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Multi-objective optimization framework for the selection of configuration and equipment sizing of solar thermal combisystems

机译:用于选择太阳热能组合系统的配置和设备尺寸的多目标优化框架

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Solar combisystems supplying thermal energy for both domestic hot water and space heating can reduce primary energy consumption for residential buildings. As their overall performance depends on their design, this paper presents the development and use of a multi-objective optimization framework for the selection of configuration and equipment sizing of a residential solar combisystem in Montreal, Quebec, Canada. A generic solar combisystem model, which enables different configurations to be chosen, is first developed, and then coupled with a micro-time variant multi-objective particle swarm optimization, which was developed and used to find the non-dominated combisystem design alternatives. The life cycle cost (LCC), energy use (LCE), and exergy destroyed (LCX) of the solar combisystem are used as objective functions to find the best feasible designs. For the minimum LCC, only one flat-plate collector is required to store energy within one thermal storage tank, whereas seven evacuated-tube collectors and two thermal storage tanks are used for the minimum LCE value. The micro-time variant multi-objective particle swarm optimization (micro-TVMOPSO) algorithm used found a non-dominated solution that reduced the LLC by 29% compared with the initial design solution, with the increase of LCE by 72%. Since the LCC and LCE objective functions are conflicting, another non-dominated solution increased the LCC by 36% and reduced the LCE by 27%. The proposed multi-objective optimization framework can therefore be used to get the most out of solar thermal combisystems given specific economic and environmental conditions. (C) 2017 Elsevier Ltd. All rights reserved.
机译:为生活热水和空间供暖同时提供热能的太阳能组合系统可以减少住宅建筑的一次能源消耗。由于它们的整体性能取决于其设计,因此本文介绍了多目标优化框架的开发和使用,以选择加拿大魁北克蒙特利尔的住宅太阳能组合系统的配置和设备尺寸。首先开发一个通用的太阳能组合系统模型,该模型可以选择不同的配置,然后与一个微时变多目标粒子群优化算法结合使用,该优化模型已开发并用于找到非主导的组合系统设计替代方案。太阳能组合系统的生命周期成本(LCC),能源使用(LCE)和火用破坏(LCX)被用作目标函数,以找到最佳可行的设计。对于最小的LCC,仅需要一个平板集热器即可在一个储热罐中存储能量,而七个Led真空管集热器和两个储热罐则可实现最小LCE值。使用的微时变多目标粒子群优化(micro-TVMOPSO)算法发现了一种非主导解决方案,与初始设计解决方案相比,LLC降低了29%,而LCE增加了72%。由于LCC和LCE目标函数之间存在冲突,因此另一种非支配性的解决方案使LCC增加了36%,而LCE减少了27%。因此,在特定的经济和环境条件下,建议的多目标优化框架可用于最大程度地利用太阳热能组合系统。 (C)2017 Elsevier Ltd.保留所有权利。

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