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Evaluation of weather datasets for building energy simulation

机译:评估天气数据集以进行建筑能耗模拟

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In recent years, calibrated energy modeling of residential and commercial buildings has gained importance in a retrofit-dominated market. Accurate weather data play an important role in this calibration process and projected energy savings. It would be ideal to measure weather data at the building location to capture relevant microclimate variation but this is generally considered cost-prohibitive. There are data sources publicly available with high temporal sampling rates but at relatively poor geospatial sampling locations. To overcome this limitation, there are a growing number of service providers that claim to provide real time and historical weather data necessary for building modeling at 15-40 km~2 grid across the globe; common variables such as temperature and precipitation have been constructed on ~1 km~2 grids [1 J. Unfortunately, there is limited documentation from 3rd-party sources attesting to the accuracy of this data. This paper compares provided weather characteristics with data collected from a weather station inaccessible to the service providers. Monthly average dry bulb temperature; relative humidity; direct normal, diffuse and global solar radiation; wind speed and wind direction are statistically compared. Moreover, we ascertain the relative contribution of each weather variable and its impact on building loads. Annual simulations are performed for three different building types, including a closely monitored and automated energy efficient research building. The comparison shows that the difference for an individual variable can be as high as 90%. In addition, annual building energy consumption can vary by ±7% while monthly building loads can vary by ±40% as a function of the provided location's weather data.
机译:近年来,在改造为主的市场中,住宅和商业建筑的校准能源模型变得越来越重要。准确的天气数据在此校准过程和预计的节能中起着重要作用。理想的是在建筑物位置测量天气数据以捕获相关的微气候变化,但这通常被认为是成本过高的。公开提供了具有高时间采样率但在相对较差的地理空间采样位置的数据源。为了克服这一限制,越来越多的服务提供商声称为全球15-40 km〜2网格上的建筑模型提供必要的实时和历史天气数据;诸如温度和降水之类的常见变量已构建在〜1 km〜2的网格上[1J。不幸的是,来自第三方的资料有限的文献证明了该数据的准确性。本文将提供的天气特征与从服务提供商无法访问的气象站收集的数据进行比较。每月平均干球温度;相对湿度;直接法向,漫射和全局太阳辐射;统计比较风速和风向。此外,我们确定每个天气变量的相对贡献及其对建筑负荷的影响。年度模拟针对三种不同的建筑类型进行,包括受到密切监视和自动化的节能研究建筑。比较表明,单个变量的差异可能高达90%。此外,根据所提供位置的天气数据,年度建筑能耗可变化±7%,而每月建筑负荷可变化±40%。

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