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A three-stage optimization methodology for envelope design of passive house considering energy demand, thermal comfort and cost

机译:考虑能源需求,热舒适性和成本的被动房围护结构设计的三阶段优化方法

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Due to reducing the reliance of buildings on fossil fuels, Passive House (PH) is receiving more and more attention. It is important that integrated optimization of passive performance by considering energy demand, cost and thermal comfort. This paper proposed a set three-stage multi-objective optimization method that combines redundancy analysis (RDA), Gradient Boosted Decision Trees (GBDT) and Non-dominated sorting genetic algorithm (NSGA-II) for PH design. The method has strong engineering applicability, by reducing the model complexity and improving efficiency. Among then, the GBDT algorithm was first applied to the passive performance optimization of buildings, which is used to build meta-models of building performance. Compared with the commonly used meta-model, the proposed models demonstrate superior robustness with the standard deviation at 0.048. The optimization results show that the energy-saving rate is about 88.2% and the improvement of thermal comfort is about 37.8% as compared to the base-case building. The economic analysis, the payback period were used to integrate initial investment and operating costs, the minimum payback period and uncomfortable level of Pareto frontier solution are 0.48 years and 13.1%, respectively. This study provides the architects rich and valuable information about the effects of the parameters on the different building performance.
机译:由于减少了建筑物对化石燃料的依赖,被动房(PH)受到越来越多的关注。通过考虑能源需求,成本和热舒适度来综合优化被动性能非常重要。提出了一种结合冗余分析(RDA),梯度提升决策树(GBDT)和非支配排序遗传算法(NSGA-II)的三阶段多目标优化方法。通过降低模型复杂度和提高效率,该方法具有很强的工程适用性。其中,GBDT算法首先应用于建筑物的被动性能优化,用于构建建筑物性能的元模型。与常用的元模型相比,所提出的模型具有更好的鲁棒性,标准偏差为0.048。优化结果表明,与基础建筑相比,节能率约为88.2%,热舒适性提高约为37.8%。从经济分析,投资回收期等方面综合初始投资和运营成本,帕累托前沿解决方案的最低投资回收期和不舒适水平分别为0.48年和13.1%。这项研究为建筑师提供了有关参数对不同建筑性能的影响的丰富而有价值的信息。

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