Synthesizing Building Operation Data with Generative Models: VAEs, GANs, or Something In Between?

Alessandro Salatiello, Ye Wang, G. Wichern, T. Koike-Akino, Yoshihiro Ohta, Yosuke Kaneko, C. Laughman, A. Chakrabarty
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Abstract

The generation of time-series profiles of building operation requires expensive and time-consuming data consolidation and modeling efforts that rely on extensive domain knowledge and need frequent revisions due to evolving energy systems, user behavior, and environmental conditions. Generative deep learning may be used to provide an automatic, scalable, data-source-agnostic, and efficient method to synthesize these artificial time-series profiles by learning the distribution of the original data. While a range of generative neural networks have been proposed, generative adversarial networks (GANs) and variational autoencoders (VAEs) are most popular models; GANs typically require considerable customization to stabilize the training procedure, while VAEs are often reported to generate lower-quality samples compared to GANs. In this paper, we propose a network architecture and training procedure that combines the strengths of VAEs and GANs by incorporating Regularized Adversarial Fine-Tuning (RAFT). We imbue the architecture with conditional inputs to reflect ambient/outdoor conditions and operating conditions, and demonstrate its effectiveness by using operational data collected over 585 days from SUSTIE: Mitsubishi Electric’s net-zero energy building. Comparing against classical GAN, VAE, Wasserstein-GAN, and VAE-GAN, our proposed conditional RAFT-VAE-GAN outperforms its competitors in terms of mean accuracy, training stability, and several metrics that ascertain how close the synthetic distribution is to the measured data distribution.
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用生成模型综合建筑运行数据:VAEs、GANs还是介于两者之间?
生成建筑操作的时间序列概要需要昂贵且耗时的数据整合和建模工作,这些工作依赖于广泛的领域知识,并且由于不断发展的能源系统、用户行为和环境条件,需要经常进行修订。生成式深度学习可以提供一种自动的、可扩展的、与数据源无关的、有效的方法,通过学习原始数据的分布来合成这些人工时间序列轮廓。虽然已经提出了一系列的生成神经网络,但生成对抗网络(gan)和变分自编码器(VAEs)是最流行的模型;GANs通常需要大量的定制来稳定训练过程,而与GANs相比,VAEs经常报告生成质量较低的样本。在本文中,我们提出了一种网络架构和训练过程,通过结合正则化对抗性微调(RAFT),结合了vae和gan的优势。我们为建筑注入了条件输入,以反映环境/室外条件和运行条件,并通过使用从三菱电机的净零能耗建筑SUSTIE收集的585天的运行数据来证明其有效性。与经典GAN、VAE、Wasserstein-GAN和vee -GAN相比,我们提出的条件raft - vee -GAN在平均准确率、训练稳定性和确定合成分布与测量数据分布的接近程度的几个指标方面优于其竞争对手。
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