统逐渐被自动化系统所取代,以显著提高效率和速度,最终提高工业生产力。为此,我们开发了一套自动检测系统,用于检测博世热力技术热水器喷漆表面的缺陷并对其进行分类。该系统由一个基于偏转测量的图像采集模块、两个从零开始建立和训练的轻型深度学习模型(用于检测和分类涂漆表面的缺陷)和一个可视化界面组成。实验结果证实(1) 偏转测量技术对于准确检测缺陷至关重要;(2) 用于检测和分类的两个轻量级模型即使在测试阶段也能迅速达到很高的准确度,这证明了它们的高性能,尽管它们的体积很小;(3) 所开发的系统能够正确、快速地预测油漆表面的状态,然后成功地将这些状态信息发送到用户友好的可视化界面,验证了其在工业环境中的适用性。总之,该系统作为博世热力技术热水器油漆表面现有人工检测的合适替代方案,显示出巨大的潜力。
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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来源期刊
CiteScore
3.80
自引率
16.70%
发文量
370
审稿时长
6 months
期刊介绍: The Journal of Process Mechanical Engineering publishes high-quality, peer-reviewed papers covering a broad area of mechanical engineering activities associated with the design and operation of process equipment.
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