GCN- and GRU-Based Intelligent Model for Temperature Prediction of Local Heating Surfaces

被引:15
作者
Chen, Wanghu [1 ]
Zhai, Chenhan [1 ]
Wang, Xin [2 ]
Li, Jing [1 ]
Lv, Pengbo [1 ]
Liu, Chen [3 ]
机构
[1] Northwest Normal Univ, Coll Comp Sci & Engn, Lanzhou 730070, Peoples R China
[2] Univ Maryland Baltimore Cty, Dept Informat Syst, Baltimore, MD 21250 USA
[3] North China Univ Technol, Sch Informat Sci & Technol, Beijing 100144, Peoples R China
基金
中国国家自然科学基金;
关键词
Heating systems; Electron tubes; Temperature control; Predictive models; Time series analysis; Water heating; Temperature distribution; Gated recurrent unit (GRU); graph convolutional network (GCN); heating surface; spatial-temporal features; temperature prediction; SUPERHEATER STEAM TEMPERATURE;
D O I
10.1109/TII.2022.3193414
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
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%.
引用
收藏
页码:5517 / 5529
页数:13
相关论文
共 27 条
[1]   Optimization of a 660 MWe Supercritical Power Plant Performance-A Case of Industry 4.0 in the Data-Driven Operational Management Part 1. Thermal Efficiency [J].
Ashraf, Waqar Muhammad ;
Uddin, Ghulam Moeen ;
Arafat, Syed Muhammad ;
Afghan, Sher ;
Kamal, Ahmad Hassan ;
Asim, Muhammad ;
Khan, Muhammad Haider ;
Rafique, Muhammad Waqas ;
Naumann, Uwe ;
Niazi, Sajawal Gul ;
Jamil, Hanan ;
Jamil, Ahsaan ;
Hayat, Nasir ;
Ahmad, Ashfaq ;
Changkai, Shao ;
Xiang, Liu Bin ;
Chaudhary, Ijaz Ahmad ;
Krzywanski, Jaroslaw .
ENERGIES, 2020, 13 (21)
[2]   Financial time series forecasting model based on CEEMDAN and LSTM [J].
Cao, Jian ;
Li, Zhi ;
Li, Jian .
PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2019, 519 :127-139
[3]  
Chen M, 2020, ADV NEUR IN, V33
[4]   An Improved Neuro-fuzzy Generalized Predictive Control of Ultra-supercritical Power Plant [J].
Cheng, Chuanliang ;
Peng, Chen ;
Zeng, Deliang ;
Gang, Yusen ;
Mi, Hanyu .
COGNITIVE COMPUTATION, 2021, 13 (06) :1556-1563
[5]  
Chung JY, 2014, Arxiv, DOI [arXiv:1412.3555, 10.48550/arXiv.1412.3555]
[6]   Temperature Forecasting for Stored Grain: A Deep Spatiotemporal Attention Approach [J].
Duan, Shanshan ;
Yang, Weidong ;
Wang, Xuyu ;
Mao, Shiwen ;
Zhang, Yuan .
IEEE INTERNET OF THINGS JOURNAL, 2021, 8 (23) :17147-17160
[7]  
Fu R, 2016, 2016 31ST YOUTH ACADEMIC ANNUAL CONFERENCE OF CHINESE ASSOCIATION OF AUTOMATION (YAC), P324, DOI 10.1109/YAC.2016.7804912
[8]   CFD analysis of steam superheater operation in steady and transient state [J].
Granda, Mariusz ;
Trojan, Marcin ;
Taler, Dawid .
ENERGY, 2020, 199
[9]   LSTM: A Search Space Odyssey [J].
Greff, Klaus ;
Srivastava, Rupesh K. ;
Koutnik, Jan ;
Steunebrink, Bas R. ;
Schmidhuber, Juergen .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (10) :2222-2232
[10]  
Gulcehre Caglar, 2014, Machine Learning and Knowledge Discovery in Databases. European Conference, ECML PKDD 2014. Proceedings: LNCS 8724, P530, DOI 10.1007/978-3-662-44848-9_34