注意力堆叠生成对抗网络(AS-GAN)驱动的传感器数据增强用于制造系统在线监测

Attention-stacked generative adversarial network (AS-GAN)–empowered sensor data augmentation for online monitoring of manufacturing system

IISE Transactions · 2025
被引 3
ABS 3

中文导读

针对制造系统异常状态传感器数据不足的问题,提出注意力堆叠GAN(AS-GAN)架构,通过捕捉时序信息生成高质量合成数据,提升在线监测性能。

Abstract

Machine learning (ML) has been extensively adopted for online sensing-based monitoring in advanced manufacturing systems. However, the sensor data collected under abnormal states are usually insufficient, leading to significant data imbalance issues for supervised ML. A common solution is to incorporate data augmentation techniques; that is, augmenting the available abnormal states data (i.e., minority samples) via synthetic generation. To generate the high-quality minority samples, it is vital to learn the underlying distribution of the abnormal states data. In recent years, generative adversarial network (GAN)–based approaches have become popular to learn data distribution, as well as perform data augmentation. However, in practice, the quality of generated samples from GAN-based data augmentation may vary drastically. In addition, the sensor signals are collected sequentially by time from the manufacturing systems, which means sequential information is also very important in data augmentation. To address these limitations, inspired by the multihead attention mechanism, this article proposed an attention-stacked GAN (AS-GAN) architecture for sensor data augmentation of online monitoring in manufacturing systems. It incorporates a new attention-stacked framework to strengthen the generator in GAN with the capability of capturing sequential information, and thereby the developed attention-stacked framework greatly helps to improve the quality of the generated sensor signals. Afterward, the generated high-quality sensor signals for abnormal states could be applied to train classifiers more accurately, further improving the online monitoring performance of manufacturing systems. The case study conducted in additive manufacturing also successfully validated the effectiveness of the proposed AS-GAN.

机器学习数据增强生成对抗网络制造系统监测深度学习