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Unsupervised Learning and Diagnosis Method for Journal Bearing System in a Large-scale Power Plant

DC Field Value Language
dc.contributor.advisor윤병동-
dc.contributor.author전병철-
dc.date.accessioned2017-07-13T06:24:26Z-
dc.date.available2017-07-13T06:24:26Z-
dc.date.issued2016-02-
dc.identifier.other000000133162-
dc.identifier.urihttps://hdl.handle.net/10371/118525-
dc.description학위논문 (박사)-- 서울대학교 대학원 : 기계항공공학부, 2016. 2. 윤병동.-
dc.description.abstractRotor systems are frequently used in machines and facilities for various industrial applications. Often the rotor systems fail to deliver their designed performance, thus resulting in substantial financial loss. These issues are very critical to some industrial sectors (such as power plants) where journal bearing rotor systems are regularly used. As a result, it is common to implement a diagnosis tool to such rotor systems. Automated diagnosis using data-driven techniques can enable detection of anomalies during early stages and can thus contribute to improved safety and increased cost savings. In the process of developing diagnosis algorithm, the robustness is one of the best important issues. Furthermore, for the diagnosis of a variety of fault conditions that may occur in a real system, the application of unsupervised learning techniques is needed.
In order to facilitate the development of robust diagnosis methodologies for the rotors in journal bearing systems, this research aims at advancing two essential research areas: Research Thrust 1 – datum unit optimization and Research Thrust 2 – omnidirectional regeneration (ODR) of gap sensor signals. In Research Thrust 1, the optimal datum unit will be defined by the comparison of separability and classification performance among feasible datum units. In Research Thrust 2, highly accurate and robust diagnosis approach using ODR signals will be introduced. The virtually generated ODR signals for circumferential direction can fully represent the vibration behavior of rotor system. Following the development of Research Thrust 1 and 2, Research Thrust 3 – unsupervised learning framework for power plant will give the basis of extension to the actual power plant diagnosis. Deep learning for unsupervised technique with high-level feature gives the reliable clustering results for power plant diagnosis.
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dc.description.tableofcontentsChapter 1. Introduction 1
1.1 Background and Motivation 1
1.2 Overview and Significance 2
1.3 Thesis Layout 5

Chapter 2. Literature Review 6
2.1 Data-driven Diagnosis Approach 6
2.2 Diagnosis of Rotor System in a Power Plant 12
2.3 Deep Learning for Unsupervised Training 20

Chapter 3. Journal Bearing Rotor System and Diagnostic Module 27
3.1 Overview of the Journal Bearing Rotor System and Its Behavior 27
3.1.1 Journal Bearing Rotor System Used in a Power Plant 27
3.1.2 Test-bed for Rotor in a Journal Bearing System 28
3.1.3 Physics of rotor system in journal bearing using FEA 33
3.2 Diagnosis Module for a Journal Bearing Rotor System 39
3.2.1 Diagnostics Procedures 40
3.2.2 Time- and Frequency-domain Features 41
3.2.3 Feture Selection Problem 44
3.2.4 Support Vector Machine (SVM) Classifier 46

Chapter 4. Methodology for Datum Unit Optimization 49
4.1 Pre-processing for Gap Sensor Signals 50
4.2 Definition of Feasible Datum Units 52
4.3 Class separability Metrics 54
4.3.1 Kullback-Leibler Divergence (KLD) 54
4.3.2 Fisher Discriminant Ratio (FDR) 55
4.3.3 Probability of Separation (PoS) 56
4.3.4 Discussion on the Measures of Class Separation 57
4.4 Diagnosis Results via Various Datum Units 62
4.4.1 Qualitative Study of Anomaly Diagnosis 63
4.4.2 Quantitative Study of Anomaly Diagnosis 65
4.4.3 Validation through Classification 71

Chapter 5. Omnidirectional Regeneration of Gap Sensor Signals 77
5.1 Omnidirectional Regeneration (ODR) 77
5.1.1 Definition 77
5.1.2 Validation of ODR Signals 82
5.2 Directionality of Health States 84
5.3 Health Classification using ODR Signals 88
5.4 Results of ODR 92
5.4.1 ODR Signals for Health States 92
5.4.2 Directionality for Health States 97
5.4.3 Classification Results by ODR 98

Chapter 6. Unsupervised Learning Framework for Power Plant 103
6.1 Overview of Deep Learning for Diagnosis 103
6.2 Deep Learning Architecture of Gap Sensor Signals 105
6.2.1 Image Generation for Deep Learning 106
6.2.2 Generation of High-level Features 111
6.2.3 Reasoning Algorithms 112
6.3 Results of Deep Learning 115
6.3.1 Supervised Learning Results 115
6.3.2 Unsupervised Learning Results 119

Chapter 7. Contributions and Future Works 123
7.1 Contributions and Impacts 123
7.2 Suggestion of Future Research 126

References 128

Abstract (Korean) 141
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dc.formatapplication/pdf-
dc.format.extent3208156 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectDiagnosis-
dc.subjectDatum unit-
dc.subjectOmnidirectional Regeneration (ODR)-
dc.subjectJournal Bearing-
dc.subjectDeep Learning-
dc.subject.ddc621-
dc.titleUnsupervised Learning and Diagnosis Method for Journal Bearing System in a Large-scale Power Plant-
dc.typeThesis-
dc.description.degreeDoctor-
dc.citation.pages143-
dc.contributor.affiliation공과대학 기계항공공학부-
dc.date.awarded2016-02-
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