Industrial process optimisation using artificial intelligence

Abstract

The integration of Artificial Intelligence (AI) in industrial processes is a transformative development, reshaping the landscape of modern manufacturing and production. This thesis, titled (Optimization of Industrial Processes Using Artificial Intelligence), seeks to demonstrate the vast potential of AI in enhancing the efficiency, quality, and adaptability of various industrial processes. It begins by establishing a foundation in the broad application of AI across diverse sectors, highlighting how these technologies are revolutionizing traditional practices through improved decision-making, predictive analytics, and process optimization. The thesis then narrows its focus to a specific industrial process – thermal and cold spray technology in surface engineering. This sector, significant for its role in product enhancement and functionality, is on the cusp of a major shift thanks to the digital transformation driven by AI and Industrial Digital Technologies (IDTs). The study reviews ex ...
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DOI
10.12681/eadd/55910
Handle URL
http://hdl.handle.net/10442/hedi/55910
ND
55910
Alternative title
Βελτιστοποίηση βιομηχανικών διεργασιών με χρήση τεχνητής νοημοσύνης
Author
Malamousi, Konstantina (Father's name: Ioannis)
Date
2024
Degree Grantor
University of Thessaly (UTH)
Committee members
Δελήμπασης Κωνσταντίνος
Πλαγιανάκος Βασίλειος
Τασούλης Σωτήριος
Αδάμ Μαρία
Καράντζαλης Αλέξανδρος
Καρακασίδης Θεόδωρος
Βαρθολομαίος Παναγιώτης
Discipline
Natural SciencesComputer and Information Sciences ➨ Artificial Intelligence
Keywords
Artificial intelligence; Machine learning; CNNs; Thermal spray; IoT
Country
Greece
Language
English
Description
im., tbls., ch.
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