Investigations on machine learning and deep learning techniques for machinery fault diagnosis and tile defect detection in cyber physical systems
Loading...
Date
item.page.authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
In recent years many industries are moving towards the vision of
newlineIndustry 4.0 which includes autonomous, adaptive self-diagnosing machines
newlinereferred to as Cyber Physical Systems (CPS). CPS is an integrated machinery
newlinethat constitutes physical, networking, and computational components of
newlineIndustry 4.0 to provide cutting-edge functionalities. The widespread adoption
newlineof CPS has transformed several industrial sectors by enabling them to
newlineoptimize their manufacturing processes, save costs, and boost production.
newlineThe capacity to accurately identify faults in end-products and automated
newlinemachinery is one of the major challenges in CPS. This is crucial for industrial
newlinequality control applications since regular maintenance downtime and
newlinedamaged end-products can cause considerable losses in production and
newlinerevenue.
newlineThis research thesis explores the potential of machine learning and
newlinedeep learning techniques in the cognition domain of CPS for industrial
newlineappliances such as machinery fault diagnosis and tile defect detection. The
newlineinvestigation delves into diverse algorithms and architectures, evaluating
newlinetheir performance using actual datasets from real-world applications. Firstly,
newlinean enhanced deep learning methodology that can identify various induction
newlinemotor faults, including bearing faults, motor imbalances, and misalignments
newlinewas developed. Furthermore, different machine learning techniques were
newlineanalysed to forecast equipment breakdowns and enhance industry
newlineperformance indicators through preventive maintenance. Finally, an
newlineoptimized deep learning technique is proposed for the identification and
newlineclassification of defective tiles in an assembly line for the production of tiles
newline