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Automated data-driven modeling of building energy systems via machine learning algorithms

机译:通过机器学习算法对建筑能源系统进行自动数据驱动的建模

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System modeling is a vital part of building energy optimization and control. Grey and white box modeling requires knowledge about the system and a lot of human assistance, which results in costs. In the common case, that information about the system is lacking, the feasibility of grey and white box models decreases further. The installation of sensors and the availability of monitoring data is growing rapidly within building energy systems. This enables the exploitation of statistical modeling, which is already well established in other sectors like computer science and finance. Thus, the present work investigates data-driven machine learning models to explore their potential for modeling building energy systems. The focus is to develop an efficient methodology for data-driven modeling. For this purpose, a comprehensive literature review for detecting optimization methods is conducted. Furthermore, the methodology is implemented in Python and an automated modeling tool is designed. It is used to model various energy systems based on monitoring data; seven use cases on three different systems reveal good results. The models can be used for forecasting, potential analysis, the implementation of various control strategies or as a replacement for missing information within the field of grey box modeling. (c) 2019 Elsevier B.V. All rights reserved.
机译:系统建模是建筑能源优化和控制的重要组成部分。灰色和白色盒子建模需要有关系统的知识和大量的人工协助,这会导致成本增加。在通常情况下,由于缺少有关系统的信息,因此灰盒和白盒模型的可行性进一步降低。在建筑能源系统中,传感器的安装和监视数据的可用性正在迅速增长。这使得能够利用统计建模,而该统计建模已在计算机科学和金融等其他行业中得到了很好的确立。因此,本工作调查了数据驱动的机器学习模型,以探索其为建筑能源系统建模的潜力。重点是为数据驱动的建模开发一种有效的方法。为此,对检测优化方法进行了全面的文献综述。此外,该方法在Python中实现,并设计了一个自动建模工具。它用于基于监视数据对各种能源系统进行建模;在三个不同系统上的七个用例显示了良好的结果。该模型可用于预测,潜力分析,各种控制策略的实施,或替代灰盒建模领域中丢失的信息。 (c)2019 Elsevier B.V.保留所有权利。

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