Jump to content

Predictive Maintenance: Difference between revisions

No edit summary
Line 4:
''This page is about the applications of machine learning (ML) in the context of predictive maintenance. For an overview of predictive maintenance more generally, please see the [https://en.wikipedia.org/wiki/Predictive_maintenance Wikipedia page] on this topic.''
 
Quickly detecting power system faults can help reduce power system waste or improve the utilization of low-carbon energy resources. ML can help detect faults in real time from sensor data, or even forecast them ahead of time to enable preemptive maintenance.
 
 
 
<u>Naval Example of Maintenance System</u>
 
The US Navy operates one of the largest and most complicated fleets on the planet. The lessons learned here<sup>[1]</sup> are broadly applicable to the data requirements of any predictive maintenance software. Migrating legacy software to be compatible with modern algorithms is a large open area of research in predictive maintenance. Not only is predictive maintenance an opp
 
==Background Readings==
 
# Wilson, Bradley, Jessie Riposo, Thomas Goughnour, Rachel M. Burns, Michael J. D. Vermeer, Ajay K. Kochhar, Angelena Bohman, and Mel Eisman, Naval Aviation Maintenance System: Analysis of Alternatives. Santa Monica, CA: RAND Corporation, 2020. <nowiki>https://www.rand.org/pubs/research_reports/RR2974z1.html</nowiki>. Also available in print form.
 
==Conferences, Journals, and Professional Organizations==
==Libraries and Tools==
Cookies help us deliver our services. By using our services, you agree to our use of cookies.