Timely detected anomalies in the chemical technological processes, as well as the earliest detection of the cause of the fault, significantly reduce the production cost in the industrial factories. Data on the state of the technological process and the operation of production equipment are received by a large number of different sensors. To better predict the behavior of the process and equipment, it is necessary not only to consider the behavior of the signals in each sensor separately, but also to take into account their correlation and hidden relationships with each other. Graph-based data representation helps with this. The graph nodes can be represented as data from the different sensors, and the edges can display the influence of these data on each other. In this work, the possibility of applying graph neural networks to the problem of fault diagnosis in a chemical process is studied. It was proposed to construct a graph during the training of graph neural network. This allows to train models on data where the dependencies between the sensors are not known in advance. In this work, several methods for obtaining adjacency matrices were considered, as well as their quality was studied. It has also been proposed to use multiple adjacency matrices in one model. We showed state-of-the-art performance on the fault diagnosis task with the Tennessee Eastman Process dataset. The proposed graph neural networks outperformed the results of recurrent neural networks.
翻译:为了更好地预测化学技术工艺和设备的行为,不仅需要分别考虑每个传感器的信号行为,而且需要考虑到它们之间的关联和隐藏关系。基于图表的数据表示方法有助于这一点。图形节点可以作为不同传感器的数据来代表,而边缘可以显示这些数据对彼此的影响。在这项工作中,研究是否可能将图形神经网络应用于化学工艺中的错误诊断问题。提议在图形神经网络培训期间绘制一个图表。这样可以对数据模型进行模型培训,以便了解传感器之间的依赖性是否事先不为人们所知。在这项工作中,考虑了若干获取相邻矩阵的方法,并研究了其质量。还提议在一个模型中使用多个相邻性矩阵。我们展示了经常网络的运行性能分析结果。