作者
Zhengqing Lin, Zhengwei Hu, Jingchao Peng, Haitao Zhao
发表日期
2022/12/1
期刊
Process Safety and Environmental Protection
卷号
168
页码范围
953-970
出版商
Elsevier
简介
Traditional graph-based dynamic fault detection methods describe the dynamic characteristic through constructing a single neighborhood graph at the current sample with some history samples. However, they ignore the diversity of dynamic properties of the variables in complex chemical processes. To overcome this problem, a novel neural network structure combining multiscale subgraphs is proposed, named dynamic-scale graph neural network (DSGNN), which divides variables into multiple groups according to their dynamic properties. DSGNN constructs a subgraph in each group. In traditional graph-based methods, the scale of the graph is usually manually designed. In DSGNN, the scale of each subgraph is decided by the dynamic properties of the variables in this subgraph. To aggregate the dynamic information, DSGNN utilizes convolution operations. The weights assigned to the neighbors in each …
引用总数
学术搜索中的文章
Z Lin, Z Hu, J Peng, H Zhao - Process Safety and Environmental Protection, 2022