Do you work with operational equipment that collects sensor data? In this seminar, you will learn how you can utilize that data for Predictive Maintenance, the intelligent health monitoring of systems to avoid future equipment failure. Rather than following a traditional maintenance timeline, predictive maintenance schedules are determined by analytic algorithms and data from sensors. With predictive maintenance, organizations can identify issues before equipment fails, pinpoint the root cause of the failure, and schedule maintenance as soon as it’s needed.
Highlights:
Accessing and preprocessing data from a variety of sources
Using machine learning to develop predictive models
Creating dashboards for visualizing and interacting with model results
Deploying predictive algorithms in production systems and embedded devices
Using simulation to generate data for expensive or hard-to-reproduce failures
Check out other Predictive Maintenance examples: https://bit.ly/PdM-Examples
About the Presenter:
Russell Graves is an Application Engineer at MathWorks focused on machine learning and systems engineering. Prior to joining MathWorks, Russell worked with the University of Tennessee and Oak Ridge National Laboratory in intelligent transportation systems research with a focus on multi-agent machine learning and complex systems controls. Russell holds a B.S. and M.S. in Mechanical Engineering from The University of Tennessee and is a late-stage mechanical engineering doctoral candidate.
Chapters:
00:00 Introduction
00:47 Why do Predictive Maintenance?
05:07 Predictive Maintenance Concepts
08:51 Condition Monitoring in MATLAB
10:08 Extracting Features using Diagnostic Feature Designer
17:11 Training Machine Learning Models using Classification Learner
22:25 Predicting Remaining Useful Life
24:39 Training an Exponential Degradation Model
28:13 System Modeling for Predictive Maintenance in Simulink
31:40 Deploying Predictive Maintenance Algorithms
34:00 Summary
#predictivemaintenance
--------------------------------------------------------------------------------------------------------
Get a free product trial: https://goo.gl/ZHFb5u
Learn more about MATLAB: https://goo.gl/8QV7ZZ
Learn more about Simulink: https://goo.gl/nqnbLe
See what's new in MATLAB and Simulink: https://goo.gl/pgGtod
© 2023 The MathWorks, Inc. MATLAB and Simulink are registered trademarks of The MathWorks, Inc.
See www.mathworks.com/trademarks for a list of additional trademarks. Other product or brand names may be trademarks or registered trademarks of their respective holders.
Смотрите видео Predictive Maintenance with MATLAB: A Data-Based Approach онлайн без регистрации, длительностью часов минут секунд в хорошем качестве. Это видео добавил пользователь MATLAB 19 Октябрь 2023, не забудьте поделиться им ссылкой с друзьями и знакомыми, на нашем сайте его посмотрели 11,23 раз и оно понравилось 26 людям.