Identifying Motor Faults using Machine Learning for Predictive Maintenance
Overview
Do you want to identify faults in equipment using sensor data? In this webinar, you will learn how to build data-driven fault detection algorithms for induction motors – even if you aren’t a machine learning expert. Starting with a dataset collected from motor hardware, we will walk through the end-to-end process of developing a predictive maintenance algorithm.
Highlights
Highlights include:
- Accessing and exploring large datasets
- Interactively extracting and ranking features
- Training machine learning algorithms
- Generating synthetic data from models
- Deploying algorithms in operation
About the Presenters
Dakai Hu joined MathWorks’ Application Engineering Group in 2015. He mainly supports automotive engineers in North America working on electrification. His area of expertise includes e-motor drives control system design, physical modeling, and model-based calibration workflows. Before joining MathWorks, Dakai earned his Ph.D in electrical engineering from The Ohio State University, in 2014, where he published 5 first-author IEEE conference and transaction papers in the area of traction e-motor modeling and controls.
Shyam Keshavmurthy is an Application Engineer who focuses on digital twins and AI. He has been at MathWorks for 3 years, and has 20+ years of experience in applying AI for quality and operational data. He has a Ph.D. in Nuclear Engineering and Computer Science.
Recorded: 16 Aug 2023