Automated Evaluation and Rating of Product Repairability Using Artificial Intelligence-Based Approaches

Author:

Liao Hao-Yu1,Esmaeilian Behzad2,Behdad Sara1

Affiliation:

1. University of Florida Environmental Engineering Sciences, , Gainesville, FL 32611

2. Tuskegee University College of Business and Information Science, , Tuskegee, AL 36088

Abstract

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.

Funder

National Science Foundation

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Science Applications,Mechanical Engineering,Control and Systems Engineering

Reference71 articles.

1. How to Close the Digital Divide in the U.S.;Chakravorti,2021

2. The Costs of the Digital Divide Are Higher Than Ever. Repair Can Help;US PIRG,2021

3. 28 States File Right to Repair Legislation and Other Repair Updates;Right to Repair,2023

4. Half of U.S. States Looking to Give Americans the Right to Repair;US PIRG,2021

5. Half the Country Is Now Considering Right to Repair Laws;Gault,2021

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