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Development of a nationally representative set of combined building energy and indoor air quality models for U.S. residences

机译:为美国住宅开发一套具有全国代表性的建筑能耗和室内空气质量综合模型

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Americans spend most of their time inside residences where they are exposed to a number of pollutants of both indoor and outdoor origin. Residential buildings also account for similar to 20% of the primary energy consumed in the U.S. To provide a tool for future investigations of interactions between energy use and indoor air quality (IAQ) in homes across the U.S. population, we developed a custom set of nationally representative building energy and IAQ mass balance models that predict annual energy use for space conditioning and indoor concentrations of a number of pollutants of both indoor and outdoor origin across the U.S. residential building stock. The residential energy and indoor air quality (REIAQ) model framework is built in Python and integrates between EnergyPlus and a dynamic mass balance model. REIAQ utilizes historical weather data to predict hourly energy consumption, air change rates, and HVAC system runtimes, which are coupled with historical outdoor pollutant concentration data and assumptions for indoor emission sources and other factors to predict hourly indoor pollutant concentrations. Modeled indoor pollutants include PM2.5, UFPs, O-3, NO2, and several volatile organic compounds (VOCs) and aldehydes. The REIAQ model set successfully predicted annual space conditioning energy consumption for the U.S. residential building stock within similar to 2% of historical data. Modeled indoor concentrations, infiltration factors for outdoor contaminants, and indoor/outdoor ratios of each pollutant all matched closely with observations from prior field studies. Population-weighted annual average indoor pollutant concentrations were also used to estimate the chronic health burden of residential indoor exposures.
机译:美国人大部分时间都在居住在暴露于多种室内和室外污染物的住宅中。住宅建筑也占美国消耗的一次能源的20%左右。为了为将来调查美国人口住宅中的能源使用与室内空气质量(IAQ)之间的相互作用提供工具,我们开发了一套全国通用的具有代表性的建筑能耗和IAQ质量平衡模型,可预测美国住宅建筑存量中用于空间调节的年度能耗以及室内和室外来源的多种污染物的室内浓度。住宅能源和室内空气质量(REIAQ)模型框架是使用Python构建的,并且在EnergyPlus和动态质量平衡模型之间进行了集成。 REIAQ利用历史天气数据来预测小时能耗,换气率和HVAC系统运行时间,再结合历史室外污染物浓度数据和室内排放源假设以及其他因素来预测室内每小时污染物浓度。模拟的室内污染物包括PM2.5,UFP,O-3,NO2以及几种挥发性有机化合物(VOC)和醛。 REIAQ模型集成功地预测了美国住宅建筑存量的年度空间调节能耗,其历史数据接近2%。模拟的室内浓度,室外污染物的渗透因子以及每种污染物的室内/室外比都与先前的田野研究的观测结果非常吻合。人口加权的年平均室内污染物浓度也用于估算住宅室内暴露的慢性健康负担。

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