Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis
Title | Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis PDF eBook |
Author | Ruqiang Yan |
Publisher | Elsevier |
Pages | 314 |
Release | 2023-11-10 |
Genre | Business & Economics |
ISBN | 0323914233 |
Transfer Learning for Rotary Machine Fault Diagnosis and Prognosis introduces the theory and latest applications of transfer learning on rotary machine fault diagnosis and prognosis. Transfer learning-based rotary machine fault diagnosis is a relatively new subject, and this innovative book synthesizes recent advances from academia and industry to provide systematic guidance. Basic principles are described before key questions are answered, including the applicability of transfer learning to rotary machine fault diagnosis and prognosis, technical details of models, and an introduction to deep transfer learning. Case studies for every method are provided, helping readers apply the techniques described in their own work. - Offers case studies for each transfer learning algorithm - Optimizes the transfer learning models to solve specific engineering problems - Describes the roles of transfer components, transfer fields, and transfer order in intelligent machine diagnosis and prognosis
Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems
Title | Big Data-Driven Intelligent Fault Diagnosis and Prognosis for Mechanical Systems PDF eBook |
Author | Yaguo Lei |
Publisher | Springer Nature |
Pages | 292 |
Release | 2022-10-19 |
Genre | Technology & Engineering |
ISBN | 9811691312 |
This book presents systematic overviews and bright insights into big data-driven intelligent fault diagnosis and prognosis for mechanical systems. The recent research results on deep transfer learning-based fault diagnosis, data-model fusion remaining useful life (RUL) prediction, etc., are focused on in the book. The contents are valuable and interesting to attract academic researchers, practitioners, and students in the field of prognostics and health management (PHM). Essential guidelines are provided for readers to understand, explore, and implement the presented methodologies, which promote further development of PHM in the big data era. Features: Addresses the critical challenges in the field of PHM at present Presents both fundamental and cutting-edge research theories on intelligent fault diagnosis and prognosis Provides abundant experimental validations and engineering cases of the presented methodologies
Machine Learning-Based Fault Diagnosis for Industrial Engineering Systems
Title | Machine Learning-Based Fault Diagnosis for Industrial Engineering Systems PDF eBook |
Author | Rui Yang |
Publisher | CRC Press |
Pages | 87 |
Release | 2022-06-16 |
Genre | Technology & Engineering |
ISBN | 1000594939 |
This book provides advanced techniques for precision compensation and fault diagnosis of precision motion systems and rotating machinery. Techniques and applications through experiments and case studies for intelligent precision compensation and fault diagnosis are offered along with the introduction of machine learning and deep learning methods. Machine Learning-Based Fault Diagnosis for Industrial Engineering Systems discusses how to formulate and solve precision compensation and fault diagnosis problems. The book includes experimental results on hardware equipment used as practical examples throughout the book. Machine learning and deep learning methods used in intelligent precision compensation and intelligent fault diagnosis are introduced. Applications to deal with relevant problems concerning CNC machining and rotating machinery in industrial engineering systems are provided in detail along with applications used in precision motion systems. Methods, applications, and concepts offered in this book can help all professional engineers and students across many areas of engineering and operations management that are involved in any part of Industry 4.0 transformation.
Vibrations-Based Machine Fault Diagnosis and Prognosis Using Convolutional Neural Networks
Title | Vibrations-Based Machine Fault Diagnosis and Prognosis Using Convolutional Neural Networks PDF eBook |
Author | Jacob Hendriks |
Publisher | |
Pages | |
Release | 2021 |
Genre | |
ISBN |
This thesis addresses vibration-based machine health monitoring (MHM) by applying the fundamentals of machine learning (ML), convolutional neural networks (CNNs) and selected signal processing. The thesis first presents an exploration of the relationship between the hyperparameters of two-layer CNNs, the type of signal preprocessing used, and resulting diagnostic accuracy. For this, two popular bearing fault datasets and a gear fault dataset are used to reveal cross-domain trends. It is found that using time-frequency representations provided by the spectrogram transformation results in a reduced dependence on hyperparameter optimization and lays the foundation for the following work. Moreover, by applying ML theory and best practices, the thesis demonstrates shortcomings in currently accepted benchmarking practices to evaluate the domain adaptability of bearing fault diagnosis algorithms and proposes an alternative benchmarking framework to resolve them. A novel data preparation and transfer learning procedure that capitalizes on the use of multiple sensors and that achieves higher accuracy than state-of-the-art algorithms is demonstrated. In addition to fault diagnosis, the thesis addresses bearing health prognosis by applying CNNs to health indicator estimation using data from accelerated life testing. Several data augmentation methods adapted from other ML fields are compared. It is determined that methods proven in sound classification or image recognition fields are not guaranteed to benefit this task. Lastly, the thesis presents a 3D CNN designed for bearing health prognosis that uses a multi-sensor time-frequency input to improves upon single-sensor variants. The thesis explores the strengths, as well as the shortcomings, of CNNs for MHM, an emphasis is placed on network design, signal transformation, and experimental methodology.
Intelligent Fault Diagnosis for Rotating Machines Using Deep Learning
Title | Intelligent Fault Diagnosis for Rotating Machines Using Deep Learning PDF eBook |
Author | Jorge Chuya Sumba |
Publisher | |
Pages | 14 |
Release | 2019 |
Genre | Machine learning |
ISBN |
The diagnosis of failures in high-speed machining centers and other rotary machines is critical in manufacturing systems, because early detection can save a representative amount of time and cost. Fault diagnosis systems generally have two blocks: feature extraction and classification. Feature extraction affects the performance of the prediction model, and essential information is extracted by identifying high-level abstract and representative characteristics. Deep learning (DL) provides an effective way to extract the characteristics of raw data without prior knowledge, compared with traditional machine learning (ML) methods. A feature learning approach was applied using one-dimensional (1-D) convolutional neural networks (CNN) that works directly with raw vibration signals. The network structure consists of small convolutional kernels to perform a nonlinear mapping and extract features; the classifier is a softmax layer. The method has achieved satisfactory performance in terms of prediction accuracy that reaches ∼99 % and ∼97 % using a standard bearings database: the processing time is suitable for real-time applications with ∼8 ms per signal, and the repeatability has a low standard deviation
Intelligent Fault Diagnosis and Remaining Useful Life Prediction of Rotating Machinery
Title | Intelligent Fault Diagnosis and Remaining Useful Life Prediction of Rotating Machinery PDF eBook |
Author | Yaguo Lei |
Publisher | Butterworth-Heinemann |
Pages | 378 |
Release | 2016-11-02 |
Genre | Technology & Engineering |
ISBN | 0128115351 |
Intelligent Fault Diagnosis and Remaining Useful Life Prediction of Rotating Machinery provides a comprehensive introduction of intelligent fault diagnosis and RUL prediction based on the current achievements of the author's research group. The main contents include multi-domain signal processing and feature extraction, intelligent diagnosis models, clustering algorithms, hybrid intelligent diagnosis strategies, and RUL prediction approaches, etc. This book presents fundamental theories and advanced methods of identifying the occurrence, locations, and degrees of faults, and also includes information on how to predict the RUL of rotating machinery. Besides experimental demonstrations, many application cases are presented and illustrated to test the methods mentioned in the book. This valuable reference provides an essential guide on machinery fault diagnosis that helps readers understand basic concepts and fundamental theories. Academic researchers with mechanical engineering or computer science backgrounds, and engineers or practitioners who are in charge of machine safety, operation, and maintenance will find this book very useful. - Provides a detailed background and roadmap of intelligent diagnosis and RUL prediction of rotating machinery, involving fault mechanisms, vibration characteristics, health indicators, and diagnosis and prognostics - Presents basic theories, advanced methods, and the latest contributions in the field of intelligent fault diagnosis and RUL prediction - Includes numerous application cases, and the methods, algorithms, and models introduced in the book are demonstrated by industrial experiences
Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems
Title | Deep Neural Networks-Enabled Intelligent Fault Diagnosis of Mechanical Systems PDF eBook |
Author | Ruqiang Yan |
Publisher | CRC Press |
Pages | 217 |
Release | 2024-06-06 |
Genre | Computers |
ISBN | 1040026591 |
The book aims to highlight the potential of deep learning (DL)-enabled methods in intelligent fault diagnosis (IFD), along with their benefits and contributions. The authors first introduce basic applications of DL-enabled IFD, including auto-encoders, deep belief networks, and convolutional neural networks. Advanced topics of DL-enabled IFD are also explored, such as data augmentation, multi-sensor fusion, unsupervised deep transfer learning, neural architecture search, self-supervised learning, and reinforcement learning. Aiming to revolutionize the nature of IFD, Deep Neural Networks-Enabled Intelligent Fault Diangosis of Mechanical Systems contributes to improved efficiency, safety, and reliability of mechanical systems in various industrial domains. The book will appeal to academic researchers, practitioners, and students in the fields of intelligent fault diagnosis, prognostics and health management, and deep learning.