Title:
Real-time Data Analytics for Condition Monitoring of Complex Industrial Systems

Thumbnail Image
Author(s)
Peters, Benjamin
Authors
Advisor(s)
Gebraeel, Nagi
Advisor(s)
Editor(s)
Associated Organization(s)
Series
Supplementary to
Abstract
Modern industrial systems are now fitted with several sensors for condition monitoring. This is advantageous because these sensors can provide mass amounts of data that have the potential for aiding in tasks such as fault detection, diagnosis, and prognostics. However, the information valuable for performing these tasks is often clouded in noise and must be mined from high-dimensional data structures. Therefore, this dissertation presents a data analytics framework for performing these condition monitoring tasks using high-dimensional data. Demonstrations of this framework are detailed for challenges related to power generation systems in automobiles, power plants, and aircraft engines. These implementations leverage data collected from state-of-the-art, industry class test-rigs. Results indicate the ability of this framework to develop effective methodologies for condition monitoring of complex systems.
Sponsor
Date Issued
2021-12-14
Extent
Resource Type
Text
Resource Subtype
Dissertation
Rights Statement
Rights URI