Theses/Dissertations
Author Halligan, Gary (Gary Ray), 1981-

Title Fault detection and prediction with application to rotating machinery / by Gary Halligan.

Published ©2009.
LOCATION CALL # STATUS
 MST DEPOSITORY  THESIS T 9568/9595  MICROFILM    NOT CHECKED OUT
 MST Thesis  THESIS T 9576    NOT CHECKED OUT
Description x, 79 leaves : illustrations ; 28 cm
Summary "In this thesis, the detection and prediction of faults in rotating machinery is undertaken and presented in two papers. In the first paper, Principal Component Analysis (PCA), a well known data-driven dimension reduction technique, is applied to data for normal operation and four fault conditions from a one-half horsepower centrifugal water pump. Fault isolation in this scheme is done by observing the location of the data points in the Principal Component domain, and the time to failure (TTF) is calculated by applying statistical regression on the resulting PC scores. The application of the proposed scheme demonstrated that PCA was able to detect and isolate all four faults. Additionally, the TTF calculation for the impeller failure was found to yield satisfactory results. On the other hand, in the second paper, the fault detection and failure prediction are done by using a model based approach which utilizes a nonlinear observer consisting of an online approximator in discrete-time (OLAD) and a robust adaptive term. Once a fault has been detected, both the OLAD and the robust adaptive term are initiated and the OLAD then utilizes its update law to learn the unknown dynamics of the encountered fault. While in similar applications it is common to use neural networks to be used for the OLAD, in this paper an Artificial Immune System (AIS) is used for the OLAD. The proposed approach was verified through implementation on data from an axial piston pump. The scheme was able to satisfactorily detect and learn both an incipient piston wear fault and an abrupt sensor failure"--Abstract, leaf iv.
Notes Vita.
M.S. Missouri University of Science and Technology 2009.
Includes bibliographical references.
Subjects Fault location (Engineering)
Electric machinery.
Principal components analysis.
Artificial intelligence -- Computer programs.
Other Titles MST thesis. Electrical Engineering (M.S., 2009).
PCA-based fault isolation and prognosis with application to water pump.
Novel fault detection and prediction scheme in discrete-time using a nonlinear observer and artificial immune system as an online approximator.
OCLC/WorldCat Number 612380707