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首页> 外文期刊>Energy and Buildings >Application of typical and extreme weather data sets in the hygrothermal simulation of building components for future climate - A case study for a wooden frame wall
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Application of typical and extreme weather data sets in the hygrothermal simulation of building components for future climate - A case study for a wooden frame wall

机译:典型和极端天气数据集在未来气候的建筑构件湿热模拟中的应用-以木框墙为例

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摘要

A method for synthesizing representative weather data for future climate out of regional climate models (RCMs) was introduced previously for the energy simulation of buildings (Nik, 2016). The method suggests creating one typical and two extreme data sets based on the distribution of the outdoor dry bulb temperature (T-drybulb). This article extends the application of such weather data in the hygrothermal simulation of buildings by simulating a pre-fabricated wooden frame wall. To investigate the importance of considering moisture and rain conditions in creating the representative weather files, two more groups of weather data are synthesized based on the distribution of the equivalent temperature (T-equivalent) and rain. Moisture content, relative humidity, temperature and mould growth rate are calculated in the facade and insulation layers of the wall for several weather data sets. Results show that the synthesized weather data based on T-dry (bulb) predict the hygrothermal conditions inside the wall very similar to the original RCM weather data and there is no considerable advantage in using the other two weather data groups. This study confirms the applicability of the synthesized weather data based on T-dry (bulb) and emphasizes the importance of considering extreme scenarios in the calculations. This enables having distributions more similar to the original RCM data while the simulation load is decreased enormously. (C) 2017 Elsevier B.V. All rights reserved.
机译:先前已经引入了一种从区域气候模型(RCM)中为未来气候合成代表性天气数据的方法,用于建筑物的能源模拟(Nik,2016年)。该方法建议根据室外干球温度(T-drybulb)的分布创建一个典型数据集和两个极端数据集。本文通过模拟预制的木框架墙,将这种天气数据的应用扩展到建筑物的湿热模拟中。为了研究在创建代表性天气文件时考虑湿度和降雨条件的重要性,基于等效温度(T等效)和降雨的分布,又合成了两组天气数据。水分,相对湿度,温度和霉菌生长速率是针对多个天气数据集在墙的外墙和隔热层中计算的。结果表明,基于T-dry(灯泡)的合成气象数据预测壁内的湿热状况与原始RCM气象数据非常相似,并且使用其他两个气象数据组没有明显优势。这项研究证实了基于T-dry(灯泡)的综合天气数据的适用性,并强调了在计算中考虑极端情景的重要性。这使得分布更加类似于原始RCM数据,同时极大地降低了模拟负载。 (C)2017 Elsevier B.V.保留所有权利。

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