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A novel method of building climate subdivision oriented by reducing building energy demand

机译:通过减少建筑能源需求面向建设气候细分的新方法

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Climatic zoning is an important tool in building energy policy and regulations, smaller and more homogeneous climate zones could help enhance the rationality of energy policymaking. In most countries, climate zoning is based on simplified climate models, and it is difficult to accurately represent the energy demand characteristics of buildings. Therefore, this paper proposes a novel climate subdivision method that tackles the complex relations between climate and building energy-efficient, which move from traditional weather-based approaches to a performance-based approach. Integrate the uncertainty analysis method and the building dynamic performance simulation to extract a novel statistically significant index as the basis for classification. The K-means clustering method and discriminant analysis method are used to obtain and verify the clustering results, respectively. Furthermore, the comparison with clustering results based on degree days confirms the superiority of the new method proposed in this paper in identifying building energy demand.The method is applied to the cold climate zone of China as a showcase. The results show significant differences in building energy demand and the order of key features affecting building performance between each region in the climatic zones. The zone can be further sub-divided into four groups considering the climate factor and building feature uncertainty, and clustering results have been verified by several evaluation indicators. (C) 2020 Elsevier B.V. All rights reserved.
机译:气候分区是建设能源政策和法规的重要工具,更小,更均匀的气候区可以帮助提高能量决策的合理性。在大多数国家,气候分区是基于简化的气候模型,并且很难准确地代表建筑物的能量需求特征。因此,本文提出了一种新的气候细分方法,可以解决气候和建筑节能之间的复杂关系,从传统的天气 - 基于绩效的方法移动。整合不确定性分析方法和建筑动态性能模拟,以提取一个新颖的统计学显着指数作为分类的基础。 K-means聚类方法和判别分析方法分别用于获得并验证聚类结果。此外,基于度数的聚类结果的比较证实了本文提出的新方法的优势在识别建筑能源需求时。该方法应用于中国的寒冷气候区作为展示。结果显示了建筑能源需求和影响气候区中每个地区之间建筑性能的关键特征的关键特征的显着差异。考虑到气候因素和建筑物特征不确定性,该区域可以进一步分为四组,并通过几个评估指标验证了聚类结果。 (c)2020 Elsevier B.v.保留所有权利。

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