基于温度多元线性回归模型的空调制冷站在线预测控制方法研究

作者:王佳明 杨海滨 赵天怡 徐萌
单位:大连理工大学 华商国际工程有限公司 中车青岛四方机车车辆股份有限公司
摘要:从实际应用角度出发,以制冷站全局COP为优化目标,综合考虑制冷站整体特性及各组件相互耦合特性,提出了一种基于多元线性回归模型的制冷站预测控制方法。该模型的输入变量为冷水进出口温差和冷却水进出口温差,分别对应冷水侧和冷却水侧的运行特性,输出变量为制冷站全局COP,能够反映制冷站系统的综合特性。该模型结构简单、输入参数易获取、可复制性高,可在线应用于大多数制冷站系统。试验结果表明,该预测控制方法可有效提升制冷站整体运行能效。
关键词:制冷站预测控制线性回归在线应用能效分析
作者简介:王佳明,男,1991年生,在读博士研究生;*赵天怡(通信作者)116024大连理工大学厚兴楼417房间,E-mail:zhaotianyi@dlut.edu.cn;
基金:国家自然科学基金资助项目(编号:52078096);中央高校基本科研业务费资助项目(编号:DUT20JC47);大连市高层次人才创新支持计划项目(编号:2017RQ099);
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Online predictive control method of air conditioning chiller plants based on temperature multiple linear regression model
Wang Jiaming Yang Haibin Zhao Tianyi Xu Meng
(Dalian University of Technology Hua Shang International Engineering Co., Ltd. CRRC Qingdao Sifang Co., Ltd.)
Abstract: From the perspective of practical application, the global COP of the chiller plant is taken as the optimization objective, and a predictive control method of the chiller plant based on the multiple linear regression model is proposed by considering the overall characteristics of the chiller plant and the coupling properties among components. The input variables of the model are the inlet and outlet temperature difference of chilled water and the inlet and outlet temperature difference of cooling water, corresponding to the operation characteristics of the chilled water side and the cooling water side respectively, and the output variable is the global COP of the chiller plant, which can reflect the comprehensive characteristics of the chiller plant system. The model has the advantages of simple structure, easily obtained input parameters and high replicability, which renders it able to be implemented online in most chiller plant systems. The experimental results show that the proposed predictive control method can effectively improve the overall energy efficiency of the chiller plant.
Keywords: chiller plant; predictive control; linear regression; online application; energy efficiency analysis;
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