AI-Assisted Predictive Maintenance for Industrial Machines

Predictive Maintenance has become a crucial topic in the industry, enabling early detection of potential ma- chine failures through changing measurements. Vibra- tions, current, and temperature are key metrics ana- lyzed to prevent downtime. Despite its importance, understanding how faults influence measurements re- mains challenging, often requiring detailed knowledge of machine structures and components. This thesis ex- plores the potential of AI to enhance damage detec- tion and localization, leveraging innovative techniques to improve industrial maintenance processes.

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Student Target Groups:

  • Computer Science (CS)
  • Information and Computer Engineering (ICE)
  • Electrical Engineering (EE)

Thesis Type:

  • Master Thesis / Master’s Project

Goal and Tasks:

  • Investigate existing AI methods for Predictive Main- tenance (e.g., Classification, Anomaly Detection).
  • Compare MCU platforms for AI implementation.
  • Develop a Predictive Maintenance system using the X20AI4632 module and Renesas R7FA4M2AB3CNE.
  • Evaluate system performance and reliability on real-world hardware setups.

Recommended Prior Knowledge:

  • Basics of Machine Learning and AI
  • Embedded Systems and Microcontrollers
  • Signal Processing and Analysis
  • Programming Skills (e.g., Python, C/C++)

Start:

  • a.s.a.p.

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