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改进并行粒子群算法用于冷却水系统节能优化
引用本文:于军琪,高之坤,赵安军,周敏,虎群. 改进并行粒子群算法用于冷却水系统节能优化[J]. 控制理论与应用, 2022, 39(3): 421-431
作者姓名:于军琪  高之坤  赵安军  周敏  虎群
作者单位:西安建筑科技大学建筑设备科学与工程学院,陕西西安710055;西安建筑科技大学信息与控制工程学院,陕西西安710055;中国建筑西北设计研究院有限公司,陕西西安710015
基金项目:西安咸阳机场三期扩建工程绿色能源站系统智能管控咨询与顾问项目技术服务项目(20210103), 国家重点研发计划项目(2017YFC0704100)资助.
摘    要:针对冷却水系统优化问题提出一种改进并行粒子群(IPPSO)算法,以系统能耗最小为优化目标,以系统中各设备的运行参数为优化变量进行求解.在该算法中,采用随机和混沌序列机制分别对两个种群的粒子进行初始化,使两种群在产生初期便具有不同特征;并根据两种群特点,采用不同惯性权重改进策略,提高算法搜索能力;同时利用一种新迁移算子对...

关 键 词:冷却水系统  运行参数  改进并行粒子群算法  节能优化  性能分析
收稿时间:2021-07-25
修稿时间:2022-03-29

Improved parallel particle swarm algorithm for energy-saving optimization of cooling water system
YU Jun-qi,GAO Zhi-kun,ZHAO An-jun,ZHOU Min and HU Qun. Improved parallel particle swarm algorithm for energy-saving optimization of cooling water system[J]. Control Theory & Applications, 2022, 39(3): 421-431
Authors:YU Jun-qi  GAO Zhi-kun  ZHAO An-jun  ZHOU Min  HU Qun
Abstract:Aiming at the optimization problem of cooling water system, an improved parallel particle swarm optimization(IPPSO) algorithm is proposed. The optimization goal is to minimize the energy consumption of the system, and theequipment operating parameters in the system are taken as optimization variables to solve the problem. In this algorithm,the random and chaotic sequence mechanisms are used to initialize the particles of the two groups respectively, so that thetwo groups present different characteristics at the initial stage of generation; based on the characteristics of the two groups,different inertia weight improved strategies are adopted to improve algorithm search ability; at the same time, a new migrationoperator is proposed to exchange individuals between the groups to enhance the diversity of particles. In addition,because the number of system equipment running is an integer and limited by its total equipment number, an exhaustivemethod is introduced. Some equipment operating parameters in the system are optimized, reducing the workload of optimalsolution verification and shortening the optimization time. Finally, a detailed test is carried out on an actual cooling watersystem, and the results show that after using the IPPSO algorithm to optimize the equipment operating parameters, thetotal energy consumption of the cooling water system is reduced by 12.49%, which performs a good energy-saving effect.Simultaneously, compared with the other algorithms, IPPSO can obtain better optimization strategies, and has advantagesin convergence, computational complexity and robustness.
Keywords:cooling water system   operation parameters   improved parallel particle swarm optimization algorithm   energy saving optimization   performance analysis
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