Computer Engineering and Applications ›› 2018, Vol. 54 ›› Issue (24): 227-233.DOI: 10.3778/j.issn.1002-8331.1708-0246

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Application of long short-term memory network in heating station modeling

LI Qi, YU Mingwei   

  1. College of Information Engineering, University of Science and Technology of Inner Mongolia, Baotou, Inner Mongolia 014000, China
  • Online:2018-12-15 Published:2018-12-14

长短时记忆网络在热力站建模中的应用

李  琦,于明伟   

  1. 内蒙古科技大学 信息工程学院,内蒙古 包头 014000

Abstract: Aiming at the problem about the heating station control system belongs to multivariable, nonlinear, strong coupling and large time delay complex process control system, it is difficult to establish an accurate model. The long short-term memory based on recurrent neural network is proposed to model the heating station control system. The algorithm not only considers the influence factors in time factor, but also solves the problem of long sequence information loss. Using a large real-time data in Baotou heating station, the neural network model is build by the tensorflow framework. The simulation result shows that the long short-term memory network modeling can effectively reduce the modeling error, and improve the accuracy of neural network modeling system in heating station.

Key words: time series, recurrent neural network, long short-term memory, tensorflow, modeling of heating station

摘要: 针对热力站为多变量、非线性、强耦合、大时滞的复杂时序控制系统,难以建立精确模型的问题,提出基于循环神经网络的长短时记忆算法对热力站控制系统建模,该算法既考虑到时间上的影响因素,又解决了长序列信息丢失的问题。以包头某热力站大量实时工况数据通过tensorflow框架搭建神经网络模型,仿真对比结果表明,长短时记忆网络建模能有效地减小建模误差,进一步提高神经网络在热力站系统建模中的精度。

关键词: 时间序列, 循环神经网络, 长短时记忆网络, tensorflow, 热力站建模