Supercomputer assisted generation of machine learning agents for the calibration of building energy models

J. Sanyal, J. New, Richard E. Edwards
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引用次数: 15

Abstract

Building Energy Modeling (BEM) is an approach to model the energy usage in buildings for design and retrofit purposes. EnergyPlus is the flagship Department of Energy software that performs BEM for different types of buildings. The input to EnergyPlus can often extend in the order of a few thousand parameters which have to be calibrated manually by an expert for realistic energy modeling. This makes it challenging and expensive thereby making building energy modeling unfeasible for smaller projects. In this paper, we describe the "Autotune" research which employs machine learning algorithms to generate agents for the different kinds of standard reference buildings in the U.S. building stock. The parametric space and the variety of building locations and types make this a challenging computational problem necessitating the use of supercomputers. Millions of EnergyPlus simulations are run on supercomputers which are subsequently used to train machine learning algorithms to generate agents. These agents, once created, can then run in a fraction of the time thereby allowing cost-effective calibration of building models.
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超级计算机辅助生成机器学习代理,用于校准建筑能源模型
建筑能源建模(BEM)是一种为设计和改造目的对建筑物的能源使用进行建模的方法。EnergyPlus是能源部的旗舰软件,可以为不同类型的建筑执行BEM。EnergyPlus的输入通常可以扩展到几千个参数,这些参数必须由专家手动校准才能实现真实的能量建模。这使得它具有挑战性和昂贵,从而使建筑能源建模在较小的项目中不可行。在本文中,我们描述了“Autotune”研究,该研究采用机器学习算法为美国建筑库存中的不同类型的标准参考建筑生成代理。参数化空间和各种建筑位置和类型使这成为一个具有挑战性的计算问题,需要使用超级计算机。数百万EnergyPlus模拟在超级计算机上运行,这些模拟随后被用于训练机器学习算法以生成代理。这些代理一旦创建,就可以在很短的时间内运行,从而允许经济有效地校准建筑模型。
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