학술논문

Hybrid Data Augmentation Combining Screening-Based MCGAN and Manual Transformation for Few-Shot Tool Wear State Recognition
Document Type
Periodical
Source
IEEE Sensors Journal IEEE Sensors J. Sensors Journal, IEEE. 24(8):12186-12196 Apr, 2024
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Robotics and Control Systems
Generative adversarial networks
Training
Generators
Data augmentation
Data models
Sensors
Feature extraction
deep learning
few-shot
generative adversarial networks (GANs)
tool condition monitoring
Language
ISSN
1530-437X
1558-1748
2379-9153
Abstract
Deep learning has been widely applied in fault diagnosis and monitoring, but obtaining labeled data under abnormal conditions is challenging. This limitation makes the best current deep learning methods seem powerless as they require a large amount of labeled data for training. When the training dataset is small, overfitting is highly likely to occur, leading to performance degradation of deep neural networks. To address this issue, this article proposes a hybrid data augmentation mechanism (HDAM) that utilizes a multicategory generative adversarial network (MCGAN) model and similarity-based selection criteria to generate high-quality data in few-shot scenarios. The selected samples are mixed with augmented samples that undergo image flipping, rotation, and noise addition to form the training set, enhancing the generalization capability of the recognition model after training. To validate the effectiveness of the proposed method, experiments are conducted on the PHM2010 dataset and the TC4 titanium alloy dataset. The experimental results demonstrate a significant improvement in the recognition accuracy of tool wear states in few-shot scenarios.