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Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems

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Table of Contents

1 Introduction and Background

1.1 Introduction

1.1.1 AI Technologies for Data Processing

1.1.2 Big Data-Driven Intelligent Predictive Maintenance

1.1.3 Big Data Analytics Platform Practices

1.2 Overview of Big Data-Driven PHM

1.2.1 Data Acquisition

1.2.2 Data Processing

1.2.3 Diagnosis

1.2.4 Prognosis

1.2.5 Maintenance

1.3 Preface to Book Chapters

References

2 Conventional Intelligent Fault Diagnosis

2.1 Introduction

2.2 Typical Neural Network-Based Methods

2.2.1 Introduction to Neural Networks

2.2.2 Intelligent Diagnosis Using Radial Basis Function Network

2.2.3 Intelligent Diagnosis Using Wavelet Neural Network

2.2.4 Epilog

2.3 Statistical Learning-Based Methods

2.3.1 Introduction to Statistical Learning

2.3.2 Intelligent Diagnosis Using Support Vector Machine

2.3.3 Intelligent Diagnosis Using Relevant Vector Machine

2.3.4 Epilog

2.4 Conclusions

References

3 Hybrid Intelligent Fault Diagnosis

3.1 Introduction

3.2 Multiple WKNN Fault Diagnosis

3.2.1 Motivation .

3.2.2 Diagnosis Model Based on Combination of Multiple WKNN

3.2.3 Intelligent Diagnosis Case Study of Rolling Element Bearings

3.2.4 Epilog

3.3 Multiple ANFIS Hybrid Intelligent Fault Diagnosis

3.3.1 Motivation

3.3.2 Multiple ANFIS Combination with GA

3.3.3 Fault Diagnosis Method Based on Multiple ANFIS Combination

3.3.4 Intelligent Diagnosis Case of Rolling Element Bearings

3.3.5 Epilog

3.4 A Multidimensional Hybrid Intelligent Method

3.4.1 Motivation

3.4.2 Multiple Classifier Combination

3.4.3 Diagnosis Method Based on Multiple Classifier Combination

3.4.4 Intelligent Diagnosis Case of Gearboxes

3.4.5 Epilog

3.5 Conclusions

References

4 Deep Transfer Learning-Based Intelligent Fault Diagnosis

4.1 Introduction

4.2 Deep Belief Network for Few-Shot Fault Diagnosis

4.2.1 Motivation

4.2.2 Deep Belief Network-Based Diagnosis Model with Continual Learning

4.2.3 Few-Shot Fault Diagnosis Case of Industrial Robots

4.2.4 Epilog

4.3 Multi-Layer Adaptation Network for Fault Diagnosis with Unlabeled Data

4.3.1 Motivation

4.3.2 Multi-Layer Adaptation Network-Based Diagnosis Model

4.3.3 Fault Diagnosis Case of Locomotive Bearings with Unlabeled Data

4.3.4 Epilog

4.4 Deep Partial Adaptation Network for Domain-Asymmetric Fault Diagnosis

4.4.1 Motivation

4.4.2 Deep Partial Transfer Learning Net-Based Diagnosis Model

4.4.3 Partial Transfer Diagnosis of Gearboxes with Domain Asymmetry

4.4.4 Epilog

4.5 Instance-Level Weighted Adversarial Learning for Open-Set Fault Diagnosis

4.5.1 Motivation

4.5.2 Instance-Level Weighted Adversarial Learning-Based Diagnosis Model

4.5.3 Fault Diagnosis Case of Rolling Bearing Datasets

4.5.4 Epilog

4.6 Conclusions

References

5 Data-Driven RUL Prediction

5.1 Introduction

5.2 Deep Separable Convolutional Neural Network-Based RUL Prediction

5.2.1 Motivation

5.2.2 Deep Separable Convolutional Network

5.2.3 Architecture of DSCN

5.2.4 RUL Prediction Case of Accelerated Degradation Experiments of Rolling Element Bearings

5.2.5 Epilog

5.3 Recurrent Convolutional Neural Network-Based RUL Prediction

5.3.1 Motivation

5.3.2 Recurrent Convolutional Neural Network

5.3.3 Architecture of RCNN

5.3.4 RUL Prediction Case Study of FEMTO-ST Accelerated Degradation Tests of Rolling Element Bearings

5.3.5 Epilog

5.4 Multi-scale Convolutional Attention Network-Based RUL Prediction

5.4.1 Motivation

5.4.2 Multi-scale Convolutional Attention Network

5.4.3 Architecture of MSCAN

5.4.4 RUL Prediction Case of a Life Testing of Milling Cutters

5.4.5 Epilog

5.5 Conclusions

References

6 Data-Model Fusion RUL Prediction

6.1 Introduction

6.2 RUL Prediction with Random Fluctuation Variability

6.2.1 Motivation

6.2.2 RUL Prediction Considering Random Fluctuation Variability

6.2.3 RUL Prediction Case of FEMTO-ST Accelerated Degradation Tests of Rolling Element Bearings

6.2.4 Epilog

6.3 RUL Prediction with Unit-to-Unit Variability

6.3.1 Motivation

6.3.2 RUL Prediction Model Considering Unit-to-Unit Variability

6.3.3 RUL Prediction Case of Turbofan Engine Degradation Dataset

6.3.4 Epilog

6.4 RUL Prediction with Time-Varying Operational Conditions

6.4.1 Motivation

6.4.2 RUL Prediction Model Considering Time-Varying Operational Conditions

6.4.3 RUL Prediction Case of Accelerated Degradation Experiments of Thrusting Bearings

6.4.4 Epilog

6.5 RUL Prediction with Dependent Competing Failure Processes

6.5.1 Motivation

6.5.2 RUL Prediction Model Considering Dependent Competing Failure Processes

6.5.3 RUL Prediction Case of Accelerated Degradation Experiments of Rolling Element Bearings

6.5.4 Epilog

6.6 Conclusions

References

Glossary

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Sample pages of Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems (ISBN:9787569328028) Sample pages of Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems (ISBN:9787569328028) Sample pages of Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems (ISBN:9787569328028) Sample pages of Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems (ISBN:9787569328028)
Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems
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