用于过程软传感器开发的深度图网络

Mingwei Jia, Yun Dai, Danya Xu, Tao Yang, Yuan Yao, Yi Liu
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引用次数: 4

摘要

在(生物)化学过程中,传统的硬件传感器由于其时变、非线性和动态特性,难以直接测量关键产品的质量。这使得过程软传感器建模方法变得非常重要。由于过程变量可以看作是自然的图形数据,因此本文在软测量建模领域引入了图形。提出一种基于图神经网络(GNN)的软测量模型。该模型可以学习各单元变量之间图数据的拓扑结构。此外,通过引入时空卷积层来表征从时空维度到输出预测的变量关系。通过模拟发酵过程,验证了基于gnn的软测量模型的有效性和优越性。
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Deep Graph Network for Process Soft Sensor Development
In the (bio)chemical processes, traditional hardware sensors are difficult to directly measure the quality of critical products due to their time-varying, non-linear, and dynamic characteristics. This makes process soft sensor modeling methods important. Since the process variables can be regarded as natural graph data, this work introduces graphs in the soft sensor modeling area. A soft sensor model based on the graph neural network (GNN) is proposed. The model can learn the topological structure of graph data between each unit variable. Moreover, it characterizes variable relationships from the spatial and temporal dimensions to the output prediction by introducing the spatial-temporal convolutional layer. The effectiveness and advantages of the GNN-based soft sensor model are verified using a simulated fermentation process.
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