使用基于人工智能的方法对产品可修复性进行自动评估和评级

IF 2.4 3区 工程技术 Q3 ENGINEERING, MANUFACTURING Journal of Manufacturing Science and Engineering-transactions of The Asme Pub Date : 2023-11-01 DOI:10.1115/1.4063561
Hao-Yu Liao, Behzad Esmaeilian, Sara Behdad
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引用次数: 0

摘要

尽管产品可修复性很重要,但目前评估和分级可修复性的方法有限,这阻碍了设计师、再制造商、原始设备制造商(oem)和维修店的努力。为了提高产品可修复性评估的效率,本研究引入了两种基于人工智能(AI)的方法。第一种方法是一个监督学习框架,它利用产品拆解图像上的对象检测来测量可修复性。迁移学习与机器学习架构(如ConvNeXt, GoogLeNet, ResNet50和VGG16)一起用于评估可修复性分数。第二种方法是一种无监督学习框架,它结合了特征提取和聚类学习来识别产品设计特征,并将具有相似设计的设备分组。利用面向FAST和旋转BRIEF特征提取器(ORB)以及k-means聚类从拆解图像中提取特征,并对具有相似设计的产品进行分类。为了演示这些评估方法的应用,智能手机被用作案例研究。研究结果强调了人工智能在开发产品可修复性评估和评级自动化系统方面的潜力。
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AUTOMATED EVALUATION AND RATING OF PRODUCT REPAIRABILITY USING ARTIFICIAL INTELLIGENCE-BASED APPROACHES
Abstract Despite the importance of product repairability, current methods for assessing and grading repairability are limited, which hampers the efforts of designers, remanufacturers, original equipment manufacturers (OEMs), and repair shops. To improve the efficiency of assessing product repairability, this study introduces two artificial intelligence (AI) based approaches. The first approach is a supervised learning framework that utilizes object detection on product teardown images to measure repairability. Transfer learning is employed with machine learning architectures such as ConvNeXt, GoogLeNet, ResNet50, and VGG16 to evaluate repairability scores. The second approach is an unsupervised learning framework that combines feature extraction and cluster learning to identify product design features and group devices with similar designs. It utilizes an oriented FAST and rotated BRIEF feature extractor (ORB) along with k-means clustering to extract features from teardown images and categorize products with similar designs. To demonstrate the application of these assessment approaches, smartphones are used as a case study. The results highlight the potential of artificial intelligence in developing an automated system for assessing and rating product repairability.
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来源期刊
CiteScore
6.80
自引率
20.00%
发文量
126
审稿时长
12 months
期刊介绍: Areas of interest including, but not limited to: Additive manufacturing; Advanced materials and processing; Assembly; Biomedical manufacturing; Bulk deformation processes (e.g., extrusion, forging, wire drawing, etc.); CAD/CAM/CAE; Computer-integrated manufacturing; Control and automation; Cyber-physical systems in manufacturing; Data science-enhanced manufacturing; Design for manufacturing; Electrical and electrochemical machining; Grinding and abrasive processes; Injection molding and other polymer fabrication processes; Inspection and quality control; Laser processes; Machine tool dynamics; Machining processes; Materials handling; Metrology; Micro- and nano-machining and processing; Modeling and simulation; Nontraditional manufacturing processes; Plant engineering and maintenance; Powder processing; Precision and ultra-precision machining; Process engineering; Process planning; Production systems optimization; Rapid prototyping and solid freeform fabrication; Robotics and flexible tooling; Sensing, monitoring, and diagnostics; Sheet and tube metal forming; Sustainable manufacturing; Tribology in manufacturing; Welding and joining
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