Industrial process data reflects the dynamic changes of operation conditions, which mainly refer to the irregular changes in the dynamic associations between different variables in different time. And this related associations knowledge for process monitoring is often implicit in these dynamic monitoring data which always have richer operation condition information and have not been paid enough attention in current research. To this end, a new process monitoring method based on spatial-based graph convolution neural network (SGCN) is proposed to describe the characteristics of the dynamic associations which can be used to represent the operation status over time. Spatia-temporal graphs are firstly defined, which can be used to represent the characteristics of node attributes (dynamic edge features) dynamically changing with time. Then, the associations between monitoring variables at a certain time can be considered as the node attributes to define a snapshot of the static graph network at the certain time. Finally, the snapshot containing graph structure and node attributes is used as model inputs which are processed to implement graph classification by spatial-based convolution graph neural network with aggregate and readout steps. The feasibility and applicability of this proposed method are demonstrated by our experimental results of benchmark and practical case application.
翻译:工业过程数据反映了运行条件的动态变化,主要是指不同变数在不同时间动态关联的不规则变化;而这种相关的流程监测知识往往隐含在这些动态监测数据中,这些数据总是有更丰富的运行条件信息,在目前的研究中没有给予足够的重视。为此,提议以基于空间的图形相形神经网络(SGCN)为基础的新的流程监测方法来描述动态关联的特点,这些动态关联可以用来代表一段时间的运行状态。Spatia-时空图首先被定义,可以用来代表节点特性(动态边缘特征)随时间动态变化的特征。然后,在一定时间里,监测变量之间的关联可以被视为用于界定静态图形网络在特定时间的快照的节点属性。最后,包含图形结构和节点属性的快照被用作模型投入,通过基于空间的相形图神经网络以综合和读取步骤实施图形分类。我们的基准和实际案例应用实验结果表明了这一拟议方法的可行性和适用性。