Machine learning algorithms for manufacturing quality assurance: A systematic review of performance metrics and applications

被引:3
作者
Kausik, Ashfakul Karim [1 ]
Bin Rashid, Adib [1 ]
Baki, Ramisha Fariha [2 ]
Maktum, Md Mifthahul Jannat [3 ]
机构
[1] Mil Inst Sci & Technol MIST, Ind & Prod Engn Dept, Dhaka, Bangladesh
[2] Mil Inst Sci & Technol MIST, Comp Sci & Engn Dept, Dhaka, Bangladesh
[3] Mil Inst Sci & Technol MIST, Naval Architecture & Marine Engn Dept, Dhaka, Bangladesh
关键词
Machine learning; Quality assurance; Artificial intelligence; Artificial neural networks; Predictive analytics; Process optimization; Decision trees; Object detection; KNN; SVM; Clustering algorithms; NEAREST NEIGHBOR RULE; NEURAL-NETWORKS; INDUSTRY; 4.0; ARTIFICIAL-INTELLIGENCE; DEFECT DETECTION; FAULT-DETECTION; DIGITAL TWIN; CLASSIFICATION; OPTIMIZATION; PREDICTION;
D O I
10.1016/j.array.2025.100393
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Adopting Machine Learning (ML) in manufacturing quality assurance (QA) has accelerated with Industry 4.0, enabling automated defect detection, predictive maintenance, and real-time process optimization. However, selecting the most effective ML model remains challenging due to performance variability, scalability constraints, and inconsistent evaluation metrics across manufacturing sectors. This systematic review analyzes over 300 peerreviewed studies over the last two decades (mostly analyzing the recent works) to evaluate the effectiveness of widely used ML algorithms-Artificial Neural Networks (ANNs), Support Vector Machines (SVMs), Random Forests (RFs), Decision Trees (DTs), and K-Nearest Neighbors (KNN)-in QA applications. Performance metrics include accuracy, precision, speed, recall, computational efficiency, scalability, and real-time processing capabilities. Findings reveal that ANNs outperform other models in image-based defect detection, while SVMs and RFs excel in predictive maintenance and process parameter optimization. DTs provide better interpretability for process control, and KNN is effective for small-scale QA implementations. In specific case scenarios, RF models showed particular strength in handling high-dimensional sensor data in fault detection in manufacturing quality assurance operations. The study presents a comparative assessment framework, guiding algorithm selection based on industry-specific requirements and operational constraints. This review provides the latest implementation of ML in QA along with quantitative evidence on which algorithm offers the most optimization in specific industrial settings, which would help in algorithm selection in manufacturing quality assurance in future for both researchers and industrial experts. Also, it offers an overview of the major and minor algorithms based on their performance metrics.
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页数:30
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