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基于MPC方法的供热系统一次侧流量实时预测
引用本文:李仲博,贾萌,康焱,王海鸿,李淼,吕青,谢晶晶,方大俊.基于MPC方法的供热系统一次侧流量实时预测[J].系统仿真学报,2021(1):180-188.
作者姓名:李仲博  贾萌  康焱  王海鸿  李淼  吕青  谢晶晶  方大俊
作者单位:北京市热力集团有限责任公司;北京华热科技发展有限公司;常州英集动力科技有限公司
摘    要:基于模型预测控制方法,使用离散的受控自回归模型建立二级网动态热传输滞后模型与热力站模型,结合机器学习算法中的多项式拟合方法对二级网模型和热力站模型中的参数进行辨识校准,并基于模型结果对未来工况条件下的热力站一次侧流量进行预测,为供热系统质量调节提供依据。使用实测数据对模型进行了验证,实际偏差在5%以下,为供热系统流量调节的工程实践提供了良好的指导。

关 键 词:供热系统  热惯性  模型预测控制  动态模型  流量预测

Real-Time Prediction of Primary Flow by MPC Method in Heating System
Li Zhongbo,Jia Meng,Kang Yan,Wang Haihong,Li Miao,Lü Qing,Xie Jingjing,Fang Dajun.Real-Time Prediction of Primary Flow by MPC Method in Heating System[J].Journal of System Simulation,2021(1):180-188.
Authors:Li Zhongbo  Jia Meng  Kang Yan  Wang Haihong  Li Miao  Lü Qing  Xie Jingjing  Fang Dajun
Institution:(Beijing District Heating Group,Beijing 100028,China;Beijing HuaRe Technology Limited Company,Beijing 100028,China;Changzhou Engi Power Technology Limited Company,Changzhou 213022,China)
Abstract:Based on the model predictive control method, this paper uses the discrete controlled autoregressive model to establish the dynamic heat transfer delay model of the secondary network and the thermal station model. The polynomial fitting method of machine learning algorithm is applied to identify and calibrate the parameters of the secondary network model and the thermal station model. The primary flow rate of the heating station under future operating conditions is predicted based on the model results, which provides a basis for the quality-based regulation of heating system. The model is verified by measured data, and the actual deviation is less than 5%, which provides a good guide for the engineering practice of heating system flow regulation.
Keywords:heating system  thermal inertia  Model Predictive Control(MPC)  dynamic model  flow rate prediction
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