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Automated in-situ determination of buildings' global thermo-physical characteristics and air change rates through inverse modelling of smart meter and air temperature data

机译:通过智能仪表和空气温度数据的逆建模自动进出建筑物的全球热物理特性和空气变化率

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摘要

The advancement of smart metering and sensor technologies has opened the door to performing extensive in-situ measurements in buildings and a tendency to carry-out detailed energy and indoor climate monitoring, leading to the availability of the so-called "on-board monitoring data". The data obtained through these measurements is of high value as it can be used for identification of parameters determining health, thermal comfort, and energy use. In this article, an occupied dwelling has been inspected and monitored for one year and the in-situ measurement and meteorological data are combined to feed a physic-based energy model. For the first time, the detailed data cleaning and filtering techniques are explained to give insight for future similar studies. The data is fed to a 1st - order circuit RC model, equivalent to the building's thermal model. Next, using Genetic Algorithm in a stated optimization problem, Inverse Modelling has been applied to identify four main global thermo-physical characteristics of the building, with a special attention to the heat loss coefficient. The results are compared by analysing three feed data properties: granularity level, period length, and time period, resulting the best fit in the coldest periods. The outcomes have shown the importance of these data properties by revealing differences in the heat loss coefficient in different periods and the weakening of the heat capacitance effect when feeding the model with low granularity level data. The daily values of the heat loss coefficient are then applied in combination with construction data to determine the daily averages of hourly air change rates. Finally, the method has been evaluated in terms of accuracy and precision and the air change rates have been validated using CO2 concentration and wind velocity. Using this method, it is possible to determine buildings' main global thermo-physical characteristics as well as the cold periods' airborne heat losses. (C) 2020 The Authors. Published by Elsevier B.V.
机译:智能计量和传感器技术的进步打开了在建筑物中进行广泛的原位测量和开展详细能量和室内气候监测的趋势,导致所谓的“板载监测数据的可用性“。通过这些测量获得的数据具有高值,因为它可用于识别参数确定健康,热舒适度和能量使用。在本文中,已经检查并监测了一年的占用住宅,并将原位测量和气象数据组合以喂养基于物理的能量模型。首次,解释了详细的数据清洁和过滤技术,以便对未来类似的研究提供洞察力。数据被馈送到第一阶电路RC模型,相当于建筑的热模型。接下来,在规定的优化问题中使用遗传算法,已经应用逆建模来识别建筑物的四个主要全球热物理特性,特别注意热损耗系数。通过分析三个饲料数据属性来比较结果:粒度水平,周期长度和时间段,导致最佳的最佳时期。结果表明,通过在用低粒度水平数据馈送模型时,通过揭示不同时段中的热量损失系数的差异和热电容效应的弱化来表达了这些数据性质的重要性。然后将热损耗系数的每日值与施工数据组合应用,以确定每小时空气变化率的每日平均值。最后,在准确度和精度方面已经评估了该方法,并且使用CO 2浓度和风速验证了空气变化率。使用这种方法,可以确定建筑物的主要全球热物理特性以及冷时期的空气传播热损失。 (c)2020作者。 elsevier b.v出版。

著录项

  • 来源
    《Energy and Buildings》 |2020年第12期|110484.1-110484.18|共18页
  • 作者

    Rasooli Arash; Itard Laure;

  • 作者单位

    Delft Univ Technol Fac Architecture & Built Environm Bldg Energy Epidemiol Julianalaan 134 NL-2628 BL Delft Netherlands;

    Delft Univ Technol Fac Architecture & Built Environm Bldg Energy Epidemiol Julianalaan 134 NL-2628 BL Delft Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Inverse modelling; Heat loss coefficient; Smart meter; Air change rate;

    机译:反向建模;热损耗系数;智能仪表;空气变化率;

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