通过利用传感器数据和先进的校准模型,住宅部门的建筑改造措施的环境和经济效益

IF 2.1 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Advances in Building Energy Research Pub Date : 2020-08-04 DOI:10.1080/17512549.2020.1801504
F. Pallonetto, Mattia De Rosa, D. Finn
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引用次数: 10

摘要

摘要本文调查了爱尔兰住宅楼实施改造措施的节能情况。一栋独立式住宅被选为实验试验台,该住宅约占爱尔兰住宅存量的40%。这座建筑被逐步改造成全电动住宅。改造措施包括安装光伏阵列、地热热泵、电动汽车充电点,以及升级建筑结构。该建筑配备了一个家庭局域网,有30多个传感器,监测分辨率为15分钟。实验活动期间收集的实验数据有助于EnergyPlus模型的全面校准。该模型用于调查已实施的改造措施在节能和减少二氧化碳方面的有效性。爱尔兰电力系统运营商的实时数据被用于计算不同可再生能源渗透到国家电网水平的建筑碳足迹。结果表明,与预改造建筑相比,全电动改造建筑可实现高达45%的节能,二氧化碳减排约29%。大规模实施改造措施可能会使爱尔兰农村地区的碳排放量减少14%。
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Environmental and economic benefits of building retrofit measures for the residential sector by utilizing sensor data and advanced calibrated models
ABSTRACT The present paper investigates the energy savings associated with the implementation of retrofitting measures on Irish residential buildings. A detached residential dwelling, representative of approximately 40% of the residential stock in Ireland, was selected as experimental test bed. The building was progressively retrofitted to an all-electric dwelling. Retrofit measures included the installation of a photovoltaic array, a geothermal heat pump, an electric vehicle charging point, along with building fabric upgrades. The building was equipped with a home area network with more than 30 sensors with 15 min monitoring resolution. The experimental data collected during the experimental campaign aided the comprehensive calibration of an EnergyPlus model. This model was used to investigate the effectiveness of the implemented retrofit measures in terms of energy savings and CO2 reductions. Real-time data from the Irish power system operator was used to calculate the building carbon footprint for different levels of renewable energy penetration to the national grid. Results show that the all-electric retrofitted building can achieve energy savings of up to 45%, with CO2 reductions of approximately 29%, compared to the pre-retrofitted building. Implementing the retrofit measures at scale could potentially lead to carbon emission reductions up to 14% for rural areas in Ireland.
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来源期刊
Advances in Building Energy Research
Advances in Building Energy Research CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
4.80
自引率
5.00%
发文量
11
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