综合智慧能源 ›› 2022, Vol. 44 ›› Issue (3): 50-57.doi: 10.3969/j.issn.2097-0706.2022.03.008

• 智能电力 • 上一篇    下一篇

基于平行控制理论的循环流化床锅炉床温智能预测模型

刘文慧1, 严博文1,*(), 吴江1, 任一君1, 孔维政1, 谌际宇2()   

  1. 1.内蒙古蒙泰不连沟煤业有限责任公司煤矸石热电厂,内蒙古 准格尔 010321
    2.华北电力大学 控制与计算机工程学院,北京 102206
  • 收稿日期:2021-09-25 修回日期:2021-12-28 出版日期:2022-03-25 发布日期:2022-03-28
  • 通讯作者: 严博文
  • 作者简介:刘文慧(1982),男,工程师,从事电厂热工检修工作。
    吴江(1984),男,工程师,从事电厂化学及项目管理工作。
    任一君(1994),男,助理工程师,从事电厂锅炉运行管理工作。
    孔维政(1993),男,助理工程师, 从事火电厂节能减排管理工作。
    谌际宇(1995),男,在读博士研究生,从事深度学习应用及智能发电研究, sjyncepu@ncepu.edu.cn
  • 基金资助:
    中国华电集团科技项目(CHDKJ21-02-161)

Intelligent prediction model of CFB boiler bed temperature based on parallel control theory

LIU Wenhui1, YAN Bowen1,*(), WU Jiang1, REN Yijun1, KONG Weizheng1, CHEN Jiyu2()   

  1. 1. Gangue Thermal Power Plant of Inner Mongolia Mengtai Buliangou Coal Industry Company Limited, Jungar 010321,China
    2. School of Control and Computer Engineering, North China Electric Power University, Beijing 102206,China
  • Received:2021-09-25 Revised:2021-12-28 Online:2022-03-25 Published:2022-03-28
  • Contact: YAN Bowen

摘要:

随着碳中和背景下以新能源为主体的新型电力系统的加速构建和社会环保意识的增强,火电机组需要在极端的工况下运行,但传统的机理建模很难实现对循环流化床锅炉床温的精准预测。基于平行控制系统理论构造与实际系统对应的虚拟系统,以计算试验的方式为实际系统的运行提供指导。虚拟系统构建采用基于时序注意力机制的长短期记忆(TPA-LSTM)神经网络模型,通过引入时序关注的注意力机制,提高传统的长短期记忆神经网络模型对工业过程中特定时序段的识别能力;采用灰度关联分析法对实际系统的数据进行筛选,提高了虚拟系统计算试验的准确性。实例分析结果表明,采用TPA-LSTM模型后,床温预测平均绝对误差为0.131 7 ℃,平均百分比绝对误差为0.014 29%,实现了对循环流化床锅炉床温的精准预测。

关键词: 碳中和, 平行控制系统, 长短期记忆神经网络, 注意力机制, 灰度关联分析法, 虚拟系统, 循环流化床, 床温

Abstract:

To pursue the carbon peaking and carbon neutrality,with the accelerating development of renewable energy oriented power system and rising of environment protection awareness, thermal power units have to operate under extreme operating conditions. But the traditional mechanism modelling can hardly realize the accurate prediction on CFB boiler bed temperature. Based on parallel control theory,a real system can operate following the guidance of its virtual counterpart based on computational experiments. The virtual system takes Temporal Pattern Attention for Multivariate Time Series Forecasting (TPA-LSTM)model which can improve the traditional LSTM model's recognition ability of the temporal segments in industrial process by introducing temporal attention as the attention mechanism. Taking gray correlation analysis method to screen the data of the real system can improve the accuracy of the computational experiments of the virtual system. The analysis results show that the mean absolute deviation and mean absolute percent error of the predicted bed temperature can be reduced to 0.131 7 ℃ and 0.014 29%. The model realizes the accurate prediction on CFB boiler bed temperature.

Key words: carbon neutrality, parallel control system, LSTM neural network, attention mechanism, grey correlation degree analysis, virtual system, circulating fluidized bed, bed temperature

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