Lucas Segarra Eva, Ramos Ruiz Germán, Fernández Bandera Carlos
School of Architecture, University of Navarra, 31009 Pamplona, Spain.
Sensors (Basel). 2020 Nov 15;20(22):6525. doi: 10.3390/s20226525.
In the current energy context of intelligent buildings and smart grids, the use of load forecasting to predict future building energy performance is becoming increasingly relevant. The prediction accuracy is directly influenced by input uncertainties such as the weather forecast, and its impact must be considered. Traditional load forecasting provides a single expected value for the predicted load and cannot properly incorporate the effect of these uncertainties. This research presents a methodology that calculates the probabilistic load forecast while accounting for the inherent uncertainty in forecast weather data. In the recent years, the probabilistic load forecasting approach has increased in importance in the literature but it is mostly focused on black-box models which do not allow performance evaluation of specific components of envelope, HVAC systems, etc. This research fills this gap using a white-box model, a building energy model (BEM) developed in EnergyPlus, to provide the probabilistic load forecast. Through a Gaussian kernel density estimation (KDE), the procedure converts the point load forecast provided by the BEM into a probabilistic load forecast based on historical data, which is provided by the building's indoor and outdoor monitoring system. An hourly map of the uncertainty of the load forecast due to the weather forecast is generated with different prediction intervals. The map provides an overview of different prediction intervals for each hour, along with the probability that the load forecast error is less than a certain value. This map can then be applied to the forecast load that is provided by the BEM by applying the prediction intervals with their associated probabilities to its outputs. The methodology was implemented and evaluated in a real school building in Denmark. The results show that the percentage of the real values that are covered by the prediction intervals for the testing month is greater than the confidence level (80%), even when a small amount of data are used for the creation of the uncertainty map; therefore, the proposed method is appropriate for predicting the probabilistic expected error in load forecasting due to the use of weather forecast data.
在当前智能建筑和智能电网的能源背景下,利用负荷预测来预测未来建筑能源性能变得越来越重要。预测精度直接受到天气预报等输入不确定性因素的影响,必须考虑其影响。传统的负荷预测为预测负荷提供单个期望值,无法恰当地纳入这些不确定性的影响。本研究提出了一种方法,在考虑预测天气数据固有不确定性的同时计算概率负荷预测。近年来,概率负荷预测方法在文献中的重要性日益增加,但大多集中在黑箱模型上,这些模型无法对围护结构、暖通空调系统等特定组件进行性能评估。本研究使用白箱模型(即EnergyPlus中开发的建筑能源模型(BEM))来填补这一空白,以提供概率负荷预测。通过高斯核密度估计(KDE),该程序基于建筑物室内外监测系统提供的历史数据,将BEM提供的点负荷预测转换为概率负荷预测。利用不同的预测区间生成由于天气预报导致的负荷预测不确定性的每小时分布图。该图提供了每小时不同预测区间的概述,以及负荷预测误差小于特定值的概率。然后,通过将预测区间及其相关概率应用于BEM的输出,可以将该图应用于BEM提供的预测负荷。该方法在丹麦的一所真实学校建筑中得到实施和评估。结果表明,即使在用于创建不确定性图的数据量较少的情况下,测试月份预测区间覆盖的实际值百分比也大于置信水平(80%);因此,所提出的方法适用于预测由于使用天气预报数据而导致的负荷预测中的概率预期误差。