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عنوان
A Dynamic Mode Decomposition Based Deep Learning Technique for Prognostics

پدید آورنده
Akkad, Khaled Mohammad A.

موضوع
Industrial engineering

رده

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

NATIONAL BIBLIOGRAPHY NUMBER

Number
TL58061

LANGUAGE OF THE ITEM

.Language of Text, Soundtrack etc
انگلیسی

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
A Dynamic Mode Decomposition Based Deep Learning Technique for Prognostics
General Material Designation
[Thesis]
First Statement of Responsibility
Akkad, Khaled Mohammad A.
Subsequent Statement of Responsibility
He, David

.PUBLICATION, DISTRIBUTION, ETC

Name of Publisher, Distributor, etc.
University of Illinois at Chicago
Date of Publication, Distribution, etc.
2020

GENERAL NOTES

Text of Note
116 p.

DISSERTATION (THESIS) NOTE

Dissertation or thesis details and type of degree
Ph.D.
Body granting the degree
University of Illinois at Chicago
Text preceding or following the note
2020

SUMMARY OR ABSTRACT

Text of Note
Remaining useful life is one of the key indicators for mechanical equipment health and condition-based maintenance requirements. The field of prognostics and health management heavily relies on remaining useful life estimation. Due to the magnitude of monetary costs associated with failure of mechanical equipment, remaining useful life prediction has become one of the pillars of the prognostics and health management field. The availability of industrial big data enabled remarkable research efforts in prognostics. Much of this effort is directed at the development and improvement of deep learning based prognostic techniques by means of creating hybrid models, hyperparameter optimization, and other approaches. This dissertation aims to improve the remaining useful estimation capabilities of deep learning prognostic techniques by integrating a physics based approach into deep learning schemes. This physics based approach is the Koopman operator which produces infinitely linear representations of nonlinear systems with known equations. These infinite representations need to be approximated via a data driven approach for the purposes of obtaining health indicators useful for predicting the remaining useful of industrial machines and equipment. Dynamic mode decomposition is a data driven approach for approximating the modes of the Koopman operator. In this dissertation, dynamic mode decomposition is incorporated into a variety of deep learning prognostic schemes to enhance the performance of the remaining useful estimation. Two industrial applications are utilized to validate the proposed approach. The first application is the NASA spiral bevel gear vibration data. The second application is the NASA commercial modular aero-propulsion system simulated vibration data of turbofan engines. The proposed approach demonstrates an increase in accuracy of remaining useful estimation in both applications and across all datasets therein when the dynamic mode decomposition is in incorporated into the deep learning prognostic schemes.

UNCONTROLLED SUBJECT TERMS

Subject Term
Industrial engineering

PERSONAL NAME - PRIMARY RESPONSIBILITY

Akkad, Khaled Mohammad A.

PERSONAL NAME - SECONDARY RESPONSIBILITY

He, David

CORPORATE BODY NAME - SECONDARY RESPONSIBILITY

University of Illinois at Chicago

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

p

[Thesis]
276903

a
Y

Proposal/Bug Report

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