Robustness enhancement of machine fault diagnostic models for railway applications through data augmentation

2022 ◽  
Vol 164 ◽  
pp. 108217
Author(s):  
Dachuan Shi ◽  
Yunguang Ye ◽  
Marco Gillwald ◽  
Markus Hecht
2021 ◽  
Vol 11 (5) ◽  
pp. 2166
Author(s):  
Van Bui ◽  
Tung Lam Pham ◽  
Huy Nguyen ◽  
Yeong Min Jang

In the last decade, predictive maintenance has attracted a lot of attention in industrial factories because of its wide use of the Internet of Things and artificial intelligence algorithms for data management. However, in the early phases where the abnormal and faulty machines rarely appeared in factories, there were limited sets of machine fault samples. With limited fault samples, it is difficult to perform a training process for fault classification due to the imbalance of input data. Therefore, data augmentation was required to increase the accuracy of the learning model. However, there were limited methods to generate and evaluate the data applied for data analysis. In this paper, we introduce a method of using the generative adversarial network as the fault signal augmentation method to enrich the dataset. The enhanced data set could increase the accuracy of the machine fault detection model in the training process. We also performed fault detection using a variety of preprocessing approaches and classified the models to evaluate the similarities between the generated data and authentic data. The generated fault data has high similarity with the original data and it significantly improves the accuracy of the model. The accuracy of fault machine detection reaches 99.41% with 20% original fault machine data set and 93.1% with 0% original fault machine data set (only use generate data only). Based on this, we concluded that the generated data could be used to mix with original data and improve the model performance.


1998 ◽  
Vol 14 (3-4) ◽  
pp. 179-184 ◽  
Author(s):  
Pekka Ala-Siuru ◽  
Juha Takalo ◽  
Jari Ensomaa ◽  
Johan Plomp

Author(s):  
Jacko T. Leung ◽  
Peter W. Tse

Maintenance is essential in all kinds of machines. In past, the machine operators would recognize the machine condition by touching the machine or hearing the machine operating sound. However, this is too subjective and not effective for inexperienced operators. In fact, most modern machineries are so complex that many components may run together, making the operator impossible to distinguish the difference between a normal and anomalous machine. Although more scientific fault diagnostic systems are available, they are expensive and difficult to use without comprehensive learning. Therefore, there is a need from industry to have an economy and efficient machine fault diagnostic system. The occurrence of fault must be identified as early as possible to avoid fatal breakdown of machines. The aim of developing the Smart Asset Maintenance System (SAMS) is to provide a portable and comprehensive but low-cost and simple-to-use solution for the industry to perform equipment maintenance effectively.


2020 ◽  
Vol 43 ◽  
Author(s):  
Myrthe Faber

Abstract Gilead et al. state that abstraction supports mental travel, and that mental travel critically relies on abstraction. I propose an important addition to this theoretical framework, namely that mental travel might also support abstraction. Specifically, I argue that spontaneous mental travel (mind wandering), much like data augmentation in machine learning, provides variability in mental content and context necessary for abstraction.


Author(s):  
Alex Hernández-García ◽  
Johannes Mehrer ◽  
Nikolaus Kriegeskorte ◽  
Peter König ◽  
Tim C. Kietzmann

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