Litcius/Paper detail

A study of micromanufacturing process fingerprints in micro-injection moulding for machine learning and Industry 4.0 applications

Mert Gülçür, Ben Whiteside

2021The International Journal of Advanced Manufacturing Technology20 citationsDOIOpen Access PDF

Abstract

Abstract This paper discusses micromanufacturing process quality proxies called “process fingerprints” in micro-injection moulding for establishing in-line quality assurance and machine learning models for Industry 4.0 applications. Process fingerprints that we present in this study are purely physical proxies of the product quality and need tangible rationale regarding their selection criteria such as sensitivity, cost-effectiveness, and robustness. Proposed methods and selection reasons for process fingerprints are also justified by analysing the temporally collected data with respect to the microreplication efficiency. Extracted process fingerprints were also used in a multiple linear regression scenario where they bring actionable insights for creating traceable and cost-effective supervised machine learning models in challenging micro-injection moulding environments. Multiple linear regression model demonstrated %84 accuracy in predicting the quality of the process, which is significant as far as the extreme process conditions and product features are concerned.

Topics & Concepts

Robustness (evolution)Process (computing)Machine learningQuality assuranceQuality (philosophy)Computer scienceProduct (mathematics)Artificial intelligenceLinear regressionEngineeringIndustrial engineeringData miningManufacturing engineeringMathematicsOperations managementChemistryGeometryEpistemologyPhilosophyExternal quality assessmentBiochemistryGeneOperating systemInjection Molding Process and PropertiesAdditive Manufacturing and 3D Printing TechnologiesManufacturing Process and Optimization