Identifying Motor Faults using Machine Learning for Predictive Maintenance

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  • čas přidán 23. 07. 2024
  • 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:
    - Accessing and exploring large datasets
    - Interactively extracting and ranking features
    - Training machine learning algorithms
    - Generating synthetic data from models
    - Deploying algorithms in operation
    Check out other Predictive Maintenance examples: bit.ly/PdM-Examples
    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.
    00:00 Introduction
    02:24 Why Do Predictive Maintenance?
    05:27 Predictive Maintenance Workflow
    07:00 Problem Definition: Broken Rotor Bar Faults
    08:04 Accessing Large Datasets
    08:52 Example: Broken Rotor Fault Detection Example
    10:02 Accessing and Organizing Out-of-Memory Data with File Ensemble Datastore
    13:33 Band Pass Filter Design
    16:20 Processing Data using Diagnostic Feature Designer
    20:23 Generating Time and Frequency Domain Features using Diagnostic Feature Designer
    26:18 Training Machine Learning Models using Classification Learner
    31:50 Machine Learning Model Deployment
    35:45 Summary
    #predictivemaintenance
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Komentáře • 7

  • @shawon97256
    @shawon97256 Před měsícem

    Is it possible for me to have access those data?

  • @mehmetkilic9518
    @mehmetkilic9518 Před 9 měsíci +1

    Awesome contribution. It is a quite good collection of how ML used in FMEA topics electrical machine.

  • @jeremiahsunday1513
    @jeremiahsunday1513 Před 5 měsíci

    Please how do I access the data set?

  • @machk9967
    @machk9967 Před 2 měsíci

    Dear Sir, How to create an "experimental_database_short" file? Merci

  • @guerridalaid6227
    @guerridalaid6227 Před 6 měsíci

    This video is in which playlists please

    • @HansScharler
      @HansScharler Před 5 měsíci

      This one could help: czcams.com/play/PLn8PRpmsu08o0uWUkBnD_r9h2FDy-162o.html