@inproceedings{ae3a21c600434b9cb56577c6c082e924,
title = "Novel Cosine Distance Based Semi-Supervised Learning Using Discriminant Graph Convolutional Network for Industrial Fault Diagnosis",
abstract = "Semi-supervised learning can effectively utilize limited labeled data and large amounts of unlabeled data to achieve fault diagnosis on process industries. This paper proposes a novel cosine distance based semi-supervised learning using discriminant graph convolutional networks (CD-GCN) at node-level Firstly, the CD-GCN method uses the discriminant information to pull the training sample features of different classes farther away from each other. Secondly, CD-GCN replaces Euclidean distance with Cosine distance as the distance metric in the original samples space and feature space. With Cosine distance and discriminant information, CD-GCN better considers spatial structure information and improve the whole graph by the dual effects of graph convolution and nearest neighboring with these moving training sample features. Finally, a real industrial simulation case is carried out to verify the performance of the proposed method. Compared with other related and classic methods, the simulation results show that the CD-GCN method achieves the best performance in diagnostic accuracy.",
keywords = "Cosine Distance, Discriminant Information, Fault Diagnosis, Graph Convolutional Networks",
author = "Qing, {Hao Yang} and Yuan Xu and Ning Zhang and Zhu, {Qun Xiong} and He, {Yan Lin}",
note = "Publisher Copyright: {\textcopyright} 2023 IEEE.; 2023 China Automation Congress, CAC 2023 ; Conference date: 17-11-2023 Through 19-11-2023",
year = "2023",
doi = "10.1109/CAC59555.2023.10450969",
language = "English",
series = "Proceedings - 2023 China Automation Congress, CAC 2023",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "7372--7377",
booktitle = "Proceedings - 2023 China Automation Congress, CAC 2023",
address = "United States",
}