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Multi-objective optimization of energy performance for a detached residential building with a sunspace using the NSGA-Ⅱ genetic algorithm

机译:利用NSGA-Ⅱ遗传算法,使用SUNSPACE与SULPACE独立住宅建筑能量性能的多目标优化

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This paper discusses a performed optimization of the structural and architectural parameters of a detached passive building with a sunspace using a non-dominant sorting genetic algorithm (NSGA-II). The building optimization is performed on the model of a building located in Nis, Serbia, a city with a Cfa climate according to the Koppen classification. The optimization is based on the NSGA-II algorithm and was run using DesignBuilder software package coupled to EnergyPlusTM dynamic building energy simulation software. The defined variable optimization parameters (X1-X10) include parameters of passive solar design, such as window-to-wall ratio (WWR) of each individual building facade, type of glazing, different facade wall constructions, and window shading system on the facades. Prior to the optimization itself, a sensitivity analysis of parameters X1-X10 was conducted in order to identify the parameter that has the most influence on heating and cooling energy expenditure and on thermal comfort. The Latin hypercube sampling (LHS) method is used to create iterations. Optimization objectives are defined for two scenarios. Scenario 1 considers the minimum energy required for heating and the minimum energy required for cooling of a detached passive residential building with a sunspace, while Scenario 2 considers the minimum energy required for heating and the minimum number of discomfort hours in such a building. The results of the optimization are obtained through NSGA-II iterations according to the predefined optimization objectives and by varying the given structural and architectural parameters of the building. The results are presented as a Pareto front - a set of optimal solutions and optimal characteristics of the detached passive solar building. For Scenario 1, the optimization yielded 63 Pareto solutions after 4245 iterations. For Scenario 2, it yielded 25 Pareto solutions after 4393 iterations. Based on the hypervolume indicator (HV), it can be concluded that multi-objective optimization using NSGA-II for Scenario 1 (HV1 = 0.82164) performed better than for Scenario 2 (HV2 = 0.59855). Optimization results show that when designing a detached passive solar building with a sunspace for the Cfa climatic area according to Koppen, window-to-wall ratio is the element of passive solar design that influences energy performance the most. In addition, a detached passive solar building will benefit the most from triple low-emissivity argon-filled glazing, opaque elements of the building envelope need to be properly thermally insulated with thicker concrete or brick walls for higher thermal storage capacity, and no shading or the smallest possible awning size is recommended for the south-facing facade to achieve better solar gains.
机译:本文讨论了使用非主导分类遗传算法(NSGA-II)的SUNSPACE与SUNSPACE的独立被动建筑的结构和架构参数进行了执行优化。根据Koppen分类,对位于塞尔维亚的NIS的建筑物的建筑物模型上进行了建筑优化。优化基于NSGA-II算法,并使用耦合到EnergyPlustm动态构建能量模拟软件的DesignBuilder软件包进行运行。定义的可变优化参数(X1-X10)包括被动太阳能设计的参数,例如每个单独的建筑物外观的窗口与壁比(WWR),外墙上的玻璃型,不同的外墙结构和窗帘系统。在优化本身之前,进行了参数X1-X10的灵敏度分析,以识别对加热和冷却能耗以及热舒适性具有最大影响的参数。 LATIN HyperCube采样(LHS)方法用于创建迭代。优化目标已为两种情况定义。场景1考虑了加热所需的最低能量和使用太阳气空间冷却独立的被动住宅建筑所需的最低能量,而场景2则考虑在这种建筑物中加热的最低能量和最小的不适数。通过根据预定义的优化目标通过NSGA-II迭代获得优化的结果,并改变建筑物的给定结构和架构参数。结果呈现为帕累托前部 - 一套最佳解决方案和独立被动太阳能建筑的最佳特性。对于场景1,4245次迭代后,优化在4245次拍摄后产生了63个帕累托溶液。对于场景2,它在4393次迭代后产生了25个帕累托解决方案。基于超高效指示器(HV),可以得出结论,使用NSGA-II的多目标优化对于场景1(HV1 = 0.82164)而言比对于场景2(HV2 = 0.59855)。优化结果表明,根据KOPPEN设计具有SUNSPACA的独立被动太阳能建筑,窗口到壁比是无源太阳能设计的元素,影响能源性能最多。此外,独立的被动太阳能建筑物将受益于来自三重低发射率氩气的玻璃窗,建筑包络的不透明元素需要用较厚的混凝土或砖墙进行适当的隔热,以获得更高的热存储容量,而且没有阴影或建议朝南的外立面建议最小的可能遮阳篷尺寸,以实现更好的太阳能收益。

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