No Cover Image

Journal article 705 views

Progress in Predictive Asset Maintenance Management

Daniel Rees Orcid Logo, Roderick Thomas Orcid Logo

International Journal of Condition Monitoring and Diagnostics Engineering Management, Volume: 24, Issue: 3, Pages: 39 - 45

Swansea University Authors: Daniel Rees Orcid Logo, Roderick Thomas Orcid Logo

Full text not available from this repository: check for access using links below.

Abstract

Optimised Asset Management in recent years has embraced a rapid diffusion of innovation and disruptive technology, especially with reference to conditionmonitoring and predictive maintenance. The integration of this technology and associated communication technologies are improving operational aspec...

Full description

Published in: International Journal of Condition Monitoring and Diagnostics Engineering Management
ISSN: 1363-7681
Published: COMADEM International ,UK 2021
Online Access: Check full text

URI: https://cronfa.swan.ac.uk/Record/cronfa58036
Tags: Add Tag
No Tags, Be the first to tag this record!
Abstract: Optimised Asset Management in recent years has embraced a rapid diffusion of innovation and disruptive technology, especially with reference to conditionmonitoring and predictive maintenance. The integration of this technology and associated communication technologies are improving operational aspectsof industry, including predicting condition asset failure. Some assets in the future will be connected to the Internet of Things (IoT), Cloud Computing, BigData including virtual and augmented reality which will be the gateway to enhanced communication including self-diagnosing capabilities driven by expertsystems. Asset connectivity and predictive analytics will discern patterns and algorithms leading to optimised plant production, and enhanced energyefficiency. Machine learning models will indicate future operation on a real-time basis using big data libraries, tabular databases especially with referenceto condition monitoring. This paper reviews the role maintenance has in optimising asset operation.
Keywords: Asset Management, Disruptive Technology, Condition Monitoring, Infrared Thermography, Reliability Based Maintenance.
College: Faculty of Humanities and Social Sciences
Funders: School of Management
Issue: 3
Start Page: 39
End Page: 45