期刊论文详细信息
卷:19
GCN- and GRU-Based Intelligent Model for Temperature Prediction of Local Heating Surfaces
Article
关键词: SUPERHEATER STEAM TEMPERATURE;   
DOI  :  10.1109/TII.2022.3193414
来源: SCIE
【 摘 要 】

A boiler heating surface is composed of hundreds of tubes, whose temperatures may be different because of their positions, the influences of attempering water, and flue gas. Using a criteria based on the Davies- Bouldin index, in this article, we propose to partition a heating surface into local ones, whose interactions in temperature are represented as a weighted heating surface graph (HSG) at each point of time, and whose current features are embedded in the HSG's nodes. Then, a local heating surface temperature prediction model based on weighted graph convolutional networks and gated recurrent units (WGCN-GRU), is proposed. Graph convolutional networks (GCNs) receive a series of HSGs, and extract the features of local heating surfaces and their spatial dependences in a time window. Features output by GCNs are finally directed to GRUs for temperature predictions. Experiments show that WGCN-GRU can averagely maintain the prediction error below 0.5 degrees C. Compared with other models, it can reduce the errors by a rate from 5.6% to 46.8%, and shows advantages in root-mean-squared error and R-2. It also shows that the node-to-node weights for the GCN can reduce the prediction error by 11.4%.

【 授权许可】

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