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某冰蓄冷空调系统全寿命周期模型分析 被引量:4

Life cycle model analysis of an ice cool storage air conditioning system
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摘要 建立了冰蓄冷空调系统运行模型,以模拟得到的典型气象年逐时负荷为依据,给出了年运行费用计算式。分析了冰蓄冷空调设备的初投资组成,建立了全寿命周期费用最低的目标函数。使用改进的粒子群优化算法求解模型,得到了使冰蓄冷系统全寿命周期费用最低的制冷机组和蓄冰装置设计容量。 Builds an operation model of ice cool storage air conditioning system. Based on hourly loads of typical meteorological year obtained by simulation, provides a calculation formula of annual operating cost. Analyses the initial investment of ice cool storage air conditioning equipment, and builds the minimum objective function of life cycle cost. Obtains the design capacities of the chiller and ice cool storage devices with minimum ice cool storage system life cycle cost using improved particle swarm optimization algorithm model.
作者 王胤钧 于军琪 Wang Yinjun Yu Junqi
出处 《暖通空调》 北大核心 2017年第7期80-84,共5页 Heating Ventilating & Air Conditioning
基金 陕西省科技计划国际合作项目"基于能源与环境关键因素的大型公共建筑可持续性监测与评价系统研究"(编号:2014W17) 西安市碑林区科技局基金资助项目"西安某商城冰蓄冷空调系统节能优化运行策略研究"(编号:GX1603)
关键词 冰蓄冷空调 年运行费用 初投资 全寿命周期 粒子群优化算法 设计容量 ice cool storage air conditioning, annual operating cost, initial investment, life cycle cost,particle swarm optimization algorithm, design capacity
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