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Two-Objective Genetic Algorithm Optimization of Chilled Water Plant Design

机译:冷冻水厂设计的两目标遗传算法优化

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Chilled water central plant accounts a large portion of total energy use and cost in building. The chilled water central plant design will have a significant impact on this energy cost. This paper proposes a multiple objective design optimization method for optimal design of chilled water central plants. The method integrates whole system models with multi-objective genetic algorithm optimization solver to minimize the annual energy cost, initial cost, the life cycle cost, or any combination of those costs. The design variables considered are chilled water and condenser water piping diameters, chilled water supply temperature, and condenser and chilled water temperature differences. The proposed approach combines cooling load analysis and head and energy calculations integrated with whole chilled water plant model. The pump head calculations including piping all fittings, valves, and devices are achieved by developed chilled and condenser water flow model. The energy calculations are done by using generic chiller, fan, and pump models. The method is tested on an existing three-story, eighty-eight thousand square foot building. The annual energy cost vs. initial cost, and initial cost vs. life cycle cost were selected as two objective functions to be solved by two-objective GA optimization algorithm to obtain a set of solutions for better design decisions. A. whole building energy simulation model is used to generate the hourly cooling loads and then the optimal design variables are found to minimise the two objective functions. The testing results show this approach will achieve better results than rules-of-thumb or traditional design procedures. The life cycle cost saving could be up to 8% depending on project specifications and locations.
机译:冷冻水中央设备占建筑总能耗和成本的很大一部分。冷冻水中央设备的设计将对该能源成本产生重大影响。针对冷水中央电站的优化设计,提出了一种多目标设计优化方法。该方法将整个系统模型与多目标遗传算法优化求解器集成在一起,以最小化年度能源成本,初始成本,生命周期成本或这些成本的任意组合。考虑的设计变量是冷冻水和冷凝器水的管道直径,冷冻水供应温度以及冷凝器和冷冻水的温差。所提出的方法结合了冷却负荷分析以及与整个冷冻水厂模型集成的水头和能量计算。泵头的计算包括对所有配件,阀门和设备进行配管,这是通过开发的冷却水和冷凝器水流模型实现的。能源计算是通过使用通用的冷却器,风扇和泵模型完成的。该方法在现有的三层,八万八千平方英尺的建筑物上进行了测试。选择年度能源成本与初始成本之间的关系,以及初始成本与生命周期成本之间的关系,作为两个目标函数,可以通过两目标遗传算法优化算法进行求解,以获得一套更好的设计决策解决方案。 A.整个建筑能耗模拟模型用于生成每小时的制冷负荷,然后找到最佳设计变量以最小化这两个目标函数。测试结果表明,该方法将比经验法则或传统设计程序获得更好的结果。根据项目规格和位置,生命周期成本节省最多可达到8%。

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