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Generation of whole building renovation scenarios using variational autoencoders

机译:使用变形式自动化器生成整个建筑物改造方案

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Buildings consume a huge amount of energy, resulting in a considerable impact on the environment. In Canada, almost 70% of the total energy used by the commercial and institutional sectors was consumed by Heating, Ventilation and Air-Conditioning (HVAC) and lighting systems, which makes them the main targets of energy performance optimization methods. Furthermore, based on a governmental report, 40% of Quebec university buildings are in poor or very poor shape regarding structure and materials, and require immediate renovation. Therefore, it is of utmost importance to reduce energy consumption, and this can be accomplished by improving the design of new buildings or by renovating existing ones. Moreover, Simulation-Based Multi-Objective Optimization (SBMO) models can be used for optimizing and assessing different renovation scenarios considering Total Energy Consumption (TEC) and Life Cycle Cost (LCC). The time-consuming nature of SBMO has triggered the development of simplified and surrogate models within the design process. This study proposes a generative deep learning building energy model using Variational Autoencoders (VAEs), which could potentially overcome the current limitations. The proposed VAEs extract deep features from a whole building renovation dataset and generate renovation scenarios considering TEC and LCC of the existing institutional buildings. The proposed model also has the generalization ability due to its potential to reuse the dataset from a specific case in similar situations. The performance of the developed model has been demonstrated using a simulated renovation dataset to prove its potential. The results show that using generative VAEs is acceptable considering computational time and accuracy. (C) 2020 Elsevier B.V. All rights reserved.
机译:建筑消耗大量的能量,导致对环境产生相当大的影响。在加拿大,通过加热,通风和空调(HVAC)和照明系统消耗了商业和机构部门所使用的近70%的能源,这使得它们成为能源优化方法的主要目标。此外,根据政府报告,40%的魁北克大学建​​筑有关结构和材料的形状差或非常差,需要立即改造。因此,降低能耗至关重要,这可以通过改善新建筑物的设计或通过改造现有建筑物的设计来实现。此外,基于仿真的多目标优化(SBMO)模型可用于优化和评估考虑总能耗(TEC)和生命周期成本(LCC)的不同改造情景。 SBMO的耗时性质引发了设计过程中简化和代理模型的开发。本研究提出了一种使用变形自动化器(VAES)的生成深度学习建筑能量模型,这可能会克服当前限制。拟议的VAES从整个建筑改造数据集中提取深度特征,并在考虑现有机构建筑物的TEC和LCC考虑TEC和LCC的改造情景。所提出的模型也具有泛化能力,因为它可能从类似情况下从特定情况重复使用数据集。已经使用模拟的翻新数据集来证明开发模型的性能以证明其潜力。结果表明,考虑到计算时间和准确性,使用生成VAE是可以接受的。 (c)2020 Elsevier B.v.保留所有权利。

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