4.7 Review

Machine learning and deep learning based predictive quality in manufacturing: a systematic review

Journal

JOURNAL OF INTELLIGENT MANUFACTURING
Volume 33, Issue 7, Pages 1879-1905

Publisher

SPRINGER
DOI: 10.1007/s10845-022-01963-8

Keywords

Industry 4; 0; Predictive quality; Machine learning; Deep learning; Manufacturing; Quality assurance; Artificial intelligence

Funding

  1. Projekt DEAL

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This paper presents a comprehensive review of scientific publications on predictive quality in manufacturing from 2012 to 2021. The review provides insights into the current state of research, various approaches and their applications, and the challenges in this field. The paper also highlights future research directions to address the open challenges in predictive quality.
With the ongoing digitization of the manufacturing industry and the ability to bring together data from manufacturing processes and quality measurements, there is enormous potential to use machine learning and deep learning techniques for quality assurance. In this context, predictive quality enables manufacturing companies to make data-driven estimations about the product quality based on process data. In the current state of research, numerous approaches to predictive quality exist in a wide variety of use cases and domains. Their applications range from quality predictions during production using sensor data to automated quality inspection in the field based on measurement data. However, there is currently a lack of an overall view of where predictive quality research stands as a whole, what approaches are currently being investigated, and what challenges currently exist. This paper addresses these issues by conducting a comprehensive and systematic review of scientific publications between 2012 and 2021 dealing with predictive quality in manufacturing. The publications are categorized according to the manufacturing processes they address as well as the data bases and machine learning models they use. In this process, key insights into the scope of this field are collected along with gaps and similarities in the solution approaches. Finally, open challenges for predictive quality are derived from the results and an outlook on future research directions to solve them is provided.

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