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Generating future weather files under climate change scenarios to support building energy simulation - A machine learning approach

机译:在气候变化场景下生成未来的天气文件,以支持建筑能量模拟 - 机器学习方法

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General circulation models (GCM) have been used by researchers to assess the effect of climate change in different fields of study. In the case of building energy performance, GCMs can be used to evaluate future building energy performance through simulations. However, a key issue with the use of GCM data in building energy simulation is the inadequate resolution and bias of the data. Therefore, in order to use this data for simulation purposes and better predict future building performance, further processing is required. The first challenge is that the GCMs are usually biased, which means a considerable deviation can be found when the historical GCM data is compared to station observed weather data. The second challenge is that the GCM data has daily temporal resolution rather than the hourly resolution required in building energy simulation.In order to utilize GCM data to estimate future building performance through simulation, the current study suggests a workflow that can be applied to climate change data. First, a bias-correction technique, known as the quantile-quantile method, is applied to remove the bias in the data in order to adapt GCMs to a specific location. The study then uses a hybrid classification-regression model to downscale the bias corrected GCM data to generate future weather data at an hourly resolution for building energy simulation. In this case, the hybrid model is structured as a combined model, where a classification model serves as the main model together with an auxiliary regression model for cases when data is beyond the range of observed values. The proposed workflow uses observed weather data to determine similar weather patterns from historical data and use it to generate future weather data, contrary to previous studies, which use artificially generated data. However, in cases where the future GCM data showed temperatures ranging outside of the observed data, the study applied a trained regression model to generate hourly weather data.The proposed workflow enables users to generate future weather files year by year under different climate change scenarios and, consequently, extreme weather characteristics are preserved for extreme or reliability analysis and design optimization. (C) 2020 Elsevier B.V. All rights reserved.
机译:研究人员已经使用了一般循环模型(GCM)来评估气候变化在不同的研究领域的影响。在建筑能量性能的情况下,GCM可用于通过模拟评估未来的建筑能量性能。但是,在构建能量模拟中使用GCM数据的关键问题是数据的分辨率和偏差不足。因此,为了使用这种数据进行仿真目的,更好地预测未来的建筑物性能,需要进一步处理。第一挑战是GCM通常偏置,这意味着当历史GCM数据与站观察到的天气数据进行比较时,可以找到相当大的偏差。第二个挑战是,GCM数据具有日常时间分辨率,而不是在建立能量模拟中所需的每小时分辨率。为了利用GCM数据通过模拟来估计未来的建筑物性能,目前的研究表明,可以应用于气候变化的工作流程数据。首先,应用称为定量定位方法的偏置校正技术以去除数据中的偏置,以便使GCM适应特定位置。然后,该研究使用混合分类回归模型来降低偏置偏置的GCM数据,以在每小时分辨率下产生未来的天气数据,以构建能量模拟。在这种情况下,混合模型被构造为组合模型,其中分类模型作为主模型与辅助回归模型一起用于当数据超出观察值范围的情况下。所提出的工作流程使用观察到的天气数据来确定历史数据的类似天气模式,并使用它来生成未来的天气数据,与之前的研究相反,使用人工生成的数据。然而,在未来GCM数据显示温度范围内的情况下,该研究应用了训练有素的回归模型来生成每小时天气数据。建议的工作流使用户能够在不同的气候变化场景下逐年生成未来的天气文件。因此,为极端或可靠性分析和设计优化保留了极端天气特性。 (c)2020 Elsevier B.v.保留所有权利。

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